This is the accessible text file for GAO report number GAO-07-466 
entitled 'Medicare: Geographic Areas Used to Adjust Physician Payments 
for Variation in Practice Costs Should Be Revised' which was released 
on July 30, 2007. 

This text file was formatted by the U.S. Government Accountability 
Office (GAO) to be accessible to users with visual impairments, as part 
of a longer term project to improve GAO products' accessibility. Every 
attempt has been made to maintain the structural and data integrity of 
the original printed product. Accessibility features, such as text 
descriptions of tables, consecutively numbered footnotes placed at the 
end of the file, and the text of agency comment letters, are provided 
but may not exactly duplicate the presentation or format of the printed 
version. The portable document format (PDF) file is an exact electronic 
replica of the printed version. We welcome your feedback. Please E-mail 
your comments regarding the contents or accessibility features of this 
document to Webmaster@gao.gov. 

This is a work of the U.S. government and is not subject to copyright 
protection in the United States. It may be reproduced and distributed 
in its entirety without further permission from GAO. Because this work 
may contain copyrighted images or other material, permission from the 
copyright holder may be necessary if you wish to reproduce this 
material separately. 

Report to the Chairman, Subcommittee on Health, Committee on Ways and 
Means, House of Representatives: 

United States Government Accountability Office: 

GAO: 

June 2007: 

Medicare: 

Geographic Areas Used to Adjust Physician Payments for Variation in 
Practice Costs Should Be Revised: 

GAO-07-466: 

GAO Highlights: 

Highlights of GAO-07-466, a report to the Chairman, Subcommittee on 
Health, Committee on Ways and Means, House of Representatives 

Why GAO Did This Study: 

The Centers for Medicare & Medicaid Services (CMS) adjusts Medicare 
physician fees for geographic differences in the costs of operating a 
medical practice. CMS uses 89 physician payment localities among which 
fees are adjusted. Concerns have been raised that the boundaries of 
some payment localities do not accurately address variations in 
physicians’ costs. GAO was asked to examine how CMS has revised the 
localities; the extent to which they accurately reflect variations in 
physicians’ costs; and alternative approaches to constructing the 
localities. To do so, GAO reviewed selected Federal Register documents; 
compared data on the costs physicians incur in different areas with the 
Medicare geographic adjustment; and used the physician cost data to 
construct and evaluate alternative approaches. 

What GAO Found: 

The current 89 physician payment localities are primarily 
consolidations of the 240 localities that Medicare carriers—CMS 
contractors responsible for processing physician claims—established in 
1966. Since then, CMS has revised the payment localities using three 
different approaches that were not uniformly applied. From 1992 through 
1995, CMS permitted state medical associations to petition to 
consolidate into a statewide locality if the state’s physicians 
demonstrated “overwhelming support” for the change. In 1997, CMS 
revised the 28 states with multiple payment localities using two 
approaches: CMS consolidated carrier-defined localities in 25 states 
and created entirely new localities in 3 states. 

More than half of the current physician payment localities had counties 
within them with a large payment difference—that is, a payment 
difference of 5 percent or more between GAO’s measure of physicians’ 
costs and Medicare’s geographic adjustment for an area. These 447 
counties—representing 14 percent of all counties—were located across 
the United States, but a disproportionate number were located in 
California, Georgia, Minnesota, Ohio, and Virginia. Large payment 
differences occur because certain localities combine counties with 
different costs, which may be due to several factors. For example, 
although substantial population growth has occurred in certain areas, 
potentially leading to increased costs, CMS has not revised the payment 
localities in accordance with these changes. 

Figure: Counties in Which Physicians Had a Payment Difference of Less 
Than 5 Percent, or 5 Percent or More, between Their Costs and 
Medicare's Geographic Adjustment: 

[See PDF for Image] 

Source: GAO analysis of 2005 CMS, 2000 Census Bureau, and fiscal year 
2006 Department of Housing and Urban Development data. 

[End of figure] 

Many alternative approaches could be used to revise the geographic 
boundaries of the current payment localities. GAO identified three 
possible approaches that would improve payment accuracy while generally 
imposing a minimal amount of additional administrative burden on CMS, 
Medicare carriers, and physicians. One approach, for example, would 
improve payment accuracy, the extent to which each approach accurately 
measures variations in physicians’ costs, by 52 percent over the 
current localities. 

What GAO Recommends: 

GAO recommends that CMS (1) examine and revise the payment localities 
using an approach that is uniformly applied to all states and based on 
the most current data and (2) update the payment localities on a 
periodic basis. CMS stated it will consider GAO’s first recommendation, 
but continue its approach of updating the localities when interested 
parties raise concerns and on its own initiative. GAO notes that 
updating the localities in this manner may result in updating only 
select localities, rather than all localities using a uniform approach. 

[Hyperlink, http://www.gao.gov/cgi-bin/getrpt?GAO-07-466]. 

To view the full product, including the scope and methodology, click on 
the link above. For more information, contact A. Bruce Steinwald at 
(202) 512-7114 or steinwalda@gao.gov. 

[End of section] 

Contents: 

Letter: 

Results in Brief: 

Background: 

Physician Payment Localities Are Primarily Consolidations of the 
Carrier-Defined Localities That Were Established in 1966, Which CMS Has 
Since Revised Using Three Approaches That Were Not Uniformly Applied: 

More Than Half of the Physician Payment Localities Had Counties within 
Them with Large Payment Differences: 

Several Alternative Approaches to the Physician Payment Localities 
Could Improve Payment Accuracy While Generally Imposing Minimal 
Additional Administrative Burden: 

Conclusions: 

Recommendations for Executive Action: 

Agency Comments and Our Evaluation: 

Appendix I: Scope and Methodology: 

Appendix II: Information on Configuration of the Current Medicare 
Physician Payment Localities and the Alternative Approaches: 

Appendix III: Comments from the Centers for Medicare & Medicaid 
Services: 

Appendix IV: GAO Contact and Staff Acknowledgments: 

Tables: 

Table 1: Selected Alternative Approaches to Current Medicare Physician 
Payment Localities: 

Table 2: Medicare Physician Payment Localities, by State: 

Table 3: Physician Payment Localities Created Using the County-Based 
Iterative Alternative Approach, by State: 

Table 4: Physician Payment Localities Created Using the County-Based 
GAF Ranges Alternative Approach, by State: 

Table 5: Physician Payment Localities Created Using the Metropolitan 
Statistical Area (MSA)-Based Iterative Alternative Approach, by State: 

Figures: 

Figure 1: Calculation of the Medicare Payment for a Mid-level Office 
Visit in the South Carolina and District of Columbia Medicare Physician 
Payment Localities, 2007: 

Figure 2: Calculation of the GAF for the South Carolina and District of 
Columbia Medicare Physician Payment Localities, 2007: 

Figure 3: Approaches Used to Establish and Revise Geographic Boundaries 
of Medicare Physician Payment Localities as of May 2007: 

Figure 4: Counties in Which Physicians Had a Payment Difference of Less 
Than 5 Percent, or 5 Percent or More, between Medicare's Locality GAF 
and Their County-Specific GAF: 

Figure 5: Percentage of Counties in Which Physicians Were Overpaid or 
Underpaid by 5 Percent or More, Relative to Their County-Specific GAF, 
by Urban and Rural: 

Figure 6: Average Payment Difference for the Current Medicare Physician 
Payment Localities and Selected Alternative Approaches: 

Figure 7: Percentage of Medicare Payments to Physicians Who Were 
Overpaid or Underpaid by 5 Percent or More Relative to Their County- 
Specific GAF, for the Current Medicare Physician Payment Localities and 
Selected Alternative Approaches: 

Figure 8: Average Adjacent-Locality GAF Difference, for the Current 
Medicare Physician Payment Localities and Selected Alternative 
Approaches: 

Figure 9: Number of Statewide Physician Payment Localities for the 
Current Medicare Physician Payment Localities and Selected Alternative 
Approaches: 

Figure 10: Configuration of Minnesota's Physician Payment Localities 
under the Current Medicare Physician Payment Localities and Selected 
Alternative Approaches: 

Figure 11: Configuration of Ohio's Physician Payment Localities under 
the Current Medicare Physician Payment Localities and Selected 
Alternative Approaches: 

Figure 12: Configuration of Florida's Physician Payment Localities 
under the Current Medicare Physician Payment Localities and Selected 
Alternative Approaches: 

Figure 13: Number of Physician Payment Localities for the Current 
Medicare Physician Payment Localities and Selected Alternative 
Approaches: 

Figure 14: Percentage of Medicare Physician Payments for Which the 
Locality GAF Would Change by 5 Percent or More, Relative to the Current 
Locality GAF, under the Selected Alternative Approaches: 

Abbreviations: 

CMS: Centers for Medicare & Medicaid Services: 
CPT: current procedural terminology: 
GAF: geographic adjustment factor: 
GPCI: geographic practice cost index: 
HUD: Department of Housing and Urban Development: 
MMA: Medicare Prescription Drug, Improvement, and Modernization Act of 
2003: 
MSA: metropolitan statistical area: 
OBRA: Omnibus Budget Reconciliation Act of 1989: 
RVU: relative value unit: 

United States Government Accountability Office: 
Washington, DC 20548: 

June 29, 2007: 

The Honorable Pete Stark: 
Chairman: 
Subcommittee on Health: 
Committee on Ways and Means: 
House of Representatives: 

Dear Mr. Chairman: 

In 2005, Medicare spending for physician services totaled about $59 
billion and in April 2005, just over 467,000 physicians billed Medicare 
for services provided to Medicare beneficiaries. Since 1966, Medicare 
has adjusted physicians' fees for the costs of operating a private 
medical practice in different geographic areas. The purpose of this 
adjustment is to help ensure that Medicare's payment is appropriate and 
adequate in all areas. Medicare has set 89 distinct geographic areas, 
referred to as physician payment localities, among which payments are 
adjusted. Thirty-four of these payment localities are statewide, 
meaning that all physician fees in the state are adjusted by a uniform 
amount. The remaining payment localities are composed of one or more 
counties within a state and differ in size, population density, and the 
extent to which they are urban or rural. For example, large 
metropolitan areas such as Manhattan, New York; smaller metropolitan 
areas such as Galveston, Texas; and less populated areas such as rural 
Missouri, are each considered payment localities. As part of its 
responsibility to set and adjust Medicare payments, the Centers for 
Medicare & Medicaid Services (CMS) sets the boundaries of the payment 
localities and has expressed a goal of balancing the extent to which 
the localities accurately address variations in physicians' costs with 
the administrative burden associated with making geographic adjustments 
to physician payments in a large number of localities.[Footnote 1] The 
agency has stated that it generally prefers statewide payment 
localities to states with multiple localities because they simplify 
program administration by reducing the number of payment localities and 
encourage physicians to practice in rural areas by reducing payment 
differences between urban and rural areas.[Footnote 2] 

Medicare's geographic adjustment for a particular physician payment 
locality is determined using three geographic practice cost indices 
(GPCI) that correspond to the three components of a Medicare fee-- 
physician work, practice expense, and malpractice expense. These GPCIs 
adjust physician fees for variations in physicians' costs of providing 
care in different payment localities. Specifically, they raise or lower 
Medicare fees depending on whether a payment locality's average cost of 
operating a physician practice is above or below the national average. 
CMS is required to review the GPCIs at least every 3 years and, at that 
time, may update them using more recent data. The major data source 
used in calculating the GPCIs, the decennial census, provides new data 
once every 10 years. The GPCIs were last updated in 2005 and CMS is 
scheduled to review and, if necessary, update them again in 2008. 

Concerns have been raised in Congress and among stakeholders, including 
state medical associations, that the geographic boundaries of some 
payment localities do not accurately address variations in the costs of 
operating a private medical practice. If they do not, beneficiaries 
could potentially experience problems accessing physician services. You 
asked us to evaluate the Medicare physician payment localities. In this 
report, we (1) determine how CMS has revised the physician payment 
localities since they were established in 1966 and the approaches the 
agency used, (2) determine the extent to which the current payment 
localities accurately reflect variations in physicians' costs of 
providing care in different geographic areas, and (3) evaluate whether 
alternative approaches to the physician payment localities could 
improve payment accuracy without imposing a substantial amount of 
additional administrative burden. 

To determine how CMS has revised the physician payment localities since 
they were established and the approaches the agency used, we reviewed 
selected documents published in the Federal Register to examine when 
and how the boundaries of the payment localities have changed and a CMS-
contracted report on the payment localities that was used as the basis 
for the agency's 1997 modifications.[Footnote 3] We also interviewed 
officials at CMS; five Medicare Part B[Footnote 4] carriers, the CMS 
contractors responsible for processing physician claims; four county 
medical associations; 11 state medical associations; and one national 
medical association. In addition, we interviewed physicians referred to 
us by the state medical associations. 

To determine the extent to which the current physician payment 
localities accurately reflect variations in physicians' costs of 
providing care, we compared data on the costs physicians incur for 
providing services in different areas with the geographic adjustment 
that Medicare applies to those areas. We calculated a proxy measure of 
physicians' costs of operating a practice in a particular geographic 
area using a summary measure of the three GPCIs--physician work, 
practice expense, and malpractice expense. This geographic adjustment 
factor (GAF) broadly measures differences in costs across geographic 
areas. To the extent that county-specific data were available, we 
calculated a "county-specific GAF" as a proxy for physicians' costs in 
a county. We compared this measure to a "locality GAF," which 
represents Medicare's 2005 geographic adjustment to the payment 
locality to which that county is assigned and is a proxy for 
physicians' costs in a locality. To compare the two measures, we 
calculated the difference between them, which we refer to as the 
"payment difference."[Footnote 5] For purposes of this report, we 
defined counties with a payment difference of 5 percent or more as 
having a large payment difference. These large payment differences 
consisted of both underpayments (the locality GAF was lower than the 
county-specific GAF) and overpayments (the locality GAF was higher than 
the county-specific GAF). 

We used 2000 Census Bureau data, fiscal year 2006 Department of Housing 
and Urban Development (HUD) data, and 2005 CMS data to calculate county-
specific GAFs using the same methodology CMS used for its most recent 
update to the GPCIs, in 2005. These data were the most recent available 
at the time of our analysis. Although we refer to these GAFs as "county-
specific," we were not able to compute unique county GAFs for each 
county in the United States because Census Bureau data are not 
available at that level. Instead, we obtained data that allowed us to 
calculate unique county GAFs for those counties that belong to a 
metropolitan statistical area (MSA) and one composite GAF for each non- 
MSA area per state. We assessed the reliability of these data and found 
them suitable for our purposes. In addition, we limited our analysis to 
the 87 payment localities within the 50 states and the District of 
Columbia.[Footnote 6] 

To evaluate whether alternative approaches to the Medicare physician 
payment localities could improve payment accuracy without imposing a 
substantial amount of additional administrative burden, we used the 
county-specific GAFs to illustrate five possible alternative approaches 
to constructing payment localities. We evaluated the payment accuracy 
of each approach, the extent to which each approach accurately measures 
variations in physicians' costs of providing care, based on its payment 
difference; we evaluated the administrative burden of each approach 
based on the number of payment localities that it would generate, as 
well as interviews with CMS officials, Medicare carrier 
representatives, and physicians. Three of our approaches are designed 
to balance payment accuracy with administrative burden. The two 
additional approaches are useful for comparison purposes because they 
illustrate the tradeoffs between payment accuracy and administrative 
burden. Appendix I contains a more complete description of our 
methodology. We conducted our work from June 2006 through May 2007 in 
accordance with generally accepted government auditing standards. 

Results in Brief: 

The current 89 physician payment localities are primarily 
consolidations of the localities that Medicare carriers established in 
1966. CMS has since revised them using three different approaches that 
were not uniformly applied. Specifically, in 1966, Medicare carriers 
set 240 payment localities, 16 of which were statewide, using their 
knowledge of local medical practice and economic patterns at the time. 
According to CMS, their boundaries remained relatively stable for the 
next 26 years. From 1992 through 1995, CMS continued to use the 240 
carrier-defined payment localities, but permitted state medical 
associations in multiple-locality states to petition to consolidate 
into a statewide payment locality by demonstrating that the change had 
the "overwhelming support" of the state's physicians. Six states 
successfully demonstrated overwhelming support for a statewide payment 
locality; their consolidation reduced the number of localities to 210, 
including 22 statewide localities and 28 multiple-locality states. In 
1997, CMS revised the 28 multiple-locality states using two different 
approaches. In 25 of these states, CMS used a methodology designed to 
consolidate the carrier-defined payment localities. In the remaining 3 
multiple-locality states, CMS stated that this consolidation 
methodology would have yielded inaccurate payment localities and 
therefore created entirely new payment localities. These revisions 
yielded the current 89 payment localities, including 34 statewide 
payment localities. 

More than half of the current physician payment localities had at least 
one county within them with a large payment difference--that is, there 
was a payment difference of 5 percent or more between physicians' costs 
and Medicare's geographic adjustment for an area. Overall, there were 
447 counties with large payment differences--representing 14 percent of 
all counties. These counties were located across the United States, but 
a disproportionate number were located in five states. Specifically, 60 
percent of counties with large payment differences were located in 
California, Georgia, Minnesota, Ohio, and Virginia. Large payment 
differences occur because many payment localities combine counties with 
very different costs, which may be attributed to several factors. For 
example, although substantial population growth has occurred in certain 
geographic areas, potentially leading to increased costs, CMS has not 
revised the payment localities to reflect these changes. 

Many alternative approaches could be used to revise the geographic 
boundaries of the current payment localities. We examined five possible 
approaches and found that three would improve payment accuracy while 
generally imposing a minimal amount of additional administrative burden 
on CMS, Medicare carriers, and physicians. Compared to the current 
payment localities, four of the five approaches we examined would 
improve payment accuracy, the extent to which each approach accurately 
measures variations in physicians' costs of providing care. For 
example, one approach improved payment accuracy by 52 percent. In 
addition, while all approaches would impose upfront administrative 
costs on CMS and Medicare carriers regardless of the number of payment 
localities generated, four of the approaches we examined would impose a 
minimal amount of additional ongoing administrative burden on CMS, 
Medicare carriers, and physicians. The ongoing costs would be minimal 
largely because these four approaches would generally create three or 
fewer additional payment localities in each state. One approach, 
however, would create a substantial number of additional payment 
localities--1,054 more than currently exist. 

To help ensure that Medicare's payments to physicians more accurately 
represent geographic differences in physicians' costs of operating a 
private medical practice, we recommend that the Administrator of CMS 
examine and revise the physician payment localities using an approach 
that is uniformly applied to all states and based on the most current 
data. We also recommend that the Administrator examine and, if 
necessary, update the physician payment localities on a periodic basis, 
with no more than 10 years between updates. 

In comments on a draft of this report, CMS stated that it would 
consider our first recommendation--to examine and revise the physician 
payment localities using an approach that is uniformly applied to all 
states and based on the most current data. The agency also stated that, 
in doing so, it would give full consideration to the redistributive 
effects and administrative burdens of any change to the payment 
locality structure. We agree that redistributive effects and 
administrative burden should be considered when making the necessary 
changes to the physician payment localities. Regarding our second 
recommendation--that CMS examine and, if necessary, update the payment 
localities on a periodic basis--the agency stated that it considers 
payment locality issues when concerns are raised by interested parties 
and based on its own initiative, an approach that it believes is more 
flexible and efficient than examining the payment localities every 10 
years. Reviewing payment localities in response to concerns raised by 
interested parties, however, could result in CMS examining only 
selected physician payment localities, rather than examining all 
payment localities using a uniform approach. Updating the payment 
localities at least every 10 years when new decennial census data 
become available would ensure that Medicare appropriately accounts for 
changes in the geographic distribution of physicians' costs of 
operating a private medical practice. In addition, CMS raised concerns 
about our use of the word "inaccurate" in the draft report to describe 
counties with a payment difference of 5 percent or more between 
physicians' costs and Medicare's geographic adjustment. The agency 
stated that our characterization of payments as inaccurate could be 
construed to mean that there has been an overpayment for which 
recoupment of the overpayment, as well as other actions, should be 
pursued. As a result, we have deleted the term and instead define 
counties with a payment difference of 5 percent or more as having a 
"large payment difference." As we did in the draft report, however, we 
use the term "payment accuracy" to refer to the extent to which the 
payment localities reflect variations in physicians' costs of providing 
care in different geographic areas. 

Background: 

From 1966 through 1991, Medicare paid physicians based on what they 
charged for services. The Omnibus Budget Reconciliation Act of 1989 
(OBRA) required the establishment of a national Medicare physician fee 
schedule,[Footnote 7] which was implemented in 1992, replacing the 
charge-based system. Currently, the Medicare physician fee schedule 
includes more than 7,000 services together with their corresponding 
payment rates.[Footnote 8] In addition, each service on the fee 
schedule has three relative value units (RVU) that correspond to the 
three components of physician payment: 

* Physician work--the financial value of physicians' time, skill, and 
effort that are associated with providing the service. 

* Practice expense--the costs incurred by physicians in employing 
office staff, renting office space, and buying supplies and equipment. 

* Malpractice expense--the premiums paid by physicians for professional 
liability insurance. 

Each RVU measures the relative costliness of providing a particular 
service. For example, in 2007, for a mid-level office visit for an 
established patient, the three RVUs sum to 1.66.[Footnote 9] In 
contrast, total RVUs for a chemotherapy infusion procedure are 4.73, 
indicating that this procedure is almost three times as costly as a mid-
level office visit.[Footnote 10] 

Medicare's geographic adjustment for a particular physician payment 
locality is determined using three GPCIs that also correspond to the 
three components of a Medicare payment--physician work, practice 
expense, and malpractice expense. These GPCIs adjust physician fees for 
variations in physicians' costs of providing care in different 
geographic areas.[Footnote 11] Other Medicare adjustments to physician 
fees address issues other than geographic variation in costs. For 
example, physicians practicing in designated health professional 
shortage areas receive a 10 percent bonus payment for Medicare services 
they provide, and physicians practicing in designated physician 
scarcity areas receive a 5 percent bonus payment for Medicare services 
they provide. 

The GPCIs are numerical factors expressed as the ratio of an area's 
cost to the national average cost. For example, in 2007, the practice 
expense GPCI for Orlando, Florida, is 0.936, which means that the 
practice expense component of the fee for a service is 6.4 percent 
below the national average. Because the GPCIs measure physician costs 
relative to the national average costs, an increase in the GPCIs of one 
area will result in a decrease in the GPCIs of other areas. In general, 
GPCIs are higher in urban areas than in rural areas. 

To calculate the Medicare payment amount for a service in a particular 
payment locality, each of the three RVUs for a service is adjusted for 
geographic differences in resource costs and converted into dollars. 
This process has several steps. First, to adjust for differences in 
costs, each of the three RVUs is multiplied by the appropriate GPCI. 
Second, these adjusted RVUs are added together. Third, that sum is 
converted into dollars using a conversion factor--a dollar amount CMS 
calculates that translates each service's RVUs into a payment amount. 
The result equals the Medicare payment for that service in that payment 
locality. For example, to determine the Medicare payment for a mid- 
level office visit in South Carolina in 2007, first, the three RVUs-- 
work, practice expense, and malpractice expense--are multiplied by the 
appropriate GPCI (see fig. 1). Second, these adjusted RVUs are summed 
together to total 1.57. Third, this sum is multiplied by the conversion 
factor ($37.8975), resulting in a Medicare payment of $59.50 for this 
service. In the District of Columbia, total adjusted RVUs for a mid- 
level office visit sum to 1.88, which the conversion factor translates 
into a payment of $71.25. Physicians practicing in the District of 
Columbia payment locality receive a higher overall payment for the same 
service because of the higher costs of operating a private medical 
practice compared with physicians practicing in the South Carolina 
payment locality. Since the work, practice expense, and malpractice 
expense RVUs for a single service are the same in every payment 
locality, the geographic variation in the Medicare payment for a 
service mirrors the variation in the GPCIs across payment localities. 

Figure 1: Calculation of the Medicare Payment for a Mid-level Office 
Visit in the South Carolina and District of Columbia Medicare Physician 
Payment Localities, 2007: 

[See PDF for image] 

Source: GAO analysis of CMS data. 

Note: The South Carolina payment locality is statewide. The District of 
Columbia payment locality consists of the District, five Virginia 
counties, and two Maryland counties. These Virginia and Maryland 
counties are excluded from the Virginia and Rest-of-Maryland payment 
localities. 

[End of figure] 

CMS is required to review the GPCIs at least every 3 years and, based 
on that review, may revise them using the most recent data 
available.[Footnote 12] The agency last updated the GPCIs in 2005 and 
is scheduled to review and, if necessary, update them again in 2008. 
The data used for the different GPCIs are updated on different 
intervals. Specifically, the decennial census, which is the major data 
source used in calculating the GPCIs, provides new data once every 10 
years. These data are used in calculating the work[Footnote 13] and 
practice expense GPCI. HUD data, which are also used in calculating the 
practice expense GPCI, are updated annually. CMS collects state 
insurance department and private insurer data, which are used in 
calculating the malpractice expense GPCI, when the GPCIs are reviewed 
every 3 years.[Footnote 14] In addition, CMS is required to review the 
RVUs at least every 5 years and last updated them in 2007. 

GPCIs can be summarized by the GAF, which broadly illustrates 
differences in costs across physician payment localities.[Footnote 15] 
The GAF is an average of the GPCIs, with each of the three GPCIs 
weighted by the percentage of costs accounted for by its corresponding 
RVU. Specifically, on average, across all services, work represents 
52.5 percent of costs, practice expense represents 43.7 percent, and 
malpractice expense represents 3.9 percent.[Footnote 16] For example, 
to calculate the GAF for the statewide South Carolina payment locality 
in 2007, the work, practice expense, and malpractice expense GPCIs for 
South Carolina are weighted and then summed to equal a GAF of 0.931 
(see fig. 2). For the District of Columbia payment locality in 2007, 
the GPCIs are weighted and summed to equal a GAF of 1.133. 

Figure 2: Calculation of the GAF for the South Carolina and District of 
Columbia Medicare Physician Payment Localities, 2007: 

[See PDF for image] 

Source: GAO analysis of CMS data. 

Note: The South Carolina payment locality is statewide. The District of 
Columbia payment locality consists of the District, five Virginia 
counties, and two Maryland counties. These Virginia and Maryland 
counties are excluded from the Virginia and Rest-of-Maryland payment 
localities. 

[End of figure] 

Physician Payment Localities Are Primarily Consolidations of the 
Carrier-Defined Localities That Were Established in 1966, Which CMS Has 
Since Revised Using Three Approaches That Were Not Uniformly Applied: 

The current 89 physician payment localities are primarily 
consolidations of the payment localities that Medicare carriers first 
defined in 1966. CMS has since revised them over two different time 
periods using three approaches that were not uniformly applied (see 
fig. 3). In 1966, Medicare carriers established 240 payment localities, 
including 16 statewide localities, using their knowledge of local 
medical practice and economic patterns at the time. These payment 
localities varied in size, ranging from a single zip code to statewide. 
For example, California had 28 payment localities, including 8 zip- 
code-based localities within the county of Los Angeles, whereas New 
Mexico was a statewide payment locality. According to CMS, the payment 
locality boundaries were relatively stable for the next 26 years. 

Figure 3: Approaches Used to Establish and Revise Geographic Boundaries 
of Medicare Physician Payment Localities as of May 2007: 

[See PDF for image] 

Source: GAO analysis of Federal Register notices. 

Note: Includes the 87 payment localities within the 50 states and 
District of Columbia. Where no other payment localities are present 
within a state, the state is a statewide locality. 

[End of figure] 

In 1989, OBRA required the establishment of a national Medicare 
physician fee schedule, replacing the charge-based payment 
system.[Footnote 17] Under the law, the new fee schedule was phased in 
over a 4-year period, from 1992 through 1995. To facilitate this 
transition, CMS continued to use the 240 carrier-defined payment 
localities, but permitted state medical associations to petition to 
consolidate their state into one statewide payment locality. Under this 
approach, from 1992 through 1995, CMS consolidated six states into 
statewide localities,[Footnote 18] reducing the number of payment 
localities to 210, including 22 statewide localities and 28 multiple- 
locality states. 

Consolidation into a statewide payment locality would have generally 
resulted in urban physicians experiencing a decrease in payment and 
rural physicians experiencing an increase in payment. Citing this fact, 
CMS stated it would consider a petition for consolidation from a state 
medical association that could demonstrate that it had the 
"overwhelming support" of both groups of physicians. The agency 
declined to set a numerical level of support that it would consider 
"overwhelming," but did enumerate several elements it would require, at 
a minimum, for state medical associations to demonstrate overwhelming 
support.[Footnote 19] CMS assessed the level of physician support by 
reviewing both the petition from the state medical association and the 
comments regarding the change that the agency received directly from 
physicians. For example, in 1995, CMS consolidated Iowa to a statewide 
payment locality when the state medical association, which represented 
75 percent of Iowa physicians, submitted a resolution in favor of 
consolidation, and 98 percent of the comments CMS received, including 
94 percent of comments from physicians who would experience a payment 
decrease, also supported the transition. CMS has not required medical 
associations in the states that it consolidated to continue to 
demonstrate that there is overwhelming support from the physician 
community for a statewide payment locality. 

In 1996, CMS cited a lack of consistency among the carrier-defined 
payment localities[Footnote 20] and, in 1997, revised the 28 multiple- 
locality states. As a result of these revisions, the total number of 
payment localities was reduced from 210 to the current total of 89. 
Thirty-four states have statewide payment localities and 16 states have 
multiple payment localities.[Footnote 21] 

In revising the payment localities in 1997, CMS used two different 
approaches. Specifically, in 25 of the multiple-locality states, CMS 
revised the carrier-defined payment localities using a methodology 
designed to consolidate them. As a result, the agency converted 12 
states to statewide payment localities, while it retained multiple 
payment localities in 13 states. In the remaining 3 multiple-locality 
states, CMS concluded that its consolidation methodology would have 
yielded inaccurate localities and therefore created entirely new 
payment localities. When making these revisions, the agency did not 
examine any of the 22 then-existing statewide payment localities that 
had been set using carrier definitions and the overwhelming support 
policy; therefore, these payment localities have not been examined 
since they were created, which in most cases was over 40 years ago. 

In 25 of the 28 multiple-locality states, CMS applied a methodology 
that was designed to consolidate the carrier-defined payment 
localities: new localities could not be created. The agency did not 
examine the geographic boundaries of the carrier-defined payment 
localities before consolidating them, even though in 1993, it had 
stated that the existing payment localities had not been established on 
"any consistent basis."[Footnote 22] Specifically, within the 25 
states, CMS ranked the carrier-defined payment localities from highest 
to lowest cost, as measured by the locality GAF. The agency compared 
the GAF of the highest-cost payment locality to the weighted average 
GAF of all lower-cost payment localities in the state.[Footnote 23] If 
the percentage difference between the two GAFs exceeded 5 percent, CMS 
retained the highest-cost payment locality as distinct. It then 
repeated (or iterated) the process with the second highest-cost payment 
locality, the third highest-cost payment locality, and so on, until a 
locality's GAF no longer exceeded the weighted average GAF of lower- 
cost payment localities by more than 5 percent. At this point, CMS did 
not make further comparisons and grouped the remaining payment 
localities into one Rest-of-State locality. Where the highest-cost 
payment locality in a state did not exceed the weighted average GAF of 
all lower-cost payment localities by more than 5 percent, CMS converted 
the state to a statewide locality. 

To illustrate, before the 1997 consolidation, Illinois had 16 carrier- 
defined payment localities. When CMS applied the consolidation 
methodology, it found that the GAFs of the 3 highest-cost payment 
localities (Chicago, Suburban Chicago, and East St. Louis) each 
exceeded the weighted average GAF of all lower-cost payment localities 
in Illinois by more than 5 percent, and therefore retained each as a 
distinct locality. The agency found that the fourth highest-cost 
payment locality, Springfield, did not exceed the weighted average GAF 
of all lower-cost payment localities by more than 5 percent; therefore, 
it consolidated Springfield and the remaining 12 localities into a 
single Rest-of-Illinois payment locality. In Alabama, CMS found that 
the GAF of Birmingham, the highest-cost payment locality, did not 
exceed the weighted average GAF of all lower-cost payment localities by 
more than 5 percent; therefore, it converted Alabama to a statewide 
locality. 

As part of the 1997 revision, CMS also eliminated all subcounty payment 
localities, such as those based on zip codes and city boundaries. The 
agency stated that, in most cases, the 1997 consolidation methodology 
appropriately consolidated any subcounty payment localities; for 
example, all payment localities in Arizona, including each of the city- 
based localities of Flagstaff, Phoenix, Prescott, Tucson, and Yuma, 
were consolidated into a statewide payment locality. However, in three 
states--Massachusetts, Missouri, and Pennsylvania--CMS concluded that 
consolidation of the subcounty payment localities under its methodology 
would have yielded significant payment inaccuracies.[Footnote 24] 
Therefore, in these states, the agency did not apply the consolidation 
methodology and instead, discarded the carrier-defined payment 
localities, creating entirely new payment localities based on groupings 
of counties.[Footnote 25] 

Although CMS cited the payment inaccuracy that would have resulted from 
the consolidation methodology as the reason for creating new payment 
localities in these three states, other states had comparably high 
payment inaccuracy when the methodology was applied. Specifically, CMS 
determined that the methodology would have yielded the average payment 
inaccuracies of 3.16, 3.86, and 3.90 percent in Massachusetts, 
Missouri, and Pennsylvania, respectively. However, it yielded 
comparable payment inaccuracies when CMS applied it to Kansas and 
Virginia (3.85 and 3.06 percent, respectively). Despite these 
comparable payment inaccuracies, CMS did not create entirely new 
payment localities in Kansas and Virginia because their carrier-defined 
localities had been county-based and not subcounty-based. 

CMS has not revised the geographic boundaries of the physician payment 
localities since the 1997 revision. Also since that year, CMS has 
indicated that the only mechanism the agency has set forth to modify 
the payment localities is for state medical associations to petition 
for a change by demonstrating that the change has the overwhelming 
support of the physician community.[Footnote 26] 

More Than Half of the Physician Payment Localities Had Counties within 
Them with Large Payment Differences: 

More than half of the physician payment localities we analyzed--47 of 
87--had at least one county within them with a large payment 
difference--that is, there was a payment difference of 5 percent or 
more between physicians' costs and Medicare's geographic adjustment for 
an area.[Footnote 27] In total, there were 447 counties with large 
payment differences, representing 14 percent of all counties. We 
determined counties with large payment differences by calculating the 
payment difference between the costs that physicians incur for 
providing services in a particular county that we calculated (the 
"county-specific" GAF) compared with Medicare's geographic adjustment 
for the locality in which that county is assigned (the "locality" GAF). 

Counties with large payment differences were located across the United 
States and varied in size, whether they were urban or rural, and 
whether they made up a large or small portion of their locality (see 
fig. 4). However, a disproportionate number were located in five 
states. Specifically, 60 percent of counties with large payment 
differences were located in California, Georgia, Minnesota, Ohio, and 
Virginia. Of these five states, Minnesota, Ohio, and Virginia are 
statewide localities for Medicare physician payments. 

Figure 4: Counties in Which Physicians Had a Payment Difference of Less 
Than 5 Percent, or 5 Percent or More, between Medicare's Locality GAF 
and Their County-Specific GAF: 

[See PDF for image] 

Source: GAO analysis of 2005 CMS, 2000 Census Bureau, and fiscal year 
2006 HUD data. 

Note: We calculated county-specific GAFs as a measure of the costs 
physicians incur for providing services in a particular county. For 
purposes of this report, we defined counties with a payment difference 
of 5 percent or more as counties with large payment differences. 
Payment difference is the absolute value of the locality GAF minus the 
county-specific GAF, divided by the county-specific GAF. 

[End of figure] 

Large payment differences consisted of both overpayments and 
underpayments, relative to the county-specific GAFs we calculated. 
Physicians in 12 percent of counties were overpaid by 5 percent or 
more, relative to the county-specific GAF. These physicians accounted 
for 3 percent of Medicare payments to physicians in 2005. In contrast, 
physicians in 2 percent of counties were underpaid by 5 percent or 
more, relative to their county-specific GAF, and these physicians 
accounted for almost 5 percent of Medicare payments to physicians in 
2005. This occurs because the volume and costliness of Medicare 
services delivered by physicians in relatively underpaid counties is 
much higher than the volume and costliness of services delivered by 
physicians in relatively overpaid counties. Relative underpayments to 
physicians may have important consequences for beneficiary access. 
Officials from several state medical associations told us that 
geographic areas that are relatively underpaid have difficulty 
attracting and retaining physicians, which may lead to beneficiary 
access problems. 

Physicians in urban counties, and specifically urban counties within 
the largest MSAs, had the highest relative underpayment differences, 
whereas physicians in rural counties generally had the highest relative 
overpayment differences. Specifically, all counties in which physicians 
were underpaid by 5 percent or more, relative to their county-specific 
GAF, were urban (see fig. 5). About three-quarters of these urban 
counties were part of MSAs with populations of at least 1 million. In 
contrast, about 60 percent of counties in which physicians were 
overpaid by 5 percent or more, relative to their county-specific GAF, 
were rural. More than half of these rural counties had populations of 
less than 25,000. 

Figure 5: Percentage of Counties in Which Physicians Were Overpaid or 
Underpaid by 5 Percent or More, Relative to Their County-Specific GAF, 
by Urban and Rural: 

[See PDF for image] 

Source: GAO analysis of 2005 CMS, 2000 Census Bureau, and fiscal year 
2006 HUD data. 

Note: We calculated county-specific GAFs as a measure of the costs 
physicians incur for providing services in a particular county. There 
were 390 counties in which physicians were overpaid by 5 percent or 
more and 57 counties in which physicians were underpaid by 5 percent or 
more, relative to their county-specific GAF. 

[End of figure] 

Large payment differences occur because many payment localities combine 
counties with very different costs. Specifically, within 39 of the 87 
payment localities we analyzed, county-specific GAFs varied by at least 
10 percent. For example, county-specific GAFs in the Poughkeepsie/ 
Northern New York City Suburbs locality ranged from 0.948 to 1.105--a 
variation of 17 percent. 

The fact that many payment localities combine counties with different 
costs may be due to several factors. First, the current payment 
localities are primarily consolidations of the localities Medicare 
carriers established in 1966, and the carriers may have established 
locality boundaries in 1966 that combined counties with different 
costs. However, we could not assess the accuracy of the payment 
localities at the time the carriers established them because no data 
are available that would allow us to do such an analysis. 

Second, a majority of states are statewide payment localities; because 
such localities contain many counties, they are more likely than 
nonstatewide localities to combine counties with very different costs. 
Of the 39 payment localities with county-specific GAFs that varied by 
at least 10 percent, 23 were statewide. However, several state medical 
associations we spoke with favor having a statewide payment locality. 
For example, in Iowa's statewide payment locality, the highest and 
lowest county-specific GAFs varied by 11 percent; as a result, 19 
percent of payments to physicians in Iowa had a large payment 
difference. However, an official from Iowa's state medical association 
told us that it supports maintaining Iowa's current statewide payment 
locality because many physicians in the state maintain urban and rural 
offices and are not reimbursed for their travel between these offices; 
having a uniform reimbursement across the state helps mitigate these 
travel costs. 

Large payment differences may also be due to the fact that although 
large demographic changes have occurred in certain geographic areas, 
CMS has not revised the payment localities in accordance with these 
changes. Certain payment localities contain counties that have 
experienced large population growth relative to the rest of their 
locality, which may be associated with increasing costs relative to the 
rest of their locality. For example, physicians in Loudoun County, 
Virginia, which is part of the Virginia statewide payment locality, 
were underpaid by 12 percent relative to their county-specific GAF. 
From 1980 through 2000, the population of Loudoun County increased by 
195 percent, while the population of the rest of the Virginia payment 
locality increased by only 27 percent. Officials from Virginia's state 
medical association reported that, because Loudoun County has 
experienced higher population growth relative to the rest of the state, 
the area has also become more costly relative to the rest of the state. 
Accordingly, they stated that physicians from Loudoun County have 
expressed discontent with Virginia's statewide payment locality and 
wish to be reimbursed by Medicare at a rate more representative of 
their local costs. 

Several Alternative Approaches to the Physician Payment Localities 
Could Improve Payment Accuracy While Generally Imposing Minimal 
Additional Administrative Burden: 

Many alternative approaches could be used to revise the geographic 
boundaries of the current payment localities. We examined five possible 
approaches and found that three would improve payment accuracy while 
generally imposing a minimal amount of additional administrative burden 
on CMS, Medicare carriers, and physicians. Compared to the current 
payment localities, four of the five alternative approaches would 
improve payment accuracy, the extent to which each approach accurately 
measures variations in physicians' costs of providing care. In 
addition, while all approaches would impose upfront administrative 
costs on CMS and Medicare carriers, four of the approaches we examined 
would impose a minimal amount of additional ongoing administrative 
burden on CMS, Medicare carriers, and physicians. 

Alternative Approaches Could Be Used to Modify the Current Payment 
Localities: 

Although many alternative approaches could be used to modify the 
current physician payment localities, in this report, we present five 
possible approaches. The approaches and methodologies that we examined 
are detailed in table 1. Three of our approaches are designed to 
balance payment accuracy, the extent to which each approach accurately 
measures variations in physicians' costs of providing care, with 
administrative burden. The first of these, the county-based iterative 
approach, creates a single-county payment locality for each of the 
highest-cost counties in a state. It then groups that state's moderate- 
and low-cost counties together into one "Rest-of-State" locality. In 
contrast, the second approach, the county-based GAF ranges approach, 
groups high-, moderate-, and low-cost counties in each state into 
separate, multiple-county localities. The third approach, the MSA-based 
iterative approach, creates a single-MSA payment locality for each of 
the highest-cost MSAs in the nation. It then groups all other counties 
into a single "Rest-of-Nation" locality. Appendix II contains detailed 
information on the configuration of the payment localities under each 
of these approaches, as well as under the current payment localities. 

Table 1: Selected Alternative Approaches to Current Medicare Physician 
Payment Localities: 

Alternative approach: County-based iterative; 
Methodology used to construct localities: Using counties as a starting 
point, this methodology creates a single-county payment locality for 
any county whose GAF exceeds the weighted average GAF of all counties 
in the state with lower GAFs by 5 percent or more. This comparison 
begins with the highest-cost county and continues until a county's GAF 
does not exceed the weighted average GAF of all lower-cost counties by 
5 percent or more. At this point, that county and all lower-cost 
counties are grouped into a Rest-of-State payment locality.[A]. 

Alternative approach: County-based GAF ranges; 
Methodology used to construct localities: Using counties as a starting 
point, this methodology groups counties with similar GAFs into one 
locality. County-specific GAFs within a state are ranked from lowest to 
highest. The lowest county-specific GAF in each state becomes the lower 
boundary of the first GAF range. This lower boundary is increased by 5 
percent to create the upper boundary of the first range. All counties 
with a GAF in that GAF range are grouped into locality 1. The first GAF 
that exceeds the upper boundary of the first GAF range becomes the 
lower boundary of a second GAF range and is increased by 5 percent to 
create the upper boundary of this range for each state. The process is 
repeated until all counties in the state are assigned to a locality.[B] 
If a county in an MSA has a GAF lower than that of the non-MSA counties 
in the state, the MSA county is grouped into the first GAF range 
containing non-MSA counties.c. 

Alternative approach: MSA-based iterative; 
Methodology used to construct localities: Using MSAs as a starting 
point, this methodology creates a single-MSA payment locality for any 
MSA whose GAF exceeds the weighted average GAF of all counties in the 
nation with lower GAFs by 5 percent or more. This comparison begins 
with the highest-cost MSA and continues until an MSA's weighted average 
GAF does not exceed the weighted average GAF of all lower-cost counties 
by 5 percent or more. At this point, that MSA and all lower-cost 
counties are grouped into a Rest-of-Nation payment locality. 

Alternative approach: Statewide; 
Methodology used to construct localities: All states have one statewide 
payment locality. 

Alternative approach: County-based unique GAF; 
Methodology used to construct localities: Each group of counties in a 
state with a unique GAF is a distinct payment locality. 

Source: GAO. 

Notes: In our calculations, we weighted average GAFs by county RVUs--a 
measure of the volume and costliness of Medicare services in a county. 
We used 5-percent thresholds because that is what CMS used for its 1997 
consolidation methodology. For each new payment locality, we calculated 
the locality's GAF as the average county-specific GAF of all counties 
in the payment locality, weighted by county RVUs. 

[A] For example, King County, Washington's, county-specific GAF is 
1.045. The weighted average county-specific GAF of all counties in the 
state with lower GAFs is 0.982. Therefore, because 1.045 exceeds 0.982 
by 5 percent or more, King County becomes a single-county payment 
locality. 

[B] For example, the lowest county-specific GAF in Arizona is 0.943, 
and this becomes the lower boundary of the first GAF range. This 
boundary is increased by 5 percent to yield 0.990, which becomes the 
upper boundary of the first GAF range. All Arizona counties that fall 
into the first range of 0.943 to 0.990 are grouped into locality 1. The 
first GAF that exceeds this upper boundary is 1.003; therefore, 1.003 
becomes the lower boundary of a second GAF range for Arizona, and the 
process is repeated. 

[C] For example, the non-MSA counties in North Carolina have county- 
specific GAFs of 0.911. However, Greene County, North Carolina, which 
is in the Greenville MSA, has a county-specific GAF of 0.838, and is in 
a lower range than the non-MSA counties. Under this methodology, Greene 
County is grouped with the non-MSA range. 

[End of table] 

We also present two approaches that are useful for comparison because 
they illustrate the tradeoffs between payment accuracy and 
administrative burden. Under the statewide approach, each state has one 
statewide payment locality. This approach minimizes administrative 
burden, but maximizes large payment differences. In contrast, under the 
county-based unique GAF approach, each group of counties in a state 
with a unique county-specific GAF is a distinct payment locality. This 
approach minimizes large payment differences, but maximizes 
administrative burden. 

While we limited our analysis to five possible approaches, CMS could 
examine additional approaches by modifying the ones we selected. For 
example, three of our approaches use a 5-percent threshold to determine 
new payment locality boundaries. We used a 5-percent threshold because 
that is what CMS used for its 1997 consolidation methodology; however, 
a different percentage threshold may also be feasible. In general, 
lower thresholds generate more payment localities and further improve 
payment accuracy. The first time an approach is applied, it is likely 
to have a large redistributive effect on the payment localities, 
especially given that many of the localities, particularly the 
statewide localities, have not been reexamined recently, and in some 
cases since they were created in 1966. Subsequent changes to the 
payment localities, if made periodically, would likely be smaller. 

Several Alternative Approaches to the Payment Localities Would Improve 
Payment Accuracy: 

Compared to the current Medicare physician payment localities, we found 
that four of our five alternative approaches would improve payment 
accuracy by reducing the average payment difference between the county- 
specific GAF and the locality GAF (see fig. 6). For example, compared 
to the current localities, the county-based GAF ranges approach would 
reduce the national average payment difference by 52 percent--from 2.3 
to 1.1 percent. The statewide approach, however, would increase the 
average payment difference by 74 percent--from 2.3 to 4.0 percent. 

Figure 6: Average Payment Difference for the Current Medicare Physician 
Payment Localities and Selected Alternative Approaches: 

[See PDF for image] 

Source: GAO analysis of 2005 CMS, 2000 Census Bureau, and fiscal year 
2006 HUD data. 

Note: The dotted line represents the national average payment 
difference for the current localities. Payment difference is the 
absolute value of the locality GAF minus the county-specific GAF, 
divided by the county-specific GAF. In calculating the average payment 
difference, each county's payment difference was weighted by county 
RVUs. The county-based unique GAF approach has an average payment 
difference of 0 percent because, according to the methodology for this 
approach, locality GAFs always equal county-specific GAFs. 

[End of figure] 

In addition, four of our five approaches would substantially reduce or 
eliminate relative underpayments to physicians (see fig. 7). For 
example, under the three county-based approaches, 0 percent of 
physicians would be underpaid by 5 percent or more, relative to their 
county-specific GAF. Thus, the number of counties that could 
potentially experience difficulty attracting and retaining physicians 
as a result of relative underpayments would also decrease. 

Figure 7: Percentage of Medicare Payments to Physicians Who Were 
Overpaid or Underpaid by 5 Percent or More Relative to Their County- 
Specific GAF, for the Current Medicare Physician Payment Localities and 
Selected Alternative Approaches: 

[See PDF for image] 

Source: GAO analysis of 2005 CMS, 2000 Census Bureau, and fiscal year 
2006 HUD data. 

Note: We calculated county-specific GAFs as a measure of the costs 
physicians incur for providing services in a particular county. Under 
the county-based unique GAF approach, 0 percent of payments would be to 
physicians who were overpaid or underpaid by 5 percent or more relative 
to their county-specific GAF because, according to the methodology for 
this approach, locality GAFs always equal county-specific GAFs. 

[End of figure] 

Compared to the current localities, the three county-based approaches 
would also reduce the percentage of payments to physicians who were 
overpaid by 5 percent or more, relative to their county-specific GAF. 
However, the statewide and MSA-based iterative approaches would 
substantially increase relative overpayments. The statewide approach 
would increase relative overpayments because statewide localities 
frequently group together counties with very different costs. The MSA- 
based iterative approach does so because MSAs, which are based on 
commuting patterns, also frequently group together counties with 
dissimilar costs. For example, the Atlanta MSA contains 28 counties. 
The county-specific GAF of the lowest-cost county was 0.821, while the 
county-specific GAF of the highest-cost county was 1.028. Under the MSA-
based approach, however, all counties in the Atlanta MSA would belong 
to the same payment locality and have the same locality GAF, leading to 
large payment differences for physicians in certain counties. 

Improvements in payment accuracy often lead to increased differences in 
the GAFs of adjacent payment localities. For example, the county-based 
unique GAF approach, which minimizes large payment differences, 
generates the highest average adjacent-locality GAF difference among 
our alternative approaches (see fig. 8). In general, large differences 
in adjacent-locality GAFs may be problematic. According to officials 
from several state medical associations we spoke with, such differences 
create incentives for physicians to relocate to the higher-GAF payment 
locality, potentially creating beneficiary access problems in the lower-
GAF payment locality. However, the specific instances of high adjacent-
locality GAF differences that these officials cited result from payment 
localities that have large differences between Medicare's geographic 
adjustment and physicians' practice costs. Therefore, in these cases, 
improvements in payment accuracy actually reduce problematic boundary 
differences. 

Figure 8: Average Adjacent-Locality GAF Difference, for the Current 
Medicare Physician Payment Localities and Selected Alternative 
Approaches: 

[See PDF for image] 

Source: GAO analysis of 2005 CMS, 2000 Census Bureau, and fiscal year 
2006 HUD data. 

Note: The dotted line represents the average adjacent-locality GAF 
difference for the current localities. We calculated adjacent-locality 
GAF differences as the absolute value of the difference in locality 
GAFs between all unique, contiguous, county pairs. We weighted the 
average adjacent-locality GAF difference by the sum of the RVUs of the 
contiguous counties. 

[End of figure] 

For instance, officials from California's state medical association 
cited Santa Cruz County, California, as an example, stating that the 
county is having difficulty recruiting and retaining physicians. This 
county had a county-specific GAF of 1.119, but is currently part of the 
Rest-of-California payment locality, which had a GAF of 1.012. 
Therefore, physicians in Santa Cruz County had a relative underpayment 
of 10 percent. The adjacent county of Santa Clara has its own, single- 
county, payment locality, with a GAF of 1.224. Because physicians in 
Santa Cruz County had such a high relative underpayment, the difference 
in the locality GAFs between these two counties was very large--21 
percent. If physicians in both counties were paid their county-specific 
GAF, however, the difference between the two county-specific GAFs would 
be only 5 percent. 

We previously reported that income, and therefore GAFs, is only one of 
several factors that drive physicians' location decisions.[Footnote 28] 
Nonfinancial factors, such as the quality of local schools or a 
spouse's employment opportunities, and other financial factors, such as 
a community's average income level, are also major influences in 
physicians' decisions to locate and remain in certain geographic areas. 
Accordingly, small increases in the average adjacent-locality GAF 
difference may not create substantial relocation incentives. 

Several Alternative Approaches to the Payment Localities Would 
Substantially Reduce the Number of Statewide Localities: 

Four of our five approaches would substantially reduce the number of 
statewide payment localities (see fig. 9). Statewide payment localities 
tend to have higher payment differences than nonstatewide payment 
localities because most states have substantial cost variation among 
their counties. 

Figure 9: Number of Statewide Physician Payment Localities for the 
Current Medicare Physician Payment Localities and Selected Alternative 
Approaches: 

[See PDF for image] 

Source: GAO analysis of 2005 CMS, 2000 Census Bureau, and fiscal year 
2006 HUD data. 

Note: The dotted line represents the number of statewide localities for 
the current localities. For the current localities, the District of 
Columbia payment locality consists of the District, two Maryland 
counties, and five Virginia counties; for the MSA-based iterative 
approach, it would consist of the Washington, D.C., MSA; and for all 
other approaches it would consist of only the District of Columbia. 
However, we do not consider it a statewide locality for any of these 
approaches. 

[End of figure] 

Of the 34 current statewide payment localities, all would remain so 
under the statewide approach. In contrast, all of the current statewide 
payment localities would become multiple-locality states under the 
county-based unique GAF approach. 

Under the remaining three approaches, the number of states that would 
remain statewide localities varies. Four current statewide payment 
localities would remain statewide under all three approaches, 9 would 
become multiple-locality states under all three approaches, and 21 
would remain statewide under some approaches, but not others. The 16 
states that currently have multiple localities would generally also 
have multiple payment localities under the three approaches. 

Statewide Payment Localities That Would Remain Statewide under All 
Three Approaches: 

The four current statewide payment localities that would remain 
statewide under each of the county-based iterative, county-based GAF 
ranges, and MSA-based iterative approaches had relatively low cost 
variation among their counties.[Footnote 29] For example, county- 
specific GAFs in Rhode Island ranged from 1.043 to 1.057, a variation 
of only 1 percent. 

Statewide Payment Localities That Would Become Multiple-Locality States 
under All Three Approaches: 

The nine current statewide payment localities that would become 
multiple-locality states under each of these three approaches had 
substantial cost variation among their counties.[Footnote 30] For 
example, county-specific GAFs in Minnesota ranged from 0.870 to 1.024, 
a variation of 18 percent. Accordingly, under the county-based 
iterative approach, Minnesota would have thirteen payment localities; 
under the county-based GAF ranges approach, it would have three payment 
localities; and under the MSA-based approach, it would have three 
payment localities (see fig. 10). 

Figure 10: Configuration of Minnesota's Physician Payment Localities 
under the Current Medicare Physician Payment Localities and Selected 
Alternative Approaches: 

[See PDF for image] 

Source: GAO analysis of 2005 CMS, 2000 Census Bureau, and fiscal year 
2006 HUD data. 

Note: Under each approach, each distinct number represents a payment 
locality. Under the county-based GAF ranges approach, each area labeled 
as locality 2 belongs to the same payment locality. 

[End of figure] 

Statewide Payment Localities That Would Become Multiple-Locality States 
under Some Approaches, but Not Others: 

There were 21 current statewide payment localities that would become 
multiple-locality states under some approaches, but not others. These 
states generally had more cost variation than states that remained 
statewide in all three approaches, but less than those that were 
converted to multiple-locality states in all three approaches.[Footnote 
31] For example, county-specific GAFs in Ohio range from 0.888 to 
1.003, a variation of 13 percent. Under the county-based iterative 
approach, Ohio would remain a statewide payment locality; under the 
county-based GAF ranges approach, Ohio would have two payment 
localities; and under the MSA-based iterative approach, it would have 
five payment localities (see fig. 11). 

Figure 11: Configuration of Ohio's Physician Payment Localities under 
the Current Medicare Physician Payment Localities and Selected 
Alternative Approaches: 

[See PDF for image] 

Source: GAO analysis of 2005 CMS, 2000 Census Bureau, and fiscal year 
2006 HUD data. 

Note: Under each approach, each distinct number represents a payment 
locality. Under the county-based GAF ranges approach, each area labeled 
as locality 1 belongs to the same payment locality. 

[End of figure] 

States That Currently Have, and Would Generally Retain, Multiple 
Payment Localities: 

The 16 states that currently have multiple payment localities would 
generally also have multiple payment localities under each of the 
county-based iterative, county-based GAF ranges, and MSA-based 
iterative approaches.[Footnote 32] However, depending on the specific 
state, and approach, the number of payment localities may increase, 
decrease, or stay the same. This occurs because almost all multiple- 
locality states had substantial cost variation among their counties. 
For example, county-specific GAFs in Florida ranged from 0.910 to 
1.073, a variation of 18 percent. Florida currently has three payment 
localities. Under the county-based iterative approach, the state would 
have five payment localities; under the county-based GAF ranges 
approach, it would have three payment localities; and under the MSA- 
based iterative approach, it would have nine payment localities (see 
fig. 12). 

Figure 12: Configuration of Florida's Physician Payment Localities 
under the Current Medicare Physician Payment Localities and Selected 
Alternative Approaches: 

[See PDF for image] 

Source: GAO analysis of 2005 CMS, 2000 Census Bureau, and fiscal year 
2006 HUD data. 

Note: Under each approach, each distinct number represents a payment 
locality. Under the county-based GAF ranges approach, each area labeled 
as locality 2 belongs to the same payment locality. 

[End of figure] 

Several Alternative Approaches to the Payment Localities Would 
Generally Impose a Minimal Amount of Additional Administrative Burden 
on CMS, Medicare Carriers, and Physicians: 

Four of our approaches would generally impose a minimal amount of 
additional administrative burden on CMS, Medicare carriers, and 
physicians. This occurs because these four approaches would generally 
create three or fewer additional localities in each state. In total, 
these four approaches create from 36 fewer to 132 more payment 
localities than currently exist (see fig. 13). For example, the county- 
based iterative approach would generate 132 additional localities, for 
a total of 219. The statewide approach would generate 36 fewer 
localities, for a total of 51. The county-based unique GAF approach, 
however, would generate 1,054 additional localities, for a total of 
1,141--over 13 times the current number. 

Figure 13: Number of Physician Payment Localities for the Current 
Medicare Physician Payment Localities and Selected Alternative 
Approaches: 

[See PDF for image] 

Source: GAO analysis of 2005 CMS, 2000 Census Bureau, and fiscal year 
2006 HUD data. 

Note: The dotted line represents the current number of payment 
localities. Our analysis excluded 2 of the 89 payment localities: 
Puerto Rico and the U.S. Virgin Islands. 

[End of figure] 

The number of localities generated by the county-and MSA-based 
iterative approaches, however, could be reduced with very little loss 
in payment accuracy by regrouping single-county and single-MSA payment 
localities with similar GAFs, respectively, into larger payment 
localities. For example, by combining localities with county-specific 
GAFs that vary by 1 percent or less, the total number of payment 
localities under the county-based iterative approach could be reduced 
from 219 to 139, while only increasing the average payment difference 
from 1.5 to 1.6 percent.[Footnote 33] For example, in Kansas, under the 
county-based iterative approach, Wyandotte County, which has a county- 
specific GAF of 0.972, and Johnson County, which has a county-specific 
GAF of 0.975, would both become distinct single-county payment 
localities. However, under a regrouping methodology, these counties 
could be regrouped into a two-county payment locality while increasing 
the average payment differences of these counties from 0 percent to 
about one-tenth of 1 percent. 

CMS officials we spoke with stated they would experience onetime 
upfront costs if the current payment localities were modified, 
regardless of the number of localities generated by the approach 
chosen. Specifically, CMS creates a distinct physician fee schedule for 
each payment locality and would have to perform data reliability checks 
on the localities' physician fee schedules to ensure their accuracy. 
Agency officials stated that they would have to reprogram CMS systems, 
update its files that assign carriers and physicians to a payment 
locality, and provide physicians with extensive education on the 
payment locality modifications. However, CMS officials stated that they 
did not anticipate that significant modifications to the payment 
localities would require a substantial amount of additional ongoing 
administrative burden. 

In addition, CMS officials stated that any change to the payment 
localities would cause Medicare carriers to incur upfront costs. 
Representatives from the five Medicare carriers that we spoke with each 
stated that a moderate increase in the number of payment localities 
would not require a substantial amount of additional resources. They 
each indicated that modifying the payment localities would cause 
onetime transitional costs. Specifically, they would be required to 
create new data files that assigned each physician to a new payment 
locality. Carrier representatives also indicated that an increase in 
the number of payment localities would increase their ongoing 
operational costs. Specifically, the carriers must load each of the 
distinct physician fee schedules CMS sends them into their data systems 
and then perform data reliability checks on them to ensure they are 
accurate. 

Physicians would not incur additional administrative burden if their 
payment locality changed. In addition, physicians in California we 
spoke with stated that if the current localities were modified, they 
would not experience an increase in administrative burden and would 
complete the same paperwork as they do currently. CMS officials we 
spoke with agreed that physicians' paperwork requirements would remain 
the same. In addition, representatives from the Medicare carriers we 
spoke with stated that they do not anticipate having to provide 
physicians with significant additional training about payment locality 
modifications, since most carriers already routinely send each 
physician a complete fee schedule specific to their payment locality. 

Modifying the payment localities will cause physicians' locality GAFs 
to change, and accordingly, physicians will have to transition to new 
reimbursement rates. Representatives from the American Medical 
Association we spoke with expressed concern that transitioning to new 
reimbursement rates could be burdensome to physicians. However, we 
found that under four of our five approaches, locality GAFs would 
neither increase nor decrease substantially, relative to current 
locality GAFs (see fig. 14). For example, under the county-based GAF 
ranges approach, locality GAFs for one-half of 1 percent of Medicare 
physician payments would experience a decrease of 5 percent or more, 
while locality GAFs for about 4 percent of payments would experience an 
increase of 5 percent or more. Under the statewide approach, however, 
locality GAFs for about 15 percent of Medicare physician payments would 
experience a decrease of 5 percent or more, while locality GAFs for 
about 10 percent of payments would experience an increase of 5 percent 
or more. Rural counties would generally account for most of the 
counties with a decrease of 5 percent or more in Medicare's geographic 
adjustment. 

Figure 14: Percentage of Medicare Physician Payments for Which the 
Locality GAF Would Change by 5 Percent or More, Relative to the Current 
Locality GAF, under the Selected Alternative Approaches: 

[See PDF for image] 

Source: GAO analysis of 2005 CMS, 2000 Census Bureau, and fiscal year 
2006 HUD data. 

[End of figure] 

Conclusions: 

Adjusting Medicare payments for the costs physicians incur in operating 
a private medical practice in different parts of the country is 
important to ensure that Medicare accurately accounts for variations in 
physicians' costs of providing care, and that beneficiaries have 
sufficient access to physician care. However, more than half of the 
current physician payment localities had counties within them with 
large payment differences--that is, there was a payment difference of 5 
percent or more between physicians' costs and Medicare's geographic 
adjustment for an area. In addition, CMS's lack of a uniform approach 
to revising payment localities has resulted in localities where there 
is substantial cost variation, a particular problem among the 34 
statewide localities. We have identified three alternative approaches 
to the current payment localities that, if uniformly applied to all 
states, could be used to improve payment accuracy while generally 
imposing a minimal amount of additional administrative burden. This is 
consistent with the goal that CMS has stated in setting the geographic 
boundaries of payment localities. 

While, under four of our five alterative approaches, payments to 
physicians would not change substantially overall, rural counties would 
generally account for most of the counties with a large decrease in 
Medicare's geographic adjustment. However, CMS has other payment 
policies specifically designed to ensure that physicians practicing in 
rural areas, such as those designated as physician scarcity areas, are 
able to recruit and retain physicians, helping ensure beneficiary 
access. Other approaches are possible as well and CMS could phase in 
implementation over several years, for example, to lessen the effect on 
physician payments in areas negatively affected by changes to the 
current physician payment localities. Using an approach that would be 
uniformly applied to all states would likely have a large 
redistributive effect on the payment localities the first time the 
approach was applied, especially given that many of the localities, 
particularly the statewide localities, have not been reexamined 
recently, and in some cases since they were created in 1966. Subsequent 
changes to the payment localities, if made periodically, would likely 
be smaller. 

Currently, CMS has no mechanism in place to periodically update the 
physician payment localities to ensure that the geographic boundaries 
of the payment localities accurately address variations in the costs of 
operating a private medical practice. Other components of the physician 
fee schedule are routinely reviewed--the RVUs every 5 years, and the 
GPCIs every 3 years. Updating the geographic boundaries of physician 
payment localities at least every 10 years when new decennial census 
data become available--the major data source used in the calculation of 
the GPCIs--would ensure that Medicare appropriately accounted for 
changes in the geographic distribution of physicians' costs of 
operating a private medical practice. 

Recommendations for Executive Action: 

To help ensure that Medicare's payments to physicians more accurately 
reflect geographic differences in physicians' costs of operating a 
private medical practice, we recommend the following two actions. 
First, we recommend that the Administrator of CMS examine and revise 
the physician payment localities using an approach that is uniformly 
applied to all states and based on the most current data. Second, the 
Administrator should examine and, if necessary, update the physician 
payment localities on a periodic basis with no more than 10 years 
between updates. 

Agency Comments and Our Evaluation: 

CMS reviewed a draft of this report and provided comments, which appear 
in appendix III. CMS stated that it appreciated the work we had done in 
examining this issue and that our analysis would serve as a helpful 
resource as it continues to examine payment locality alternatives. 

CMS stated it would consider our first recommendation--to examine and 
revise the physician payment localities using an approach that is 
uniformly applied to all states and based on the most current data. The 
agency also stated that, in doing so, it would give full consideration 
to the redistributive effects and administrative burdens of any change 
to the payment locality structure. We agree that redistributive effects 
and administrative burden should be considered when making the 
necessary changes to the physician payment localities. 

Regarding our second recommendation--that CMS examine and, if 
necessary, update the payment localities on a periodic basis--the 
agency stated that it considers payment locality issues when concerns 
are raised by interested parties and based on its own initiative, an 
approach that it believes is more flexible and efficient than examining 
the payment localities every 10 years. Reviewing payment localities in 
response to concerns raised by interested parties, however, could 
result in CMS examining only selected physician payment localities, 
rather than examining all payment localities using a uniform approach. 
Updating the payment localities at least every 10 years when new 
decennial census data become available would ensure that Medicare 
appropriately accounts for changes in the geographic distribution of 
physicians' costs of operating a private medical practice. 

CMS also stated several concerns about specific points in the report. 
The agency asserted that our use of counties as the basis for comparing 
physician costs and Medicare's geographic adjustment implies that 
county-level data are measured with absolute precision but the data we 
used to calculate county-specific physician costs are proxies for 
actual costs. We recognize that the data we used to calculate county- 
specific physician costs are proxy measures. As noted in the draft 
report, we calculated our measure of physician costs using the same 
data sources and methodology CMS uses to calculate the GPCIs, which are 
the agency's proxy measures of physicians' costs. In 1991, the year 
before the GPCI's implementation, CMS noted that the cost would be 
prohibitive to collect the detailed locality-level data needed to 
measure every area's staff costs and other expenses compared to the 
national average. The agency therefore limited data sources to those 
that existed and were readily available, selecting data proxies for 
each GPCI. As the agency uses the GPCIs to adjust physician fees for 
variations in physicians' costs of providing care in different 
geographic areas, we determined that this measure was sufficient for 
our purposes. CMS also asserted that the data we used to calculate 
county-specific physician costs are proxies because, for more than 90 
percent of counties, the Census Bureau data we obtained were based on 
data for larger geographic areas. As noted in the draft report, 
although Census Bureau data were not available at the county level for 
all counties, we were able to obtain county-specific data for 1,091 of 
the 3,142 counties in the United States--about 35 percent. Also as 
noted in the draft report, these 1,091 counties represented 83 percent 
of the U.S. population in 2000, and 88 percent of Medicare's payments 
to physicians in 2005. We have, however, clarified in our report that 
the data we used to calculate physician costs are proxy measures. 

CMS commented that the draft report's characterization of payments to 
14 percent of counties as "inaccurate" was highly inappropriate and 
potentially problematic. The agency stated that it was concerned that a 
finding that payments were inaccurate could be construed to mean that 
there has been an overpayment for which recoupment of the overpayment, 
as well as other actions, should be pursued. As a result, we have 
deleted the term and instead define counties with a payment difference 
of 5 percent or more as having a "large payment difference." As we did 
in the draft report, however, we use the term "payment accuracy" to 
refer to the extent to which the payment localities accurately measure 
variations in physicians' costs of providing care in different 
geographic areas. 

CMS expressed a concern that our report did not sufficiently account 
for the effect our recommended changes would have on physicians. 
Specifically, the agency stated that increasing payments to physicians 
in some counties in a state would reduce payments to physicians in 
other counties in a state, and that our report did not sufficiently 
convey the extent to which our alternative approaches would reduce 
physician payments in certain areas. As noted throughout the draft 
report, because GPCIs measure physician costs relative to the national 
average costs, an increase in the GPCIs of one area will result in a 
decrease in the GPCIs of other areas. With the exception of the MSA- 
based iterative approach, each of our alternative approaches examines 
physicians' costs within a state and was therefore in accordance with 
the principal of within-state "budget neutrality," which provides that 
adjusting Medicare payments should neither increase nor decrease the 
total amount of Medicare payments to physicians. We recognize that the 
potential for large payment reductions is an important issue and have 
added information to the report to address it. 

CMS commented on our finding that several alternative approaches to the 
payment localities would generally impose a minimal amount of 
additional administrative burden. Specifically, the agency stated that 
it believes the level of administrative burden would be more 
significant than what we presented in our draft report. We believe that 
our report accurately portrays the level of administrative burden that 
CMS would incur if the payment localities were modified. In the draft 
report, we stated that the agency would experience onetime upfront 
costs if the current payment localities were modified, regardless of 
the number of localities generated, but that they did not anticipate 
that significant modifications to the payment localities would require 
a substantial amount of additional ongoing administrative burden. In 
addition, using an approach that is uniformly applied to all states 
would likely have a large redistributive effect on the payment 
localities the first time the approach was applied, especially given 
that many of the localities have not been reexamined recently, but if 
subsequent changes were made periodically, they would likely be 
smaller. However, we have modified the report to include additional 
information on the types of upfront costs CMS would incur if the 
payment localities were changed. 

CMS also stated that our draft report did not point out the potential 
implications an increased number of payment localities would have on 
physicians' administrative burden. Specifically, the agency stated that 
increasing the number of payment localities also increases the 
likelihood that physicians will practice in multiple localities and 
therefore have to file claims based on multiple localities. However, 
physicians are already required to include the address of the facility 
where services were rendered on the claim. As noted in the draft 
report, physicians we spoke with stated they would not incur additional 
administrative burden and would complete the same paperwork as they 
currently do if the payment localities were modified; CMS officials we 
spoke with concurred with this statement. 

CMS commented on our description of the agency's denial of California's 
state medical association's 2004 proposal for a change to the payment 
localities. Specifically, CMS stated that it does not believe that its 
denial of the California proposal demonstrates reluctance on the part 
of the agency to consider and adopt changes to the payment localities. 
We did not state in the draft report that the agency's denial of the 
California proposal demonstrated a reluctance to consider and adopt 
changes to the payment localities. Rather, we stated that, since 1997, 
CMS has indicated that only one state medical association has 
petitioned for a change to the payment localities--California's state 
medical association. CMS denied its petition, stating that the agency 
did not have the statutory authority to make the specific change the 
association had requested. 

As agreed with your office, unless you publicly announce the contents 
of this report earlier, we plan no further distribution of it until 30 
days from the date of this letter. We will then send copies to the 
Administrator of CMS, appropriate congressional committees, and other 
interested parties. We will also make copies available to others upon 
request. This report is also available at no charge on GAO's Web site 
at http://www.gao.gov. 

If you or your staff have any questions about this report, please 
contact me at (202) 512-7114 or steinwalda@gao.gov. Contact points for 
our Offices of Congressional Relations and Public Affairs may be found 
on the last page of this report. GAO staff who made contributions to 
this report are listed in appendix IV. 

Sincerely yours, 

Signed by: 

A. Bruce Steinwald: 
Director, Health Care: 

[End of section] 

Appendix I: Scope and Methodology: 

In conducting this study, we analyzed data obtained from the Census 
Bureau, the Department of Housing and Urban Development (HUD), and the 
Centers for Medicare & Medicaid Services (CMS). We interviewed 
officials from CMS and representatives from five Medicare Part B 
carriers that process physician claims in 27 states. We also 
interviewed representatives from the American Medical Association and 
the state medical associations from California, Colorado, Florida, 
Iowa, Minnesota, New York, North Carolina, Ohio, Texas, Virginia, and 
Washington. These states represent geographically diverse areas, as 
well as Medicare physician payment localities that were established in 
1966 using carrier definitions, localities that were revised from 1992 
through 1995 using a physician overwhelming support approach for a 
statewide locality, and localities that were revised in 1997 using a 
CMS approach designed to consolidate carrier-defined localities. In 
addition, we interviewed county medical associations and 11 physicians 
from San Diego, Santa Cruz, and Sonoma Counties in California, and 
Albany County, New York, which were referred to us by representatives 
from the state medical associations we spoke with. 

To determine how CMS has revised the physician payment localities since 
they were established and the approaches the agency used, we reviewed 
relevant documents published in the Federal Register to determine when 
and how the boundaries of the localities have changed, and a CMS- 
contracted report on the payment localities that was used as the basis 
for the agency's 1997 modifications.[Footnote 34] To determine the 
extent to which the current payment localities reflect the costs of 
providing care in different geographic areas, we used the geographic 
adjustment factor (GAF). The GAF is a weighted average of the three 
geographic practice cost indices (GPCI)--work, practice expense, and 
malpractice expense.[Footnote 35] We constructed a proxy measure of the 
costs physicians incur for providing services in a particular county 
(the county-specific GAF) and compared this measure with Medicare's 
geographic adjustment for the locality to which that county is assigned 
and is a proxy for physicians' costs in a locality (the locality GAF). 
We compared the two by calculating the "payment difference," the 
absolute value of the county's 2005 locality GAF[Footnote 36] minus its 
county-specific GAF, divided by its county-specific GAF. 

To calculate county-specific GAFs, we calculated GPCIs using the same 
methodology CMS used for the most recent GPCI update, in 2005. 
Specifically, we computed county-level work and practice expense GPCIs 
using 2000 Census Bureau data on the median earnings of six categories 
of nonphysician professional occupations,[Footnote 37] fiscal year 2006 
HUD data on fair market rents, and 2005 CMS data on county-level 
relative value units (RVU)--a measure of the relative costliness of 
providing a particular service. These data were the most recent data 
available at the time of our analysis.[Footnote 38] Although we refer 
to these data and GPCIs as "county-specific," we were not able to 
compute unique county GAFs for each of the 3,142 counties in the United 
States because Census Bureau data are not available at this level. 
Specifically, it is Census Bureau protocol to suppress statistics for 
which less than three people report values and, in certain cases, 
nonmetropolitan counties had less than three persons reporting earnings 
for a profession. Therefore, we were able to obtain data that allowed 
us to calculate individual work and practice expense GPCIs for the 
1,091 counties that were part of a metropolitan statistical area (MSA) 
and one composite work and one composite practice expense GPCI for each 
non-MSA area per state. In 2000, counties in MSAs represented 83 
percent of the population, and in 2005, they represented 88 percent of 
Medicare's payments to physicians. We used the Office of Management and 
Budget's MSA definitions as of December 2005. 

The data CMS uses to calculate the malpractice expense GPCIs are not 
available at the county level. However, the malpractice expense GPCI is 
weighted by only 3.9 percent when calculating the GAF. Thus, to 
calculate the county-specific GAFs, we computed the weighted average of 
the county-level work and practice expense GPCIs and the locality-level 
malpractice expense GPCI. In addition, we defined a county as urban if 
it was part of an MSA and as rural if it was not part of an MSA. Our 
analysis was limited to the 87 payment localities within the 50 states 
and the District of Columbia.[Footnote 39] 

We assessed the reliability of the CMS, Census Bureau, and HUD data in 
several ways. First, we performed tests of data elements. For example, 
we examined the Census Bureau data on the median earnings of certain 
professions to determine whether these data were complete. Second, we 
reviewed existing information about the data elements. For example, we 
compared the county-level work and practice expense GPCIs we calculated 
to less-recent county-level work and practice expense GPCIs provided by 
CMS. Third, we interviewed a CMS official and a Census Bureau official 
knowledgeable about the data and reviewed documentation related to the 
data. We determined that the data used in our analyses were 
sufficiently reliable for our purposes. 

To evaluate whether alternative approaches to the Medicare payment 
localities could improve payment accuracy without imposing a 
substantial amount of additional administrative burden, we used the 
county-specific GAFs to construct five different payment locality 
configurations. We evaluated the payment accuracy of each approach, the 
extent to which each approach accurately measures variations in 
physicians' costs of providing care, based on its payment difference, 
that is, the absolute value of the county's 2005 locality GAF minus its 
county-specific GAF, divided by its county-specific GAF. Because 
improvements in payment accuracy may increase the differences in the 
GAFs of adjacent payment localities, which could potentially create 
beneficiary access problems, we examined the differences between the 
GAFs of adjacent payment localities. We calculated adjacent-locality 
GAF differences as the absolute value of the difference in locality 
GAFs between all unique, contiguous, county pairs. We weighted the 
average adjacent-locality GAF difference by the sum of the RVUs of the 
contiguous counties. We evaluated the administrative burden of each 
approach based on the number of payment localities that it generated as 
well as interviews with CMS officials, Medicare carrier 
representatives, and physicians. 

Although many alternatives exist, in this report we present five 
possible approaches for constructing the payment localities. Three of 
our approaches are designed to balance payment accuracy with 
administrative burden. We also present two approaches that are useful 
for comparison because they illustrate the tradeoffs between payment 
accuracy and administrative burden. 

Of the three approaches that balance payment accuracy with 
administrative burden, two are based on counties, the smallest 
geographic unit for which GAFs can be constructed from the data sources 
available, and one is based on MSAs. There are two important general 
distinctions between our two county-based approaches and our MSA-based 
approach. First, under the county-based approaches, it is possible for 
adjacent counties in an MSA to belong to different payment localities. 
In addition, as CMS has done in the past, our county-based approaches 
create payment localities within a state: no payment locality crosses 
state lines.[Footnote 40] In contrast, under our MSA-based approach, in 
order to keep MSAs intact, all the counties in an MSA belong to the 
same payment locality and wherever an MSA crosses state lines, its 
payment locality crosses state lines as well.[Footnote 41] 

Our three approaches that balance payment accuracy with administrative 
burden use two distinct methodologies: the iterative methodology and 
the range methodology. The iterative methodology creates single-county 
or single-MSA payment localities for the highest-cost areas and "Rest- 
of" localities for the remaining areas. Specifically, the county-based 
approach creates one payment locality for the moderate-and low-cost 
counties in each state, which we refer to as the "Rest-of-State" 
payment localities. The MSA-based approach creates a single payment 
locality that combines moderate-cost MSAs, low-cost MSAs, and non-MSA 
areas from many different states, which we refer to as the "Rest-of- 
Nation" payment locality. The range methodology creates a payment 
locality for each group of similar-cost counties within a state. 
Generally, under this methodology, moderate-and low-cost counties 
within a state are assigned to different payment localities.[Footnote 
42] For each of these approaches, we used a 5-percent threshold because 
that is what CMS used for its 1997 consolidation methodology. However, 
a different percentage threshold may also be feasible.[Footnote 43] 

Of the two approaches that illustrate the tradeoffs between payment 
accuracy and administrative burden, under the statewide approach, each 
state has one statewide payment locality. This approach minimizes 
administrative burden, but maximizes large payment differences. In 
contrast, under the county-based unique GAF approach, each group of 
counties in a state with a unique county-specific GAF is a distinct 
payment locality. This approach minimizes large payment differences, 
but maximizes administrative burden. 

We conducted our work from June 2006 through May 2007 in accordance 
with generally accepted government auditing standards. 

[End of section] 

Appendix II: Information on Configuration of the Current Medicare 
Physician Payment Localities and the Alternative Approaches: 

Table 2: Medicare Physician Payment Localities, by State: 

State: Alabama; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 67; 
Locality geographic adjustment factor (GAF)[B]: 0.918; 
Average payment difference in percentage points[C]: 2.38. 

State: Alaska; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 27; 
Locality geographic adjustment factor (GAF)[B]: 1.081; 
Average payment difference in percentage points[C]: 1.34. 

State: Arizona; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 15; 
Locality geographic adjustment factor (GAF)[B]: 0.991; 
Average payment difference in percentage points[C]: 1.99. 

State: Arkansas; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 75; 
Locality geographic adjustment factor (GAF)[B]: 0.885; 
Average payment difference in percentage points[C]: 2.73. 

State: California; 
Locality number[A]: 1; 
Counties in locality: San Francisco; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 1.239; 
Average payment difference in percentage points[C]: 2.03. 

State: California; 
Locality number[A]: 2; 
Counties in locality: San Mateo; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 1.230; 
Average payment difference in percentage points[C]: 1.03. 

State: California; 
Locality number[A]: 3; 
Counties in locality: Santa Clara; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 1.224; 
Average payment difference in percentage points[C]: 4.21. 

State: California; 
Locality number[A]: 4; 
Counties in locality: Alameda, Contra Costa; 
Number of counties in locality: 2; 
Locality geographic adjustment factor (GAF)[B]: 1.144; 
Average payment difference in percentage points[C]: 0.24. 

State: California; 
Locality number[A]: 5; 
Counties in locality: Marin, Napa, Solano; 
Number of counties in locality: 3; 
Locality geographic adjustment factor (GAF)[B]: 1.128; 
Average payment difference in percentage points[C]: 4.44. 

State: California; 
Locality number[A]: 6; 
Counties in locality: Orange; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 1.109; 
Average payment difference in percentage points[C]: 3.23. 

State: California; 
Locality number[A]: 7; 
Counties in locality: Los Angeles; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 1.088; 
Average payment difference in percentage points[C]: 2.39. 

State: California; 
Locality number[A]: 8; 
Counties in locality: Ventura; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 1.072; 
Average payment difference in percentage points[C]: 4.28. 

State: California; 
Locality number[A]: 9; 
Counties in locality: Rest of California; 
Number of counties in locality: 47; 
Locality geographic adjustment factor (GAF)[B]: 1.012; 
Average payment difference in percentage points[C]: 3.73. 

State: Colorado; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 64; 
Locality geographic adjustment factor (GAF)[B]: 0.986; 
Average payment difference in percentage points[C]: 3.54. 

State: Connecticut; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 8; 
Locality geographic adjustment factor (GAF)[B]: 1.091; 
Average payment difference in percentage points[C]: 2.19. 

State: Delaware; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 3; 
Locality geographic adjustment factor (GAF)[B]: 1.016; 
Average payment difference in percentage points[C]: 4.25. 

State: District of Columbia; 
Locality number[A]: 1; 
Counties in locality: District of Columbia; 
Alexandria City, Arlington, Fairfax, Fairfax City, Falls Church City in 
Virginia; 
Montgomery, Prince George's in Maryland; 
Number of counties in locality: 8; 
Locality geographic adjustment factor (GAF)[B]: 1.114; 
Average payment difference in percentage points[C]: 1.54. 

State: Florida; 
Locality number[A]: 1; 
Counties in locality: Miami- Dade, Monroe; 
Number of counties in locality: 2; 
Locality geographic adjustment factor (GAF)[B]: 1.075; 
Average payment difference in percentage points[C]: 0.43. 

State: Florida; 
Locality number[A]: 2; 
Counties in locality: Broward, Collier, Indian River, Lee, Martin, Palm 
Beach, St. Lucie; 
Number of counties in locality: 7; 
Locality geographic adjustment factor (GAF)[B]: 1.024; 
Average payment difference in percentage points[C]: 2.94. 

State: Florida; 
Locality number[A]: 3; 
Counties in locality: Rest of Florida; 
Number of counties in locality: 58; 
Locality geographic adjustment factor (GAF)[B]: 0.971; 
Average payment difference in percentage points[C]: 2.24. 

State: Georgia; 
Locality number[A]: 1; 
Counties in locality: Butts, Cherokee, Clayton, Cobb, DeKalb, Douglas, 
Fayette, Forsyth, Fulton, Gwinnett, Henry, Newton, Paulding, Rockdale, 
Walton; 
Number of counties in locality: 15; 
Locality geographic adjustment factor (GAF)[B]: 1.036; 
Average payment difference in percentage points[C]: 2.10. 

State: Georgia; 
Locality number[A]: 2; 
Counties in locality: Rest of Georgia; 
Number of counties in locality: 144; 
Locality geographic adjustment factor (GAF)[B]: 0.934; 
Average payment difference in percentage points[C]: 2.17. 

State: Hawaii; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 5; 
Locality geographic adjustment factor (GAF)[B]: 1.045; 
Average payment difference in percentage points[C]: 3.60. 

State: Idaho; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 44; 
Locality geographic adjustment factor (GAF)[B]: 0.905; 
Average payment difference in percentage points[C]: 2.26. 

State: Illinois; 
Locality number[A]: 1; 
Counties in locality: Cook; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 1.096; 
Average payment difference in percentage points[C]: 0.11. 

State: Illinois; 
Locality number[A]: 2; 
Counties in locality: DuPage, Kane, Lake, Will; 
Number of counties in locality: 4; 
Locality geographic adjustment factor (GAF)[B]: 1.072; 
Average payment difference in percentage points[C]: 1.38. 

State: Illinois; 
Locality number[A]: 3; 
Counties in locality: Bond, Calhoun, Clinton, Jersey, Macoupin, 
Madison, Monroe, Montgomery, Randolph, St. Clair, Washington; 
Number of counties in locality: 11; 
Locality geographic adjustment factor (GAF)[B]: 0.993; 
Average payment difference in percentage points[C]: 1.63. 

State: Illinois; 
Locality number[A]: 4; 
Counties in locality: Rest of Illinois; 
Number of counties in locality: 86; 
Locality geographic adjustment factor (GAF)[B]: 0.939; 
Average payment difference in percentage points[C]: 2.86. 

State: Indiana; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 92; 
Locality geographic adjustment factor (GAF)[B]: 0.932; 
Average payment difference in percentage points[C]: 2.57. 

State: Iowa; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 99; 
Locality geographic adjustment factor (GAF)[B]: 0.909; 
Average payment difference in percentage points[C]: 2.92. 

State: Kansas; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 105; 
Locality geographic adjustment factor (GAF)[B]: 0.922; 
Average payment difference in percentage points[C]: 3.42. 

State: Kentucky; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 120; 
Locality geographic adjustment factor (GAF)[B]: 0.918; 
Average payment difference in percentage points[C]: 2.72. 

State: Louisiana; 
Locality number[A]: 1; 
Counties in locality: Jefferson, Orleans, Plaquemines, St. Bernard; 
Number of counties in locality: 4; 
Locality geographic adjustment factor (GAF)[B]: 0.979; 
Average payment difference in percentage points[C]: 3.85. 

State: Louisiana; 
Locality number[A]: 2; 
Counties in locality: Rest of Louisiana; 
Number of counties in locality: 60; 
Locality geographic adjustment factor (GAF)[B]: 0.924; 
Average payment difference in percentage points[C]: 2.61. 

State: Maine; 
Locality number[A]: 1; 
Counties in locality: Cumberland, York; 
Number of counties in locality: 2; 
Locality geographic adjustment factor (GAF)[B]: 0.978; 
Average payment difference in percentage points[C]: 2.07. 

State: Maine; 
Locality number[A]: 2; 
Counties in locality: Rest of Maine; 
Number of counties in locality: 14; 
Locality geographic adjustment factor (GAF)[B]: 0.921; 
Average payment difference in percentage points[C]: 0.68. 

State: Maryland; 
Locality number[A]: 1; 
Counties in locality: Anne Arundel, Baltimore, Baltimore City, Carroll, 
Harford, Howard; 
Number of counties in locality: 6; 
Locality geographic adjustment factor (GAF)[B]: 1.033; 
Average payment difference in percentage points[C]: 1.61. 

State: Maryland; 
Locality number[A]: 2; 
Counties in locality: Rest of Maryland, except Montgomery and Prince 
George's counties; 
Number of counties in locality: 16; 
Locality geographic adjustment factor (GAF)[B]: 0.974; 
Average payment difference in percentage points[C]: 4.63. 

State: Massachusetts; 
Locality number[A]: 1; 
Counties in locality: Middlesex, Norfolk, Suffolk; 
Number of counties in locality: 3; 
Locality geographic adjustment factor (GAF)[B]: 1.136; 
Average payment difference in percentage points[C]: 0.84. 

State: Massachusetts; 
Locality number[A]: 2; 
Counties in locality: Rest of Massachusetts; 
Number of counties in locality: 11; 
Locality geographic adjustment factor (GAF)[B]: 1.049; 
Average payment difference in percentage points[C]: 3.28. 

State: Michigan; 
Locality number[A]: 1; 
Counties in locality: Macomb, Oakland, Washtenaw, Wayne; 
Number of counties in locality: 4; 
Locality geographic adjustment factor (GAF)[B]: 1.109; 
Average payment difference in percentage points[C]: 0.22. 

State: Michigan; 
Locality number[A]: 2; 
Counties in locality: Rest of Michigan; 
Number of counties in locality: 79; 
Locality geographic adjustment factor (GAF)[B]: 0.987; 
Average payment difference in percentage points[C]: 2.00. 

State: Minnesota; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 87; 
Locality geographic adjustment factor (GAF)[B]: 0.968; 
Average payment difference in percentage points[C]: 5.13. 

State: Mississippi; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 82; 
Locality geographic adjustment factor (GAF)[B]: 0.897; 
Average payment difference in percentage points[C]: 2.53. 

State: Missouri; 
Locality number[A]: 1; 
Counties in locality: Clay, Jackson, Platte; 
Number of counties in locality: 3; 
Locality geographic adjustment factor (GAF)[B]: 0.979; 
Average payment difference in percentage points[C]: 1.16. 

State: Missouri; 
Locality number[A]: 2; 
Counties in locality: Jefferson, St. Charles, St. Louis, St. Louis 
City; 
Number of counties in locality: 4; 
Locality geographic adjustment factor (GAF)[B]: 0.971; 
Average payment difference in percentage points[C]: State: 0.78. 

State: Missouri; 
Locality number[A]: 3; 
Counties in locality: Rest of Missouri; 
Number of counties in locality: 108; 
Locality geographic adjustment factor (GAF)[B]: 0.887; 
Average payment difference in percentage points[C]: 2.03. 

State: Montana; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 56; 
Locality geographic adjustment factor (GAF)[B]: 0.909; 
Average payment difference in percentage points[C]: 0.83. 

State: Nebraska; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 93; 
Locality geographic adjustment factor (GAF)[B]: 0.900; 
Average payment difference in percentage points[C]: 3.65. 

State: Nevada; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 17; 
Locality geographic adjustment factor (GAF)[B]: 1.023; 
Average payment difference in percentage points[C]: 0.93. 

State: New Hampshire; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 10; 
Locality geographic adjustment factor (GAF)[B]: 1.002; 
Average payment difference in percentage points[C]: 3.06. 

State: New Jersey; 
Locality number[A]: 1; 
Counties in locality: Bergen, Essex, Hudson, Hunterdon, Middlesex, 
Morris, Passaic, Somerset, Sussex, Union, Warren; 
Number of counties in locality: 11; 
Locality geographic adjustment factor (GAF)[B]: 1.120; 
Average payment difference in percentage points[C]: 0.93. 

State: New Jersey; 
Locality number[A]: 2; 
Counties in locality: Rest of New Jersey; 
Number of counties in locality: 10; 
Locality geographic adjustment factor (GAF)[B]: 1.068; 
Average payment difference in percentage points[C]: 2.54. 

State: New Mexico; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 33; 
Locality geographic adjustment factor (GAF)[B]: 0.935; 
Average payment difference in percentage points[C]: 3.09. 

State: New York; 
Locality number[A]: 1; 
Counties in locality: New York; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 1.203; 
Average payment difference in percentage points[C]: 1.68. 

State: New York; 
Locality number[A]: 2; 
Counties in locality: Bronx, Kings, Nassau, Richmond, Rockland, 
Suffolk, Westchester; 
Number of counties in locality: 7; 
Locality geographic adjustment factor (GAF)[B]: 1.178; 
Average payment difference in percentage points[C]: 1.91. 

State: New York; 
Locality number[A]: 3; 
Counties in locality: Queens; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 1.151; 
Average payment difference in percentage points[C]: 0.26. 

State: New York; 
Locality number[A]: 4; 
Counties in locality: Columbia, Delaware, Dutchess, Greene, Orange, 
Putnam, Sullivan, Ulster; 
Number of counties in locality: 8; 
Locality geographic adjustment factor (GAF)[B]: 1.046; 
Average payment difference in percentage points[C]: 4.29. 

State: New York; 
Locality number[A]: 5; 
Counties in locality: Rest of New York; 
Number of counties in locality: 45; 
Locality geographic adjustment factor (GAF)[B]: 0.956; 
Average payment difference in percentage points[C]: 1.89. 

State: North Carolina; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 100; 
Locality geographic adjustment factor (GAF)[B]: 0.938; 
Average payment difference in percentage points[C]: 2.91. 

State: North Dakota; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 53; 
Locality geographic adjustment factor (GAF)[B]: 0.901; 
Average payment difference in percentage points[C]: 1.68. 

State: Ohio; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 88; 
Locality geographic adjustment factor (GAF)[B]: 0.967; 
Average payment difference in percentage points[C]: 2.81. 

State: Oklahoma; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 77; 
Locality geographic adjustment factor (GAF)[B]: 0.899; 
Average payment difference in percentage points[C]: 2.47. 

State: Oregon; 
Locality number[A]: 1; 
Counties in locality: Clackamas, Multnomah, Washington; 
Number of counties in locality: 3; 
Locality geographic adjustment factor (GAF)[B]: 1.001; 
Average payment difference in percentage points[C]: 0.66. 

State: Oregon; 
Locality number[A]: 2; 
Counties in locality: Rest of Oregon; 
Number of counties in locality: 33; 
Locality geographic adjustment factor (GAF)[B]: 0.929; 
Average payment difference in percentage points[C]: 1.27. 

State: Pennsylvania; 
Locality number[A]: 1; 
Counties in locality: Bucks, Chester, Delaware, Montgomery, 
Philadelphia; 
Number of counties in locality: 5; 
Locality geographic adjustment factor (GAF)[B]: 1.069; 
Average payment difference in percentage points[C]: 0.43. 

State: Pennsylvania; 
Locality number[A]: 2; 
Counties in locality: Rest of Pennsylvania; 
Number of counties in locality: 62; 
Locality geographic adjustment factor (GAF)[B]: 0.951; 
Average payment difference in percentage points[C]: 2.63. 

State: Rhode Island; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 5; 
Locality geographic adjustment factor (GAF)[B]: 1.025; 
Average payment difference in percentage points[C]: 2.63. 

State: South Carolina; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 46; 
Locality geographic adjustment factor (GAF)[B]: 0.919; 
Average payment difference in percentage points[C]: 1.61. 

State: South Dakota; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 66; 
Locality geographic adjustment factor (GAF)[B]: 0.890; 
Average payment difference in percentage points[C]: 2.81. 

State: Tennessee; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 95; 
Locality geographic adjustment factor (GAF)[B]: 0.925; 
Average payment difference in percentage points[C]: 2.73. 

State: Texas; 
Locality number[A]: 1; 
Counties in locality: Dallas; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 1.035; 
Average payment difference in percentage points[C]: 2.11. 

State: Texas; 
Locality number[A]: 2; 
Counties in locality: Harris; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 1.026; 
Average payment difference in percentage points[C]: 0.04. 

State: Texas; 
Locality number[A]: 3; 
Counties in locality: Travis; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 1.003; 
Average payment difference in percentage points[C]: 0.17. 

State: Texas; 
Locality number[A]: 4; 
Counties in locality: Brazoria; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 1.002; 
Average payment difference in percentage points[C]: State: 0.96. 

State: Texas; 
Locality number[A]: 5; 
Counties in locality: Tarrant; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 0.992; 
Average payment difference in percentage points[C]: 0.07. 

State: Texas; 
Locality number[A]: 6; 
Counties in locality: Galveston; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 0.989; 
Average payment difference in percentage points[C]: 1.12. 

State: Texas; 
Locality number[A]: 7; 
Counties in locality: Jefferson;
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 0.951; 
Average payment difference in percentage points[C]: 0.36. 

State: Texas; 
Locality number[A]: 8; 
Counties in locality: Rest of Texas; 
Number of counties in locality: 247; 
Locality geographic adjustment factor (GAF)[B]: 0.932; 
Average payment difference in percentage points[C]: 2.36. 

State: Utah; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 29; 
Locality geographic adjustment factor (GAF)[B]: 0.948; 
Average payment difference in percentage points[C]: 2.69. 

State: Vermont; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 14; 
Locality geographic adjustment factor (GAF)[B]: 0.956; 
Average payment difference in percentage points[C]: 3.26. 

State: Virginia; 
Locality number[A]: 1; 
Counties in locality: Statewide, except Alexandria City, Arlington, 
Fairfax, Fairfax City, Falls Church City; 
Number of counties in locality: 130; 
Locality geographic adjustment factor (GAF)[B]: 0.948; 
Average payment difference in percentage points[C]: 3.72. 

State: Washington; 
Locality number[A]: 1; 
Counties in locality: King; 
Number of counties in locality: 1; 
Locality geographic adjustment factor (GAF)[B]: 1.049; 
Average payment difference in percentage points[C]: 0.34. 

State: Washington; 
Locality number[A]: 2; 
Counties in locality: Rest of Washington; 
Number of counties in locality: 38; 
Locality geographic adjustment factor (GAF)[B]: 0.974; 
Average payment difference in percentage points[C]: 2.72. 

State: West Virginia; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 55; 
Locality geographic adjustment factor (GAF)[B]: 0.932; 
Average payment difference in percentage points[C]: 1.99. 

State: Wisconsin; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 72; 
Locality geographic adjustment factor (GAF)[B]: 0.950; 
Average payment difference in percentage points[C]: 2.89. 

State: Wyoming; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 23; 
Locality geographic adjustment factor (GAF)[B]: 0.922; 
Average payment difference in percentage points[C]: 1.79. 

State: Nation; 
Locality number[A]: 87; 
Counties in locality: [Empty]; 
Number of counties in locality: [Empty]; 
Locality geographic adjustment factor (GAF)[B]: [Empty]; 
Average payment difference in percentage points[C]: 2.28. 

Source: GAO analysis of 2005 Centers for Medicare & Medicaid (CMS), 
2000 Census Bureau, and fiscal year 2006 Department of Housing and 
Urban Development (HUD) data. 

Notes: Our analysis includes the 87 payment localities within the 50 
states and District of Columbia and excludes the Puerto Rico and the 
U.S. Virgin Islands payment localities. We consider independent cities, 
such as Alexandria City in Virginia, as county equivalents, because 
this is how the Census Bureau considers them. The District of Columbia 
locality consists of the District, five Virginia counties, and two 
Maryland counties. These Virginia and Maryland counties are excluded 
from the Virginia and Rest-of-Maryland localities. 

[A] The locality number is relative on a state basis. That is, locality 
1 has the highest GAF in the state, locality 2 has the second-highest 
GAF, and so on. 

[B] The locality GAF is Medicare's 2005 locality GAF without the work 
GPCI floor or Alaska adjustments. 

[C] Payment difference compares the costs physicians incur for 
providing services in different geographic areas (the county-specific 
GAF) with the geographic adjustment that Medicare applies to those 
areas (the locality GAF). We calculated payment difference as the 
absolute value of the locality GAF minus the county-specific GAF, 
divided by the county-specific GAF. In calculating the average payment 
difference, each county's payment difference was weighted by county 
relative value units (RVU). 

[End of table] 

Table 3: Physician Payment Localities Created Using the County-Based 
Iterative Alternative Approach, by State: 

State: Alabama; Locality number[A]: 1; 
Counties in locality: Statewide;
Number of counties in locality: 67; 
Locality GAF[B]: 0.921; 
Average payment difference in percentage points[C]: 2.38. 

State: Alaska; Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 27; 
Locality GAF[B]: 1.082; 
Average payment difference in percentage points[C]: 1.31. 

State: Arizona; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 15; 
Locality GAF[B]: 0.986; 
Average payment difference in percentage points[C]: 2.09. 

State: Arkansas; 
Locality number[A]: 1; 
Counties in locality: Pulaski; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.932; 
Average payment difference in percentage points[C]: 0.00. 

State: Arkansas; Locality number[A]: 2; 
Counties in locality: Rest of Arkansas; 
Number of counties in locality: 74; 
Locality GAF[B]: 0.879; 
Average payment difference in percentage points[C]: 1.56. 

State: California; 
Locality number[A]: 1; 
Counties in locality: San Mateo; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.217; 
Average payment difference in percentage points[C]: 0.00. 

State: California; 
Locality number[A]: 2; 
Counties in locality: San Francisco; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.214; 
Average payment difference in percentage points[C]: State: 0.00. 

State: California; 
Locality number[A]: 3; 
Counties in locality: Marin; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.183; 
Average payment difference in percentage points[C]: 0.00. 

State: California; 
Locality number[A]: 4; 
Counties in locality: Santa Clara; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.175; 
Average payment difference in percentage points[C]: 0.00. 

State: California; 
Locality number[A]: 5; 
Counties in locality: Contra Costa; 
Number of counties in locality: State: 1; Locality GAF[B]: State: 
1.151; Average payment difference in percentage points[C]: State: 0.00. 

State: California; 
Locality number[A]: 6; 
Counties in locality: Orange; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.146; 
Average payment difference in percentage points[C]: 0.00. 

State: California; 
Locality number[A]: 7; 
Counties in locality: Alameda; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.144; 
Average payment difference in percentage points[C]: 0.00. 

State: California; 
Locality number[A]: 8; 
Counties in locality: Ventura; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.120; 
Average payment difference in percentage points[C]: 0.00. 

State: California; 
Locality number[A]: 9; 
Counties in locality: Santa Cruz; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.119; 
Average payment difference in percentage points[C]: 0.00. 

State: California; 
Locality number[A]: 10; 
Counties in locality: Los Angeles; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.115; 
Average payment difference in percentage points[C]: 0.00. 

State: California; 
Locality number[A]: 11; 
Counties in locality: Napa; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.097; 
Average payment difference in percentage points[C]: 0.00. 

State: California; 
Locality number[A]: 12; 
Counties in locality: Sonoma; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.097; 
Average payment difference in percentage points[C]: 0.00. 

State: California; 
Locality number[A]: 13; 
Counties in locality: Monterey; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.094; 
Average payment difference in percentage points[C]: 0.00. 

State: California; 
Locality number[A]: 14; 
Counties in locality: San Benito; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.081; 
Average payment difference in percentage points[C]: 0.00. 

State: California; 
Locality number[A]: 15; 
Counties in locality: Rest of California; 
Number of counties in locality: 44; 
Locality GAF[B]: 1.018;
Average payment difference in percentage points[C]: 3.23. 

State: Colorado; 
Locality number[A]: 1; 
Counties in locality: Boulder; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.038; 
Average payment difference in percentage points[C]: 0.00. 

State: Colorado; 
Locality number[A]: 2; 
Counties in locality: Denver; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.033; 
Average payment difference in percentage points[C]: 0.00. 

State: Colorado; 
Locality number[A]: 3; 
Counties in locality: Arapahoe; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.028; 
Average payment difference in percentage points[C]: 0.00. 

State: Colorado; 
Locality number[A]: 4; 
Counties in locality: Jefferson; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.015; 
Average payment difference in percentage points[C]: 0.00. 

State: Colorado; 
Locality number[A]: 5; 
Counties in locality: Adams; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.008; 
Average payment difference in percentage points[C]: 0.00. 

State: Colorado; 
Locality number[A]: 6; 
Counties in locality: Broomfield; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.007; 
Average payment difference in percentage points[C]: 0.00. 

State: Colorado; 
Locality number[A]: 7; 
Counties in locality: Douglas; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.006; 
Average payment difference in percentage points[C]: 0.00. 

State: Colorado; 
Locality number[A]: 8; 
Counties in locality: Rest of Colorado; 
Number of counties in locality: 57; 
Locality GAF[B]: 0.957; 
Average payment difference in percentage points[C]: 1.72. 

State: Connecticut; 
Locality number[A]: 1; 
Counties in locality: Fairfield; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.149; 
Average payment difference in percentage points[C]: 0.00. 

State: Connecticut; 
Locality number[A]: 2; 
Counties in locality: Rest of Connecticut; 
Number of counties in locality: 7; 
Locality GAF[B]: 1.083; 
Average payment difference in percentage points[C]: 1.03. 

State: Delaware; 
Locality number[A]: 1; 
Counties in locality: New Castle; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.054; 
Average payment difference in percentage points[C]: 0.00. 

State: Delaware; 
Locality number[A]: 2; 
Counties in locality: Rest of Delaware; 
Number of counties in locality: 2; 
Locality GAF[B]: 0.962; 
Average payment difference in percentage points[C]: 0.63. 

State: District of Columbia; 
Locality number[A]: 1; 
Counties in locality: District of Columbia; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.162; 
Average payment difference in percentage points[C]: 0.00. 

State: Florida; 
Locality number[A]: 1; 
Counties in locality: Miami- Dade; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.073; 
Average payment difference in percentage points[C]: 0.00. 

State: Florida; 
Locality number[A]: 2; 
Counties in locality: Palm Beach; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.056; 
Average payment difference in percentage points[C]: 0.00. 

State: Florida; 
Locality number[A]: 3; 
Counties in locality: Broward; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.051; 
Average payment difference in percentage points[C]: 0.00. 

State: Florida; 
Locality number[A]: 4; 
Counties in locality: Collier; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.025; 
verage payment difference in percentage points[C]: 0.00. 

State: Florida; 
Locality number[A]: 5; 
Counties in locality: Rest of Florida; 
Number of counties in locality: 63; 
Locality GAF[B]: 0.974; 
Average payment difference in percentage points[C]: 2.04. 

State: Georgia; 
Locality number[A]: 1; 
Counties in locality: Fulton; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.028; 
Average payment difference in percentage points[C]: 0.00. 

State: Georgia; 
Locality number[A]: 2; Counties in locality: DeKalb; Number of counties 
in locality: 1; Locality GAF[B]: 1.018; Average payment difference in 
percentage points[C]: 0.00. 

State: Georgia; 
Locality number[A]: 3; 
Counties in locality: Cobb; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.012; 
Average payment difference in percentage points[C]: 0.00. 

State: Georgia; 
Locality number[A]: 4; 
Counties in locality: Gwinnett; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.010; 
Average payment difference in percentage points[C]: 0.00. 

State: Georgia; 
Locality number[A]: 5;
Counties in locality: Fayette; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.000; 
Average payment difference in percentage points[C]: 0.00. 

State: Georgia; 
Locality number[A]: 6; 
Counties in locality: Clayton; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.997; 
Average payment difference in percentage points[C]: 0.00. 

State: Georgia; 
Locality number[A]: 7; 
Counties in locality: Cherokee; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.996; 
Average payment difference in percentage points[C]: 0.00. 

State: Georgia; 
Locality number[A]: 8; 
Counties in locality: Rockdale; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.996; 
Average payment difference in percentage points[C]: 0.00. 

State: Georgia; 
Locality number[A]: 9; 
Counties in locality: Forsyth; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.995; 
Average payment difference in percentage points[C]: 0.00. 

State: Georgia; 
Locality number[A]: 10; 
Counties in locality: Bartow; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.994; 
Average payment difference in percentage points[C]: 0.00. 

State: Georgia; 
Locality number[A]: 11; 
Counties in locality: Coweta; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.986; 
Average payment difference in percentage points[C]: 0.00. 

State: Georgia; 
Locality number[A]: 12; 
Counties in locality: Henry; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.985; 
Average payment difference in percentage points[C]: 0.00. 

State: Georgia; 
Locality number[A]: 13; 
Counties in locality: Rest of Georgia; 
Number of counties in locality: 147; 
Locality GAF[B]: 0.937; 
Average payment difference in percentage points[C]: 2.14. 

State: Hawaii; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 5; 
Locality GAF[B]: 1.084; 
Average payment difference in percentage points[C]: 1.40. 

State: Idaho; 
Locality number[A]: 1; 
Counties in locality: Ada; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.949; 
Average payment difference in percentage points[C]: 0.00. 

State: Idaho; 
Locality number[A]: 2; 
Counties in locality: Rest of Idaho; 
Number of counties in locality: 43; 
Locality GAF[B]: 0.902; 
Average payment difference in percentage points[C]: 1.27. 

State: Illinois; 
Locality number[A]: 1; 
Counties in locality: Cook; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.095; 
Average payment difference in percentage points[C]: 0.00. 

State: Illinois; 
Locality number[A]: 2; 
Counties in locality: DuPage; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.087; 
Average payment difference in percentage points[C]: 0.00. 

State: Illinois; 
Locality number[A]: 3; 
Counties in locality: Lake; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.085; 
Average payment difference in percentage points[C]: 0.00. 

State: Illinois; 
Locality number[A]: 4; 
Counties in locality: Kane; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.065; 
Average payment difference in percentage points[C]: 0.00. 

State: Illinois; 
Locality number[A]: 5; 
Counties in locality: Will; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.049; 
Average payment difference in percentage points[C]: 0.00. 

State: Illinois; 
Locality number[A]: 6; 
Counties in locality: McHenry; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.037; 
Average payment difference in percentage points[C]: 0.00. 

State: Illinois; 
Locality number[A]: 7; 
Counties in locality: Grundy; 
Number of counties in locality: 1;
Locality GAF[B]: 1.022; 
Average payment difference in percentage points[C]: 0.00. 

State: Illinois; 
Locality number[A]: 8; 
Counties in locality: Kendall; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.999; 
Average payment difference in percentage points[C]: 0.00. 

State: Illinois; 
Locality number[A]: 9; 
Counties in locality: St. Clair; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.997; 
Average payment difference in percentage points[C]: 0.00. 

State: Illinois; 
Locality number[A]: 10; 
Counties in locality: Rest of Illinois; 
Number of counties in locality: 93; 
Locality GAF[B]: 0.945; 
Average payment difference in percentage points[C]: 2.51. 

State: Indiana; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 92; 
Locality GAF[B]: 0.939; 
Average payment difference in percentage points[C]: 2.47. 

State: Iowa; 
Locality number[A]: 1; 
Counties in locality: Polk; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.959; 
Average payment difference in percentage points[C]: 0.00. 

State: Iowa; 
Locality number[A]: 2; 
Counties in locality: Rest of Iowa; 
Number of counties in locality: 98; 
Locality GAF[B]: 0.904; 
Average payment difference in percentage points[C]: 2.33. 

State: Kansas; 
Locality number[A]: 1; 
Counties in locality: Linn; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.021; 
Average payment difference in percentage points[C]: 0.00. 

State: Kansas; 
Locality number[A]: 2; 
Counties in locality: Johnson; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.975; 
Average payment difference in percentage points[C]: 0.00. 

State: Kansas; 
Locality number[A]: 3; 
Counties in locality: Wyandotte; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.972; 
Average payment difference in percentage points[C]: 0.00. 

State: Kansas; 
Locality number[A]: 4; 
Counties in locality: Leavenworth; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.970; 
Average payment difference in percentage points[C]: 0.00. 

State: Kansas; 
Locality number[A]: 5; 
Counties in locality: Miami; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.961; 
Average payment difference in percentage points[C]: 0.00. 

State: Kansas; 
Locality number[A]: 6; 
Counties in locality: Sedgwick;
Number of counties in locality: 1; 
Locality GAF[B]: 0.944; 
Average payment difference in percentage points[C]: 0.00. 

State: Kansas; 
Locality number[A]: 7; 
Counties in locality: Rest of Kansas; 
Number of counties in locality: 99; 
Locality GAF[B]: 0.898; 
Average payment difference in percentage points[C]: 2.00. 

State: Kentucky; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 120; 
Locality GAF[B]: 0.923; 
Average payment difference in percentage points[C]: 2.72. 

State: Louisiana; 
Locality number[A]: 1; 
Counties in locality: St. Charles; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.058; 
Average payment difference in percentage points[C]: 0.00. 

State: Louisiana; 
Locality number[A]: 2; 
Counties in locality: Orleans; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.031; 
Average payment difference in percentage points[C]: 0.00. 

State: Louisiana; 
Locality number[A]: 3; 
Counties in locality: Plaquemines; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.026; 
Average payment difference in percentage points[C]: 0.00. 

State: Louisiana; 
Locality number[A]: 4; 
Counties in locality: West Feliciana; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.025; 
Average payment difference in percentage points[C]: 0.00. 

State: Louisiana; 
Locality number[A]: 5; 
Counties in locality: Jefferson; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.012; 
Average payment difference in percentage points[C]: 0.00. 

State: Louisiana; 
Locality number[A]: 6; 
Counties in locality: St. John the Baptist; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.010; 
Average payment difference in percentage points[C]: 0.00. 

State: Louisiana; 
Locality number[A]: 7; 
Counties in locality: St. Tammany; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.007; 
Average payment difference in percentage points[C]: 0.00. 

State: Louisiana; 
Locality number[A]: 8; 
Counties in locality: St. Bernard; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.004; 
Average payment difference in percentage points[C]: 0.00. 

State: Louisiana; 
Locality number[A]: 9; 
Counties in locality: Ascension; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.991; 
Average payment difference in percentage points[C]: 0.00. 

State: Louisiana; 
Locality number[A]: 10; 
Counties in locality: Rest of Louisiana; 
Number of counties in locality: 55; 
Locality GAF[B]: 0.930; 
Average payment difference in percentage points[C]: 2.09. 

State: Maine; 
Locality number[A]: 1; 
Counties in locality: Cumberland; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.002; 
Average payment difference in percentage points[C]: 0.00. 

State: Maine; 
Locality number[A]: 2; 
Counties in locality: York; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.968; 
Average payment difference in percentage points[C]: 0.00. 

State: Maine; 
Locality number[A]: 3; 
Counties in locality: Rest of Maine; 
Number of counties in locality: 14; 
Locality GAF[B]: 0.919; 
Average payment difference in percentage points[C]: 0.66. 

State: Maryland; 
Locality number[A]: 1; 
Counties in locality: Montgomery; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.122; 
Average payment difference in percentage points[C]: 0.00. 

State: Maryland; 
Locality number[A]: 2; 
Counties in locality: Prince George's; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.113; 
Average payment difference in percentage points[C]: 0.00. 

State: Maryland; 
Locality number[A]: 3; 
Counties in locality: Calvert; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.088; 
Average payment difference in percentage points[C]: 0.00. 

State: Maryland; 
Locality number[A]: 4; 
Counties in locality: Rest of Maryland; 
Number of counties in locality: 21; 
Locality GAF[B]: 1.029; 
Average payment difference in percentage points[C]: 3.47. 

State: Massachusetts; 
Locality number[A]: 1; 
Counties in locality: Suffolk; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.150; 
Average payment difference in percentage points[C]: 0.00. 

State: Massachusetts; 
Locality number[A]: 2; 
Counties in locality: Middlesex; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.130; 
Average payment difference in percentage points[C]: 0.00. 

State: Massachusetts; 
Locality number[A]: 3; 
Counties in locality: Norfolk; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.128; 
Average payment difference in percentage points[C]: 0.00. 

State: Massachusetts; 
Locality number[A]: 4; 
Counties in locality: Essex; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.105; 
Average payment difference in percentage points[C]: 0.00. 

State: Massachusetts; 
Locality number[A]: 5; 
Counties in locality: Plymouth; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.092; 
Average payment difference in percentage points[C]: 0.00. 

State: Massachusetts; 
Locality number[A]: 6; 
Counties in locality: Dukes, Nantucket; 
Number of counties in locality: 2; 
Locality GAF[B]: 1.088; 
Average payment difference in percentage points[C]: 0.00. 

State: Massachusetts; 
Locality number[A]: 7; 
Counties in locality: Rest of Massachusetts; 
Number of counties in locality: 7; 
Locality GAF[B]: 1.022; 
Average payment difference in percentage points[C]: 1.77. 

State: Michigan; 
Locality number[A]: 1; 
Counties in locality: Wayne; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.112; 
Average payment difference in percentage points[C]: 0.00. 

State: Michigan; 
Locality number[A]: 2; 
Counties in locality: Washtenaw; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.110; 
Average payment difference in percentage points[C]: 0.00. 

State: Michigan; 
Locality number[A]: 3; 
Counties in locality: Oakland; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.109; 
Average payment difference in percentage points[C]: 0.00. 

State: Michigan; 
Locality number[A]: 4; 
Counties in locality: Macomb; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.103; 
Average payment difference in percentage points[C]: 0.00. 

State: Michigan; 
Locality number[A]: 5; 
Counties in locality: Livingston; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.041; 
Average payment difference in percentage points[C]: 0.00. 

State: Michigan; 
Locality number[A]: 6; 
Counties in locality: Rest of Michigan; 
Number of counties in locality: 78; 
Locality GAF[B]: 0.990; 
Average payment difference in percentage points[C]: 1.90. 

State: Minnesota; 
Locality number[A]: 1; 
Counties in locality: Ramsey; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.024; 
Average payment difference in percentage points[C]: 0.00. 

State: Minnesota; 
Locality number[A]: 2; 
Counties in locality: Hennepin; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.021; 
Average payment difference in percentage points[C]: 0.00. 

State: Minnesota; 
Locality number[A]: 3; 
Counties in locality: Anoka; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.019; 
Average payment difference in percentage points[C]: 0.00. 

State: Minnesota; 
Locality number[A]: 4; 
Counties in locality: Carver; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.008; 
Average payment difference in percentage points[C]: 0.00. 

State: Minnesota; 
Locality number[A]: 5; 
Counties in locality: Scott; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.007; 
Average payment difference in percentage points[C]: 0.00. 

State: Minnesota; 
Locality number[A]: 6; 
Counties in locality: Dakota; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.006; 
Average payment difference in percentage points[C]: 0.00. 

State: Minnesota; 
Locality number[A]: 7; 
Counties in locality: Washington; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.002; 
Average payment difference in percentage points[C]: 0.00. 

State: Minnesota; 
Locality number[A]: 8; 
Counties in locality: Olmsted; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.987; 
Average payment difference in percentage points[C]: 0.00. 

State: Minnesota; 
Locality number[A]: 9; 
Counties in locality: Wright; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.972; 
Average payment difference in percentage points[C]: 0.00. 

State: Minnesota; 
Locality number[A]: 10; 
Counties in locality: Chisago; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.966; 
Average payment difference in percentage points[C]: 0.00. 

State: Minnesota; 
Locality number[A]: 11; 
Counties in locality: Sherburne; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.964; 
Average payment difference in percentage points[C]: 0.00. 

State: Minnesota; 
Locality number[A]: 12; 
Counties in locality: Isanti; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.960; 
Average payment difference in percentage points[C]: 0.00. 

State: Minnesota; 
Locality number[A]: 13; 
Counties in locality: Rest of Minnesota; 
Number of counties in locality: 75; 
Locality GAF[B]: 0.906; 
Average payment difference in percentage points[C]: 1.31. 

State: Mississippi; 
Locality number[A]: 1; 
Counties in locality: Hinds; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.953; 
Average payment difference in percentage points[C]: 0.00. 

State: Mississippi; 
Locality number[A]: 2; 
Counties in locality: DeSoto; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.944; 
Average payment difference in percentage points[C]: 0.00. 

State: Mississippi; 
Locality number[A]: 3; 
Counties in locality: Hancock; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.943; 
Average payment difference in percentage points[C]: 0.00. 

State: Mississippi; 
Locality number[A]: 4; 
Counties in locality: Madison; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.941; 
Average payment difference in percentage points[C]: 0.00. 

State: Mississippi; 
Locality number[A]: 5; 
Counties in locality: Rest of Mississippi; 
Number of counties in locality: 78; 
Locality GAF[B]: 0.895; 
Average payment difference in percentage points[C]: 1.46. 

State: Missouri; 
Locality number[A]: 1; 
Counties in locality: Jackson; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.991; Average payment difference in percentage 
points[C]: 0.00. 

State: Missouri; 
Locality number[A]: 2; 
Counties in locality: St. Louis City; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.981; 
Average payment difference in percentage points[C]: 0.00. 

State: Missouri; 
Locality number[A]: 3; 
Counties in locality: St. Louis; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.975; 
Average payment difference in percentage points[C]: 0.00. 

State: Missouri; 
Locality number[A]: 4; 
Counties in locality: Clay; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.968; 
Average payment difference in percentage points[C]: 0.00. 

State: Missouri; 
Locality number[A]: 5; 
Counties in locality: Platte; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.967; 
Average payment difference in percentage points[C]: 0.00. 

State: Missouri; 
Locality number[A]: 6; 
Counties in locality: Cass; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.959; 
Average payment difference in percentage points[C]: 0.00. 

State: Missouri; 
Locality number[A]: 7; 
Counties in locality: St. Charles; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.953; 
Average payment difference in percentage points[C]: 0.00. 

State: Missouri; 
Locality number[A]: 8; 
Counties in locality: Lafayette; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.948; 
Average payment difference in percentage points[C]: 0.00. 

State: Missouri; 
Locality number[A]: 9; 
Counties in locality: Rest of Missouri; 
Number of counties in locality: 107; 
Locality GAF[B]: 0.895; 
Average payment difference in percentage points[C]: 2.12. 

State: Montana; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 56; 
Locality GAF[B]: 0.909; 
Average payment difference in percentage points[C]: 0.84. 

State: Nebraska; 
Locality number[A]: 1; 
Counties in locality: Douglas; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.947; 
Average payment difference in percentage points[C]: 0.00. 

State: Nebraska; 
Locality number[A]: 2; 
Counties in locality: Sarpy; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.938; 
Average payment difference in percentage points[C]: 0.00. 

State: Nebraska; 
Locality number[A]: 3; 
Counties in locality: Rest of Nebraska; 
Number of counties in locality: 91; 
Locality GAF[B]: 0.893; 
Average payment difference in percentage points[C]: 2.69. 

State: Nevada; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 17; 
Locality GAF[B]: 1.031; 
Average payment difference in percentage points[C]: 0.34. 

State: New Hampshire; 
Locality number[A]: 1; 
Counties in locality: Hillsborough; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.047; 
Average payment difference in percentage points[C]: 0.00. 

State: New Hampshire; 
Locality number[A]: 2; 
Counties in locality: Rockingham; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.030; 
Average payment difference in percentage points[C]: 0.00. 

State: New Hampshire; 
Locality number[A]: 3; 
Counties in locality: Rest of New Hampshire; 
Number of counties in locality: 8; 
Locality GAF[B]: 0.979; 
Average payment difference in percentage points[C]: 0.90. 

State: New Jersey; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 21; 
Locality GAF[B]: 1.109; 
Average payment difference in percentage points[C]: 2.35. 

State: New Mexico; 
Locality number[A]: 1; 
Counties in locality: Santa Fe; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.994; 
Average payment difference in percentage points[C]: 0.00. 

State: New Mexico; 
Locality number[A]: 2; 
Counties in locality: Rest of New Mexico; 
Number of counties in locality: 32; 
Locality GAF[B]: 0.940; 
Average payment difference in percentage points[C]: 2.94. 

State: New York; 
Locality number[A]: 1; 
Counties in locality: Westchester; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.218; 
Average payment difference in percentage points[C]: 0.00. 

State: New York; 
Locality number[A]: 2; 
Counties in locality: Nassau; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.204; 
Average payment difference in percentage points[C]: 0.00. 

State: New York; 
Locality number[A]: 3; 
Counties in locality: New York; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.183; 
Average payment difference in percentage points[C]: 0.00. 

State: New York; 
Locality number[A]: 4; 
Counties in locality: Suffolk; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.182; 
Average payment difference in percentage points[C]: 0.00. 

State: New York; 
Locality number[A]: 5; 
Counties in locality: Richmond; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.156; 
Average payment difference in percentage points[C]: 0.00. 

State: New York; 
Locality number[A]: 6; 
Counties in locality: Bronx; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.156; 
Average payment difference in percentage points[C]: 0.00. 

State: New York; 
Locality number[A]: 7; 
Counties in locality: Kings; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.155; 
Average payment difference in percentage points[C]: 0.00. 

State: New York; 
Locality number[A]: 8; 
Counties in locality: Rockland; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.152; 
Average payment difference in percentage points[C]: 0.00. 

State: New York; 
Locality number[A]: 9; 
Counties in locality: Queens; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.148; 
Average payment difference in percentage points[C]: 0.00. 

State: New York; 
Locality number[A]: 10; 
Counties in locality: Putnam; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.105; 
Average payment difference in percentage points[C]: 0.00. 

State: New York; 
Locality number[A]: 11; 
Counties in locality: Dutchess; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.079; 
Average payment difference in percentage points[C]: 0.00. 

State: New York; 
Locality number[A]: 12; 
Counties in locality: Orange; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.076; 
Average payment difference in percentage points[C]: 0.00. 

State: New York; 
Locality number[A]: 13; 
Counties in locality: Ulster; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.003; 
Average payment difference in percentage points[C]: 0.00. 

State: New York; 
Locality number[A]: 14; 
Counties in locality: Rest of New York; 
Number of counties in locality: 49; 
Locality GAF[B]: 0.954; 
Average payment difference in percentage points[C]: 1.83. 

State: North Carolina; 
Locality number[A]: 1; 
Counties in locality: Durham; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.006; 
Average payment difference in percentage points[C]: 0.00. 

State: North Carolina; 
Locality number[A]: 2; 
Counties in locality: Wake; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.000; 
Average payment difference in percentage points[C]: 0.00. 

State: North Carolina; 
Locality number[A]: 3; 
Counties in locality: Rest of North Carolina; 
Number of counties in locality: 98; 
Locality GAF[B]: 0.935; 
Average payment difference in percentage points[C]: 2.43. 

State: North Dakota; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 53; 
Locality GAF[B]: 0.894; 
Average payment difference in percentage points[C]: 1.70. 

State: Ohio; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 88; 
Locality GAF[B]: 0.968; 
Average payment difference in percentage points[C]: 2.80. 

State: Oklahoma; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 77; 
Locality GAF[B]: 0.897; 
Average payment difference in percentage points[C]: 2.51. 

State: Oregon; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 36; 
Locality GAF[B]: 0.954; 
Average payment difference in percentage points[C]: 2.83. 

State: Pennsylvania; 
Locality number[A]: 1; 
Counties in locality: Philadelphia; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.073; 
Average payment difference in percentage points[C]: 0.00. 

State: Pennsylvania; 
Locality number[A]: 2; 
Counties in locality: Montgomery; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.071; 
Average payment difference in percentage points[C]: 0.00. 

State: Pennsylvania; 
Locality number[A]: 3; 
Counties in locality: Delaware; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.070; 
Average payment difference in percentage points[C]: 0.00. 

State: Pennsylvania; 
Locality number[A]: 4; 
Counties in locality: Chester; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.069; 
Average payment difference in percentage points[C]: 0.00. 

State: Pennsylvania; 
Locality number[A]: 5; 
Counties in locality: Bucks; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.050; 
Average payment difference in percentage points[C]: 0.00. 

State: Pennsylvania; 
Locality number[A]: 6; 
Counties in locality: Lehigh; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.010; 
Average payment difference in percentage points[C]: 0.00. 

State: Pennsylvania; 
Locality number[A]: 7; 
Counties in locality: Rest of Pennsylvania; 
Number of counties in locality: 61; 
Locality GAF[B]: 0.955; 
Average payment difference in percentage points[C]: 2.39. 

State: Rhode Island; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 5; 
Locality GAF[B]: 1.053; 
Average payment difference in percentage points[C]: 0.38. 

State: South Carolina; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 46; 
Locality GAF[B]: 0.925; 
Average payment difference in percentage points[C]: 1.53. 

State: South Dakota; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 66; 
Locality GAF[B]: 0.889; 
Average payment difference in percentage points[C]: 2.82. 

State: Tennessee; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 95; 
Locality GAF[B]: 0.930; 
Average payment difference in percentage points[C]: 2.71. 

State: Texas; 
Locality number[A]: 1; 
Counties in locality: Harris; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.026; 
Average payment difference in percentage points[C]: 0.00. 

State: Texas; 
Locality number[A]: 2; 
Counties in locality: Collin; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.015; 
Average payment difference in percentage points[C]: 0.00. 

State: Texas; 
Locality number[A]: 3; 
Counties in locality: Dallas; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.014; 
Average payment difference in percentage points[C]: 0.00. 

State: Texas; 
Locality number[A]: 4; 
Counties in locality: Chambers; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.009; 
Average payment difference in percentage points[C]: 0.00. 

State: Texas; 
Locality number[A]: 5; 
Counties in locality: Travis; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.005; 
Average payment difference in percentage points[C]: 0.00. 

State: Texas; 
Locality number[A]: 6; 
Counties in locality: Rockwall; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.004; 
Average payment difference in percentage points[C]: 0.00. 

State: Texas; 
Locality number[A]: 7; 
Counties in locality: Fort Bend; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.004; 
Average payment difference in percentage points[C]: 0.00. 

State: Texas; 
Locality number[A]: 8; 
Counties in locality: Galveston; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.000; 
Average payment difference in percentage points[C]: 0.00. 

State: Texas; 
Locality number[A]: 9; 
Counties in locality: Tarrant; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.993; 
Average payment difference in percentage points[C]: 0.00. 

State: Texas; 
Locality number[A]: 10; 
Counties in locality: Brazoria; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.992; 
Average payment difference in percentage points[C]: 0.00. 

State: Texas; 
Locality number[A]: 11; 
Counties in locality: Williamson; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.991;
Average payment difference in percentage points[C]: 0.00. 

State: Texas; 
Locality number[A]: 12; 
Counties in locality: Denton; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.985; 
Average payment difference in percentage points[C]: 0.00. 

State: Texas; 
Locality number[A]: 13; 
Counties in locality: Montgomery; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.983; 
Average payment difference in percentage points[C]: 0.00. 

State: Texas; 
Locality number[A]: 14; 
Counties in locality: Rest of Texas; 
Number of counties in locality: 241; 
Locality GAF[B]: 0.935; 
Average payment difference in percentage points[C]: 2.01. 

State: Utah; 
Locality number[A]: 1; 
Counties in locality: Summit; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.985; 
Average payment difference in percentage points[C]: 0.00. 

State: Utah; 
Locality number[A]: 2; 
Counties in locality: Salt Lake; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.965; 
Average payment difference in percentage points[C]: 0.00. 

State: Utah; 
Locality number[A]: 3; 
Counties in locality: Rest of Utah; 
Number of counties in locality: 27; 
Locality GAF[B]: 0.917; 
Average payment difference in percentage points[C]: 1.67. 

State: Vermont; 
Locality number[A]: 1; 
Counties in locality: Chittenden; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.997; 
Average payment difference in percentage points[C]: 0.00. 

State: Vermont; 
Locality number[A]: 2; 
Counties in locality: Franklin; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.984; 
Average payment difference in percentage points[C]: 0.00. 

State: Vermont; 
Locality number[A]: 3; 
Counties in locality: Addison, Bennington, Caledonia, Essex, LaMoille, 
Orleans, Orange, Rutland, Washington, Windham, Windsor; 
Number of counties in locality: 11; 
Locality GAF[B]: 0.932; 
Average payment difference in percentage points[C]: 0.00. 

State: Vermont; 
Locality number[A]: 4; 
Counties in locality: Rest of Vermont; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.826; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 1; 
Counties in locality: Arlington; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.142; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 2; 
Counties in locality: Fairfax; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.130; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 3; 
Counties in locality: Alexandria City; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.126; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 4; 
Counties in locality: Fairfax City; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.121; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 5; 
Counties in locality: Falls Church City; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.113; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 6; 
Counties in locality: Manassas City; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.085; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 7; 
Counties in locality: Prince William; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.082; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 8; 
Counties in locality: Loudoun; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.079; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 9; 
Counties in locality: Fauquier; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.052; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 10; 
Counties in locality: Fredericksburg City; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.046; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 11; 
Counties in locality: Clarke; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.038; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 12; 
Counties in locality: Stafford; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.037; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 13; 
Counties in locality: Spotsylvania; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.012; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 14; 
Counties in locality: New Kent; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.997; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 15; 
Counties in locality: Richmond City; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.995; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 16; 
Counties in locality: Henrico; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.992; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 17; 
Counties in locality: Hopewell City; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.992; 
Average payment difference in percentage points[C]: 0.00. 

State: Virginia; 
Locality number[A]: 18; 
Counties in locality: Rest of Virginia; 
Number of counties in locality: 118; 
Locality GAF[B]: 0.941; 
Average payment difference in percentage points[C]: 2.98. 

State: Washington; 
Locality number[A]: 1; 
Counties in locality: King; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.045; 
Average payment difference in percentage points[C]: 0.00. 

State: Washington; 
Locality number[A]: 2; 
Counties in locality: Rest of Washington; 
Number of counties in locality: 38; 
Locality GAF[B]: 0.982; 
Average payment difference in percentage points[C]: 2.75. 

State: West Virginia; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 55; 
Locality GAF[B]: 0.937; 
Average payment difference in percentage points[C]: 1.95. 

State: Wisconsin; 
Locality number[A]: 1; C
counties in locality: Statewide; 
Number of counties in locality: 72; 
Locality GAF[B]: 0.959; 
Average payment difference in percentage points[C]: 2.91. 

State: Wyoming; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 23; 
Locality GAF[B]: 0.912; 
Average payment difference in percentage points[C]: 1.23. 

State: Nation; 
Locality number[A]: 219; 
Counties in locality: [Empty]; 
Number of counties in locality: [Empty]; 
Locality GAF[B]: [Empty]; 
Average payment difference in percentage points[C]: 1.51. 

Source: GAO analysis of 2005 CMS, 2000 Census Bureau, and fiscal year 
2006 HUD data. 

Notes: Our analysis includes the 50 states and District of Columbia and 
excludes Puerto Rico and the U.S. Virgin Islands. We consider 
independent cities, such as Alexandria City in Virginia, as county 
equivalents, because this is how the Census Bureau considers them. The 
county-based iterative approach creates a single-county payment 
locality for any county whose GAF exceeds the weighted average GAF of 
all counties in the state with lower GAFs by 5 percent or more. The 
remaining counties in each state are grouped into a "Rest-of-State" 
locality. 

[A] The locality number is relative on a state basis. That is, locality 
1 has the highest GAF in the state, locality 2 has the second-highest 
GAF, and so on. 

[B] We calculated the locality GAF as the average county-specific GAF 
of counties in the locality, weighted by county RVUs. Our formula for 
calculating the locality GAF is the same as that used by CMS. 

[C] Payment difference compares the costs physicians incur for 
providing services in different geographic areas (the county-specific 
GAF) with the geographic adjustment that Medicare applies to those 
areas (the locality GAF). We calculated payment difference as the 
absolute value of the locality GAF minus the county-specific GAF, 
divided by the county-specific GAF. In calculating the average payment 
difference, each county's payment difference was weighted by county 
RVUs. 

[End of table] 

Table 4: Physician Payment Localities Created Using the County-Based 
GAF Ranges Alternative Approach, by State: 

State: Alabama; 
Locality number[A]: 1; 
Counties in locality: Autauga, Jefferson, Limestone, Madison, Shelby; 
Number of counties in locality: 5; 
Locality GAF[B]: 0.948; 
Average payment difference in percentage points[C]: 0.33. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Alabama; 
Number of counties in locality:  : 62; 
Locality GAF[B]:  : 0.908; 
Average payment difference in percentage points[C]:  : 1.71. 

State: Alaska; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 27; 
Locality GAF[B]: 1.082; 
Average payment difference in percentage points[C]: 1.31. 

State: Arizona; 
Locality number[A]: 1; 
Counties in locality: Coconino, Maricopa; 
Number of counties in locality: 2; 
Locality GAF[B]: 1.003; 
Average payment difference in percentage points[C]: 0.01. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Arizona; 
Number of counties in locality:  : 13; 
Locality GAF[B]:  : 0.960; 
Average payment difference in percentage points[C]:  : 1.24. 

State: Arkansas; 
Locality number[A]: 1; 
Counties in locality: Crittenden, Jefferson, Miller, Pulaski; 
Number of counties in locality: 4; 
Locality GAF[B]: 0.930; 
Average payment difference in percentage points[C]: 0.41. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Arkansas; 
Number of counties in locality:  : 71; 
Locality GAF[B]:  : 0.876; 
Average payment difference in percentage points[C]:  : 1.32. 

State: California; 
Locality number[A]: 1; 
Counties in locality: Marin, San Francisco, San Mateo; 
Number of counties in locality: 3; 
Locality GAF[B]: 1.211; 
Average payment difference in percentage points[C]: 0.67. 

Locality number[A]: State: 2; 
Counties in locality: State: Alameda, Contra Costa, Orange, Santa 
Clara, Santa Cruz, Ventura; 
Number of counties in locality: State: 6; 
Locality GAF[B]: State: 1.147; 
Average payment difference in percentage points[C]: State: 0.89. 

Locality number[A]: State: 3; 
Counties in locality: State: Los Angeles, Monterey, Napa, Sacramento, 
San Benito, Solano, Sonoma; 
Number of counties in locality: State: 7; 
Locality GAF[B]: State: 1.109; 
Average payment difference in percentage points[C]: State: 0.85. 

Locality number[A]: State: 4; 
Counties in locality: State: El Dorado, Placer, Riverside, San 
Bernardino, San Diego, San Joaquin, San Luis Obispo, Santa Barbara, 
Yolo; 
Number of counties in locality: State: 9; 
Locality GAF[B]: State: 1.040; 
Average payment difference in percentage points[C]: State: 1.35. 

Locality number[A]:  : 5; 
Counties in locality:  : Rest of California; 
Number of counties in locality:  : 33; 
Locality GAF[B]:  : 0.973; 
Average payment difference in percentage points[C]:  : 1.19. 

State: Colorado; 
Locality number[A]: 1; 
Counties in locality: Adams, Arapahoe, Boulder, Broomfield, Denver, 
Douglas, Jefferson; 
Number of counties in locality: 7; 
Locality GAF[B]: 1.027; 
Average payment difference in percentage points[C]: 0.73. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Colorado; 
Number of counties in locality:  : 57; 
Locality GAF[B]:  : 0.957; 
Average payment difference in percentage points[C]:  : 1.72. 

State: Connecticut; 
Locality number[A]: 1; 
Counties in locality: Fairfield; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.149; 
Average payment difference in percentage points[C]: 0.00. 

Locality number[A]: State: 2; 
Counties in locality: State: Hartford, Middlesex; 
Number of counties in locality: State: 2; 
Locality GAF[B]: State: 1.095; 
Average payment difference in percentage points[C]: State: 0.03. 

Locality number[A]:  : 3; 
Counties in locality:  : Rest of Connecticut; 
Number of counties in locality:  : 5; 
Locality GAF[B]:  : 1.073; 
Average payment difference in percentage points[C]:  : 1.32. 

State: Delaware; 
Locality number[A]: 1; 
Counties in locality: New Castle; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.054; 
Average payment difference in percentage points[C]: 0.00. 

Locality number[A]:   of Columbia: 2; 
Counties in locality:   of Columbia: Rest of Delaware; 
Number of counties in locality:   of Columbia: 2; 
Locality GAF[B]:   of Columbia: 0.962; 
Average payment difference in percentage points[C]:   of Columbia: 
0.63. 

State: District of Columbia; 
Locality number[A]: 1; 
Counties in locality: District of Columbia; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.162; 
Average payment difference in percentage points[C]: 0.00. 

State: Florida; 
Locality number[A]: 1; 
Counties in locality: Broward, Miami-Dade, Palm Beach; 
Number of counties in locality: 3; 
Locality GAF[B]: 1.061; 
Average payment difference in percentage points[C]: 0.85. 

Locality number[A]: State: 2; 
Counties in locality: State: Collier, Duval, Hillsborough, Jefferson, 
Lee, Manatee, Martin, Nassau, Orange, Pinellas, St. Johns, Sarasota, 
Seminole; 
Number of counties in locality: State: 13; 
Locality GAF[B]: State: 0.995; 
Average payment difference in percentage points[C]: State: 0.69. 

Locality number[A]:  : 3; 
Counties in locality:  : Rest of Florida; 
Number of counties in locality:  : 51; 
Locality GAF[B]:  : 0.954; 
Average payment difference in percentage points[C]:  : 1.61. 

State: Georgia; 
Locality number[A]: 1; 
Counties in locality: Cobb, DeKalb, Fulton, Gwinnett; 
Number of counties in locality: 4; Locality GAF[B]: 1.020; 
Average payment difference in percentage points[C]: 0.65. 

Locality number[A]: State: 2; 
Counties in locality: State: Barrow, Bartow, Burke, Carroll, Chatham, 
Cherokee, Clayton, Coweta, Douglas, Fayette, Forsyth, Hall, Henry, 
Houston, Newton, Paulding, Pickens, Rockdale, Spalding, Walton; 
Number of counties in locality: State: 20; 
Locality GAF[B]: State: 0.978; 
Average payment difference in percentage points[C]: State: 1.17. 

Locality number[A]:  : 3; 
Counties in locality:  : Rest of Georgia; 
Number of counties in locality:  : 135; 
Locality GAF[B]:  : 0.927; 
Average payment difference in percentage points[C]:  : 1.66. 

State: Hawaii; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 5; 
Locality GAF[B]: 1.084; 
Average payment difference in percentage points[C]: 1.40. 

State: Idaho; 
Locality number[A]: 1; 
Counties in locality: Ada; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.949; 
Average payment difference in percentage points[C]: 0.00. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Idaho; 
Number of counties in locality:  : 43; 
Locality GAF[B]:  : 0.902; 
Average payment difference in percentage points[C]:  : 1.27. 

State: Illinois; 
Locality number[A]: 1; 
Counties in locality: Cook, DuPage, Lake; 
Number of counties in locality: 3; 
Locality GAF[B]: 1.093; 
Average payment difference in percentage points[C]: 0.28. 

Locality number[A]: State: 2; 
Counties in locality: State: Grundy, Kane, McHenry, Will; 
Number of counties in locality: State: 4; 
Locality GAF[B]: State: 1.051; 
Average payment difference in percentage points[C]: State: 0.90. 

Locality number[A]: State: 3; 
Counties in locality: State: DeKalb, Kankakee, Kendall, Madison, 
McLean, Peoria, Rock Island, St. Clair, Sangamon, Winnebago; 
Number of counties in locality: State: 10; 
Locality GAF[B]: State: 0.972; 
Average payment difference in percentage points[C]: State: 0.95. 

Locality number[A]:  : 4; 
Counties in locality:  : Rest of Illinois; 
Number of counties in locality:  : 85; 
Locality GAF[B]:  : 0.922; 
Average payment difference in percentage points[C]:  : 1.43. 

State: Indiana; 
Locality number[A]: 1; 
Counties in locality: Hamilton, Hancock, Hendricks, Lake, Marion, 
Porter; 
Number of counties in locality: 6; 
Locality GAF[B]: 0.968; 
Average payment difference in percentage points[C]: 0.67. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Indiana; 
Number of counties in locality:  : 86; 
Locality GAF[B]:  : 0.921; 
Average payment difference in percentage points[C]:  : 1.72. 

State: Iowa; 
Locality number[A]: 1; 
Counties in locality: Johnson, Linn, Polk, Pottawattamie; 
Number of counties in locality: 4; 
Locality GAF[B]: 0.950; 
Average payment difference in percentage points[C]: 0.95. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Iowa; 
Number of counties in locality:  : 95; 
Locality GAF[B]:  : 0.894; 
Average payment difference in percentage points[C]:  : 1.51. 

State: Kansas; 
Locality number[A]: 1; 
Counties in locality: Linn; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.021; 
Average payment difference in percentage points[C]: 0.00. 

Locality number[A]: State: 2; 
Counties in locality: State: Butler, Johnson, Leavenworth, Miami, 
Sedgwick, Wyandotte; 
Number of counties in locality: State: 6; 
Locality GAF[B]: State: 0.958; 
Average payment difference in percentage points[C]: State: 1.58. 

Locality number[A]:  : 3; 
Counties in locality:  : Rest of Kansas; 
Number of counties in locality:  : 98; 
Locality GAF[B]:  : 0.897; 
Average payment difference in percentage points[C]:  : 1.93. 

State: Kentucky; 
Locality number[A]: 1; 
Counties in locality: Boone, Campbell, Fayette, Jefferson, Jessamine, 
Kenton, Meade; 
Number of counties in locality: 7; 
Locality GAF[B]: 0.950; 
Average payment difference in percentage points[C]: 0.22. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Kentucky; 
Number of counties in locality:  : 113; 
Locality GAF[B]:  : 0.901; 
Average payment difference in percentage points[C]:  : 1.32. 

State: Louisiana; 
Locality number[A]: 1; 
Counties in locality: St. Charles; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.058; 
Average payment difference in percentage points[C]: 0.00. 

Locality number[A]: State: 2; 
Counties in locality: State: Jefferson, Orleans, Plaquemines, St. 
Bernard, St. John the Baptist, St. Tammany, West Feliciana; 
Number of counties in locality: State: 7; 
Locality GAF[B]: State: 1.015; 
Average payment difference in percentage points[C]: State: 0.81. 

Locality number[A]: State: 3; 
Counties in locality: State: Ascension, Caddo, East Feliciana, East 
Baton Rouge, Iberville, Livingston, West Baton Rouge; 
Number of counties in locality: State: 7; 
Locality GAF[B]: State: 0.956; 
Average payment difference in percentage points[C]: State: 1.21. 

Locality number[A]:  : 4; 
Counties in locality:  : Rest of Louisiana; 
Number of counties in locality:  : 49; 
Locality GAF[B]:  : 0.916; 
Average payment difference in percentage points[C]:  : 1.42. 

State: Maine; 
Locality number[A]: 1; 
Counties in locality: Cumberland,  , York; 
Number of counties in locality: 3; 
Locality GAF[B]: 0.993; 
Average payment difference in percentage points[C]: 1.26. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Maine; 
Number of counties in locality:  : 13; 
Locality GAF[B]:  : 0.918; 
Average payment difference in percentage points[C]:  : 0.61. 

State: Maryland; 
Locality number[A]: 1; 
Counties in locality: Calvert, Montgomery, Prince George's; 
Number of counties in locality: 3; 
Locality GAF[B]: 1.118; 
Average payment difference in percentage points[C]: 0.49. 

Locality number[A]: State: 2; 
Counties in locality: State: Anne Arundel, Baltimore, Baltimore City, 
Carroll, Cecil, Charles, Frederick, Harford, Howard; 
Number of counties in locality: State: 9; 
Locality GAF[B]: State: 1.050; 
Average payment difference in percentage points[C]: State: 0.67. 

Locality number[A]:  : 3; 
Counties in locality:  : Rest of Maryland; 
Number of counties in locality:  : 12; 
Locality GAF[B]:  : 0.947; 
Average payment difference in percentage points[C]:  : 1.80. 

State: Massachusetts; 
Locality number[A]: 1; 
Counties in locality: Suffolk; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.150; 
Average payment difference in percentage points[C]: 0.00. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Massachusetts; 
Number of counties in locality:  : 13; 
Locality GAF[B]:  : 1.076; 
Average payment difference in percentage points[C]:  : 4.45. 

State: Michigan; 
Locality number[A]: 1; 
Counties in locality: Macomb, Oakland, Washtenaw, Wayne; 
Number of counties in locality: 4; 
Locality GAF[B]: 1.109; 
Average payment difference in percentage points[C]: 0.22. 

Locality number[A]: State: 2; 
Counties in locality: State: Genesee, Ingham, Livingston, Monroe; 
Number of counties in locality: State: 4; 
Locality GAF[B]: State: 1.014; 
Average payment difference in percentage points[C]: State: 0.35. 

Locality number[A]:  : 3; 
Counties in locality:  : Rest of Michigan; 
Number of counties in locality:  : 75; 
Locality GAF[B]:  : 0.984; 
Average payment difference in percentage points[C]:  : 1.81. 

State: Minnesota; 
Locality number[A]: 1; 
Counties in locality: Anoka, Carver, Hennepin, Ramsey; 
Number of counties in locality: 4; 
Locality GAF[B]: 1.021; 
Average payment difference in percentage points[C]: 0.12. 

Locality number[A]: State: 2; 
Counties in locality: State: Chisago, Dakota, Isanti, Olmsted, Scott, 
Sherburne, Washington, Wright; 
Number of counties in locality: State: 8; 
Locality GAF[B]: State: 0.989; 
Average payment difference in percentage points[C]: State: 0.39. 

Locality number[A]:  : 3; 
Counties in locality:  : Rest of Minnesota; 
Number of counties in locality:  : 75; 
Locality GAF[B]:  : 0.906; 
Average payment difference in percentage points[C]:  : 1.31. 

State: Mississippi; 
Locality number[A]: 1; 
Counties in locality: DeSoto, Hancock, Hinds, Madison, Rankin; 
Number of counties in locality: 5; 
Locality GAF[B]: 0.949; 
Average payment difference in percentage points[C]: 0.59. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Mississippi; 
Number of counties in locality:  : 77; 
Locality GAF[B]:  : 0.893; 
Average payment difference in percentage points[C]:  : 1.27. 

State: Missouri; 
Locality number[A]: 1; 
Counties in locality: Clay, Jackson, St. Louis, St. Louis City; 
Number of counties in locality: 4; 
Locality GAF[B]: 0.980; 
Average payment difference in percentage points[C]: 0.67. 

Locality number[A]: State: 2; 
Counties in locality: State: Boone, Cass, Clinton, Cole, Franklin, 
Jefferson, Lafayette, Lincoln, Moniteau, Platte, Ray, St. Charles; 
Number of counties in locality: State: 12; 
Locality GAF[B]: State: 0.934; 
Average payment difference in percentage points[C]: State: 1.29. 

Locality number[A]:  : 3; 
Counties in locality:  : Rest of Missouri; 
Number of counties in locality:  : 99; 
Locality GAF[B]:  : 0.886; 
Average payment difference in percentage points[C]:  : 1.38. 

State: Montana; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 56; 
Locality GAF[B]: 0.909; 
Average payment difference in percentage points[C]: 0.84. 

State: Nebraska; 
Locality number[A]: 1; 
Counties in locality: Cass, Douglas, Lancaster, Sarpy, Washington; 
Number of counties in locality: 5; 
Locality GAF[B]: 0.936; 
Average payment difference in percentage points[C]: 1.27. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Nebraska; 
Number of counties in locality:  : 88; 
Locality GAF[B]:  : 0.872; 
Average payment difference in percentage points[C]:  : 0.04. 

State: Nevada; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 17; 
Locality GAF[B]: 1.031; 
Average payment difference in percentage points[C]: 0.34. 

State: New Hampshire; 
Locality number[A]: 1; 
Counties in locality: Hillsborough, Rockingham; 
Number of counties in locality: 2; 
Locality GAF[B]: 1.041; 
Average payment difference in percentage points[C]: 0.79. 

Locality number[A]:   Jersey: 2; 
Counties in locality:   Jersey: Rest of New Hampshire; 
Number of counties in locality:   Jersey: 8; 
Locality GAF[B]:   Jersey: 0.979; 
Average payment difference in percentage points[C]:   Jersey: 0.90. 

State: New Jersey; 
Locality number[A]: 1; 
Counties in locality: Bergen, Middlesex, Somerset; 
Number of counties in locality: 3; 
Locality GAF[B]: 1.137; 
Average payment difference in percentage points[C]: 0.56. 

Locality number[A]: State: 2; 
Counties in locality: State: Essex, Hudson, Hunterdon, Mercer, 
Monmouth, Morris, Ocean, Passaic, Salem, Union; 
Number of counties in locality: State: 10; 
Locality GAF[B]: State: 1.115; 
Average payment difference in percentage points[C]: State: 0.86. 

Locality number[A]:   Mexico: 3; 
Counties in locality:   Mexico: Rest of New Jersey; 
Number of counties in locality:   Mexico: 8; 
Locality GAF[B]:   Mexico: 1.056; 
Average payment difference in percentage points[C]:   Mexico: 0.77. 

State: New Mexico; 
Locality number[A]: 1; 
Counties in locality: Bernalillo, Sandoval, Santa Fe; 
Number of counties in locality: 3; 
Locality GAF[B]: 0.974; 
Average payment difference in percentage points[C]: 0.59. 

Locality number[A]:   York: 2; 
Counties in locality:   York: Rest of New Mexico; 
Number of counties in locality:   York: 30; 
Locality GAF[B]:   York: 0.915; 
Average payment difference in percentage points[C]:   York: 0.35. 

State: New York; 
Locality number[A]: 1; 
Counties in locality: Westchester; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.218; 
Average payment difference in percentage points[C]: 0.00. 

Locality number[A]: State: 2; 
Counties in locality: State: Bronx, Kings, Nassau, New York, Queens, 
Richmond, Rockland, Suffolk; 
Number of counties in locality: State: 8; 
Locality GAF[B]: State: 1.176; 
Average payment difference in percentage points[C]: State: 1.50. 

Locality number[A]: State: 3; 
Counties in locality: State: Dutchess, Orange, Putnam; 
Number of counties in locality: State: 3; 
Locality GAF[B]: State: 1.081; 
Average payment difference in percentage points[C]: State: 0.48. 

Locality number[A]: State: 4; 
Counties in locality: State: Albany, Schenectady, Ulster; 
Number of counties in locality: State: 3; 
Locality GAF[B]: State: 0.994; 
Average payment difference in percentage points[C]: State: 0.35. 

Locality number[A]:   Carolina: 5; 
Counties in locality:   Carolina: Rest of New York; 
Number of counties in locality:   Carolina: 47; 
Locality GAF[B]:   Carolina: 0.948; 
Average payment difference in percentage points[C]:   Carolina: 1.53. 

State: North Carolina; 
Locality number[A]: 1; 
Counties in locality: Durham, Franklin, Forsyth, Guilford, Johnston, 
Mecklenburg, Orange, Wake; 
Number of counties in locality: 8; 
Locality GAF[B]: 0.979; 
Average payment difference in percentage points[C]: 1.44. 

Locality number[A]:   Dakota: 2; 
Counties in locality:   Dakota: Rest of North Carolina; 
Number of counties in locality:   Dakota: 92; 
Locality GAF[B]:   Dakota: 0.922; 
Average payment difference in percentage points[C]:   Dakota: 1.40. 

State: North Dakota; 
Locality number[A]: 1; 
Counties in locality: Cass; 
Number of counties in locality: 1; 
Locality GAF[B]: 0.910; 
Average payment difference in percentage points[C]: 0.00. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of North Dakota; 
Number of counties in locality:  : 52; 
Locality GAF[B]:  : 0.884; 
Average payment difference in percentage points[C]:  : 1.83. 

State: Ohio; 
Locality number[A]: 1; 
Counties in locality: Butler, Clermont, Cuyahoga, Delaware, Franklin, 
Geauga, Greene, Hamilton, Lake, Lorain, Madison, Montgomery, Ottawa, 
Pickaway, Portage, Summit, Union, Warren; 
Number of counties in locality: 18; 
Locality GAF[B]: 0.990; 
Average payment difference in percentage points[C]: 0.88. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Ohio; 
Number of counties in locality:  : 70; 
Locality GAF[B]:  : 0.935; 
Average payment difference in percentage points[C]:  : 1.54. 

State: Oklahoma; 
Locality number[A]: 1; 
Counties in locality: Oklahoma, Osage, Rogers, Tulsa, Wagoner; 
Number of counties in locality: 5; 
Locality GAF[B]: 0.915; 
Average payment difference in percentage points[C]: 0.53. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Oklahoma; 
Number of counties in locality:  : 72; 
Locality GAF[B]:  : 0.869; 
Average payment difference in percentage points[C]:  : 1.14. 

State: Oregon; 
Locality number[A]: 1; 
Counties in locality: Clackamas, Multnomah, Washington; 
Number of counties in locality: 3; 
Locality GAF[B]: 0.994; 
Average payment difference in percentage points[C]: 0.18. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Oregon; 
Number of counties in locality:  : 33; 
Locality GAF[B]:  : 0.934; 
Average payment difference in percentage points[C]:  : 1.14. 

State: Pennsylvania; 
Locality number[A]: 1; 
Counties in locality: Bucks, Chester, Delaware, Montgomery, 
Philadelphia; 
Number of counties in locality: 5; 
Locality GAF[B]: 1.069; 
Average payment difference in percentage points[C]: 0.44. 

Locality number[A]: State: 2; 
Counties in locality: State: Allegheny, Beaver, Cumberland, Dauphin, 
Lehigh, Northampton, Washington; 
Number of counties in locality: State: 7; 
Locality GAF[B]: State: 0.988; 
Average payment difference in percentage points[C]: State: 1.03. 

Locality number[A]:   Island: 3; 
Counties in locality:   Island: Rest of Pennsylvania; 
Number of counties in locality:   Island: 55; 
Locality GAF[B]:   Island: 0.941; 
Average payment difference in percentage points[C]:   Island: 1.70. 

State: Rhode Island; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 5; 
Locality GAF[B]: 1.053; 
Average payment difference in percentage points[C]: 0.38. 

State: South Carolina; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 46; 
Locality GAF[B]: 0.925; 
Average payment difference in percentage points[C]: 1.53. 

State: South Dakota; 
Locality number[A]: 1; 
Counties in locality: Minnehaha, Pennington, Union; 
Number of counties in locality: 3; 
Locality GAF[B]: 0.912; 
Average payment difference in percentage points[C]: 0.54. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of South Dakota; 
Number of counties in locality:  : 63; 
Locality GAF[B]:  : 0.862; 
Average payment difference in percentage points[C]:  : 0.92. 

State: Tennessee; 
Locality number[A]: 1; 
Counties in locality: Anderson, Davidson, Hamilton, Rutherford, Shelby, 
Williamson, Wilson; 
Number of counties in locality: 7; 
Locality GAF[B]: 0.956; 
Average payment difference in percentage points[C]: 0.81. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Tennessee; 
Number of counties in locality:  : 88; 
Locality GAF[B]:  : 0.906; 
Average payment difference in percentage points[C]:  : 1.71. 

State: Texas; 
Locality number[A]: 1; 
Counties in locality: Chambers, Collin, Dallas, Harris; 
Number of counties in locality: 4; 
Locality GAF[B]: 1.020; 
Average payment difference in percentage points[C]: 0.57. 

Locality number[A]: State: 2; 
Counties in locality: State: Bastrop, Bexar, Brazoria, Caldwell, 
Denton, Ellis, Fort Bend, Galveston, Hays, Hunt, Kendall, Montgomery, 
Rockwall, Tarrant, Travis, Waller, Williamson; 
Number of counties in locality: State: 17; 
Locality GAF[B]: State: 0.986; 
Average payment difference in percentage points[C]: State: 1.26. 

Locality number[A]:  : 3; 
Counties in locality:  : Rest of Texas; 
Number of counties in locality:  : 233; 
Locality GAF[B]:  : 0.927; 
Average payment difference in percentage points[C]:  : 1.45. 

State: Utah; 
Locality number[A]: 1; 
Counties in locality: Salt Lake, Summit, Tooele; 
Number of counties in locality: 3; 
Locality GAF[B]: 0.965; 
Average payment difference in percentage points[C]: 0.04. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Utah; 
Number of counties in locality:  : 26; 
Locality GAF[B]:  : 0.916; 
Average payment difference in percentage points[C]:  : 1.64. 

State: Vermont; 
Locality number[A]: 1; 
Counties in locality: Chittenden, Franklin; 
Number of counties in locality: 2; 
Locality GAF[B]: 0.996; 
Average payment difference in percentage points[C]: 0.22. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Vermont; 
Number of counties in locality:  : 12; 
Locality GAF[B]:  : 0.932; 
Average payment difference in percentage points[C]:  : 0.00. 

State: Virginia; 
Locality number[A]: 1; 
Counties in locality: Alexandria City, Arlington, Fairfax, Fairfax 
City, Falls Church City; 
Number of counties in locality: 5; 
Locality GAF[B]: 1.131; 
Average payment difference in percentage points[C]: 0.28. 

Locality number[A]: State: 2; 
Counties in locality: State: Fauquier, Fredericksburg City, Loudoun, 
Manassas City, Prince William; 
Number of counties in locality: State: 5; 
Locality GAF[B]: State: 1.065; 
Average payment difference in percentage points[C]: State: 1.61. 

Locality number[A]: State: 3; 
Counties in locality: State: Clarke, New Kent, Richmond City, 
Spotsylvania, Stafford; 
Number of counties in locality: State: 5; 
Locality GAF[B]: State: 0.999; 
Average payment difference in percentage points[C]: State: 0.69. 

Locality number[A]: State: 4; 
Counties in locality: State: Albemarle, Charlottesville City, 
Chesapeake City, Chesterfield, Colonial Heights City, Dinwiddie, 
Goochland, Hampton City, Hanover, Henrico, Hopewell City, Isle of 
Wight, James City, Louisa, Newport News City, Norfolk City, Petersburg 
City, Portsmouth City, Salem City, Suffolk City, Virginia Beach City, 
Warren, Williamsburg City, Winchester City, York; 
Number of counties in locality: State: 25; 
Locality GAF[B]: State: 0.969; 
Average payment difference in percentage points[C]: State: 1.13. 

Locality number[A]:  : 5; 
Counties in locality:  : Rest of Virginia; 
Number of counties in locality:  : 95; 
Locality GAF[B]:  : 0.907; 
Average payment difference in percentage points[C]:  : 1.24. 

State: Washington; 
Locality number[A]: 1; 
Counties in locality: King; 
Number of counties in locality: 1; 
Locality GAF[B]: 1.045; 
Average payment difference in percentage points[C]: 0.00. 

Locality number[A]: State: 2; 
Counties in locality: State: Benton, Clark, Kitsap, Pierce, Snohomish, 
Thurston; 
Number of counties in locality: State: 6; 
Locality GAF[B]: State: 1.010; 
Average payment difference in percentage points[C]: State: 0.84. 

Locality number[A]:   Virginia: 3; 
Counties in locality:   Virginia: Rest of Washington; 
Number of counties in locality:   Virginia: 32; 
Locality GAF[B]:   Virginia: 0.957; 
Average payment difference in percentage points[C]:   Virginia: 1.01. 

State: West Virginia; 
Locality number[A]: 1; 
Counties in locality: Berkeley, Jefferson, Morgan, Putnam; 
Number of counties in locality: 4; 
Locality GAF[B]: 0.968; 
Average payment difference in percentage points[C]: 0.18. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of West Virginia; 
Number of counties in locality:  : 51; 
Locality GAF[B]:  : 0.935; 
Average payment difference in percentage points[C]:  : 1.89. 

State: Wisconsin; 
Locality number[A]: 1; 
Counties in locality: Dane, Kenosha, Milwaukee, Ozaukee, Pierce, 
Racine, St. Croix, Washington, Waukesha; 
Number of counties in locality: 9; 
Locality GAF[B]: 0.987; 
Average payment difference in percentage points[C]: 0.38. 

Locality number[A]:  : 2; 
Counties in locality:  : Rest of Wisconsin; 
Number of counties in locality:  : 63; 
Locality GAF[B]:  : 0.931; 
Average payment difference in percentage points[C]:  : 1.17. 

State: Wyoming; 
Locality number[A]: 1; 
Counties in locality: Statewide; 
Number of counties in locality: 23; 
Locality GAF[B]: 0.912; 
Average payment difference in percentage points[C]: 1.23. 

State: Nation; 
Locality number[A]: 119; 
Counties in locality: [Empty]; 
Number of counties in locality: [Empty]; 
Locality GAF[B]: [Empty]; 
Average payment difference in percentage points[C]: 1.09. 

[End of table] 

Source: GAO analysis of 2005 CMS, 2000 Census Bureau, and fiscal year 
2006 HUD data. 

Notes: Our analysis includes the 50 states and District of Columbia and 
excludes Puerto Rico and the U.S. Virgin Islands. We consider 
independent cities, such as Alexandria City in Virginia, as county 
equivalents, because this is how the Census Bureau considers them. The 
county-based GAF ranges approach groups counties with similar GAFs into 
one locality. 

[A] The locality number is relative on a state basis. That is, locality 
1 has the highest GAF in the state, locality 2 has the second-highest 
GAF, and so on. 

[B] We calculated the locality GAF as the average county-specific GAF 
of counties in the locality, weighted by county RVUs. Our formula for 
calculating the locality GAF is the same as that used by CMS. 

[C] Payment difference compares the costs physicians incur for 
providing services in different geographic areas (the county-specific 
GAF) with the geographic adjustment that Medicare applies to those 
areas (the locality GAF). We calculated payment difference as the 
absolute value of the locality GAF minus the county-specific GAF, 
divided by the county-specific GAF. In calculating the average payment 
difference, each county's payment difference was weighted by county 
RVUs. 

Table 5: Physician Payment Localities Created Using the Metropolitan 
Statistical Area (MSA)-Based Iterative Alternative Approach, by State: 

State: Alabama; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 67; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: Alaska; 
Locality number[A]: 18; 
MSA in locality[B]: Anchorage, AK; 
Number of state's counties in locality: 2; 
Locality GAF[C]: 1.085; 
Average payment difference in percentage points[D]: 1.20. 

Locality number[A]: State: 28; 
MSA in locality[B]: State: Fairbanks, AK; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.056; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 24; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Arizona; 
Locality number[A]: 60; 
MSA in locality[B]: Flagstaff, AZ; 
Number of state's counties in locality: 1; 
Locality GAF[C]: 1.004; 
Average payment difference in percentage points[D]: 0.00. 

Locality number[A]: State: 63; 
MSA in locality[B]: State: Phoenix-Mesa- Scottsdale, AZ; 
Number of state's counties in locality: State: 2; 
Locality GAF[C]: State: 1.002; 
Average payment difference in percentage points[D]: State: 0.13. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 12; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Arkansas; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 75; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: California; 
Locality number[A]: 1; 
MSA in locality[B]: San Francisco-Oakland-Fremont, CA; 
Number of state's counties in locality: 5; 
Locality GAF[C]: 1.179; 
Average payment difference in percentage points[D]: 2.71. 

Locality number[A]: State: 2; 
MSA in locality[B]: State: San Jose- Sunnyvale-Santa Clara, CA; 
Number of state's counties in locality: State: 2; 
Locality GAF[C]: State: 1.173; 
Average payment difference in percentage points[D]: State: 0.25. 

Locality number[A]: State: 7; 
MSA in locality[B]: State: Los Angeles- Long Beach-Santa Ana, CA; 
Number of state's counties in locality: State: 2; 
Locality GAF[C]: State: 1.121; 
Average payment difference in percentage points[D]: State: 0.91. 

Locality number[A]: State: 8; 
MSA in locality[B]: State: Oxnard- Thousand Oaks-Ventura, CA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.120; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 9; 
MSA in locality[B]: State: Santa Cruz- Watsonville, CA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.119; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 13; 
MSA in locality[B]: State: Napa, CA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.097; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 14; 
MSA in locality[B]: State: Santa Rosa- Petaluma, CA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.097; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 16; 
MSA in locality[B]: State: Salinas, CA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.094; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 23; 
MSA in locality[B]: State: Vallejo- Fairfield, CA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.066; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 27; 
MSA in locality[B]: State: Sacramento- Arden-Arcade-Roseville, CA; 
Number of state's counties in locality: State: 4; 
Locality GAF[C]: State: 1.057; 
Average payment difference in percentage points[D]: State: 1.11. 

Locality number[A]: State: 29; 
MSA in locality[B]: State: Santa Barbara-Santa Maria, CA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.056; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 30; 
MSA in locality[B]: State: San Diego- Carlsbad-San Marcos, CA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.055; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 40; 
MSA in locality[B]: State: San Luis Obispo-Paso Robles, CA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.030; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 42; 
MSA in locality[B]: State: Riverside-San Bernardino-Ontario, CA; 
Number of state's counties in locality: State: 2; 
Locality GAF[C]: State: 1.026; 
Average payment difference in percentage points[D]: State: 0.32. 

Locality number[A]: State: 45; 
MSA in locality[B]: State: Stockton, CA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.025; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 69; 
MSA in locality[B]: State: Modesto, CA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 0.996; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 93; 
MSA in locality[B]: State: Fresno, CA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 0.984; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 94; 
MSA in locality[B]: State: Bakersfield, CA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 0.984; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 30; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Colorado; 
Locality number[A]: 36; 
MSA in locality[B]: Boulder, CO; 
Number of state's counties in locality: 1; 
Locality GAF[C]: 1.038; 
Average payment difference in percentage points[D]: 0.00. 

Locality number[A]: State: 43; 
MSA in locality[B]: State: Denver- Aurora, CO; 
Number of state's counties in locality: State: 10; 
Locality GAF[C]: State: 1.025; 
Average payment difference in percentage points[D]: State: 0.78. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 53; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Connecticut; 
Locality number[A]: 4; 
MSA in locality[B]: Bridgeport-Stamford-Norwalk, CT; 
Number of state's counties in locality: 1; 
Locality GAF[C]: 1.149; 
Average payment difference in percentage points[D]: 0.00. 

Locality number[A]: State: 17; 
MSA in locality[B]: State: Hartford-West Hartford-East Hartford, CT; 
Number of state's counties in locality: State: 3; 
Locality GAF[C]: State: 1.093; 
Average payment difference in percentage points[D]: State: 0.34. 

Locality number[A]: State: 19; 
MSA in locality[B]: State: New Haven- Milford, CT; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.084; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 22; 
MSA in locality[B]: State: Norwich-New London, CT; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.067; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 2; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Delaware; 
Locality number[A]: 24; 
MSA in locality[B]: Philadelphia-Camden-Wilmington, PA-NJ-DE-MD; 
Number of state's counties in locality: 1; 
Locality GAF[C]: 1.064; 
Average payment difference in percentage points[D]: 0.75. 

Locality number[A]:   of Columbia: 98; 
MSA in locality[B]:   of Columbia: Rest of Nation; 
Number of state's counties in locality:   of Columbia: 2; 
Locality GAF[C]:   of Columbia: 0.934; 
Average payment difference in percentage points[D]:   of Columbia: 
2.63. 

State: District of Columbia; 
Locality number[A]: 10; 
MSA in locality[B]: Washington-Arlington-Alexandria, DC-VA-MD-WV; 
Number of state's counties in locality: 1; 
Locality GAF[C]: 1.116; 
Average payment difference in percentage points[D]: 2.22. 

State: Florida; 
Locality number[A]: 25; 
MSA in locality[B]: Miami-Fort Lauderdale-Miami Beach, FL; 
Number of state's counties in locality: 3; 
Locality GAF[C]: 1.061; 
Average payment difference in percentage points[D]: 0.85. 

Locality number[A]: State: 44; 
MSA in locality[B]: State: Naples-Marco Island, FL; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.025; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 67; 
MSA in locality[B]: State: Sarasota- Bradenton-Venice, FL; 
Number of state's counties in locality: State: 2; 
Locality GAF[C]: State: 0.997; 
Average payment difference in percentage points[D]: State: 0.42. 

Locality number[A]: State: 80; 
MSA in locality[B]: State: Cape Coral- Fort Myers, FL; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 0.988; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 84; 
MSA in locality[B]: State: Jacksonville, FL; 
Number of state's counties in locality: State: 5; 
Locality GAF[C]: State: 0.988; 
Average payment difference in percentage points[D]: State: 0.37. 

Locality number[A]: State: 85; 
MSA in locality[B]: State: Tampa-St. Petersburg-Clearwater, FL; 
Number of state's counties in locality: State: 4; 
Locality GAF[C]: State: 0.987; 
Average payment difference in percentage points[D]: State: 1.10. 

Locality number[A]: State: 86; 
MSA in locality[B]: State: Orlando- Kissimmee, FL; 
Number of state's counties in locality: State: 4; 
Locality GAF[C]: State: 0.987; 
Average payment difference in percentage points[D]: State: 0.93. 

Locality number[A]: State: 92; 
MSA in locality[B]: State: Port St. Lucie-Fort Pierce, FL; 
Number of state's counties in locality: State: 2; 
Locality GAF[C]: State: 0.985; 
Average payment difference in percentage points[D]: State: 0.84. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 45; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Georgia; 
Locality number[A]: 54; 
MSA in locality[B]: Atlanta- Sandy Springs-Marietta, GA; 
Number of state's counties in locality: 28; 
Locality GAF[C]: 1.011; 
Average payment difference in percentage points[D]: 1.43. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 131; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Hawaii; 
Locality number[A]: 15; 
MSA in locality[B]: Honolulu, HI; 
Number of state's counties in locality: 1; 
Locality GAF[C]: 1.094; 
Average payment difference in percentage points[D]: 0.00. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 4; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Idaho; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 44; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: Illinois; 
Locality number[A]: 21; 
MSA in locality[B]: Chicago- Naperville-Joliet, IL-IN-WI; 
Number of state's counties in locality: 9; 
Locality GAF[C]: 1.072; 
Average payment difference in percentage points[D]: 3.10. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 93; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Indiana; 
Locality number[A]: 21; 
MSA in locality[B]: Chicago- Naperville-Joliet, IL-IN-WI; 
Number of state's counties in locality: 4; 
Locality GAF[C]: 1.072; 
Average payment difference in percentage points[D]: 3.10. 

Locality number[A]: State: 96; 
MSA in locality[B]: State: Cincinnati- Middletown, OH-KY-IN; 
Number of state's counties in locality: State: 3; 
Locality GAF[C]: State: 0.982; 
Average payment difference in percentage points[D]: State: 1.49. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 85; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Iowa; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 99; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: Kansas; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 105; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: Kentucky; 
Locality number[A]: 96; 
MSA in locality[B]: Cincinnati-Middletown, OH-KY-IN; 
Number of state's counties in locality: 7; 
Locality GAF[C]: 0.982; 
Average payment difference in percentage points[D]: 1.49. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 113; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Louisiana; 
Locality number[A]: 51; 
MSA in locality[B]: New Orleans-Metairie-Kenner, LA; 
Number of state's counties in locality: 7; 
Locality GAF[C]: 1.016; 
Average payment difference in percentage points[D]: 0.87. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 57; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Maine; 
Locality number[A]: 74; 
MSA in locality[B]: Portland- South Portland-Biddeford, ME; 
Number of state's counties in locality: 3; 
Locality GAF[C]: 0.993; 
Average payment difference in percentage points[D]: 1.26. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 13; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Maryland; 
Locality number[A]: 10; 
MSA in locality[B]: Washington-Arlington-Alexandria, DC-VA-MD-WV; 
Number of state's counties in locality: 5; 
Locality GAF[C]: 1.116; 
Average payment difference in percentage points[D]: 2.22. 

Locality number[A]: State: 24; 
MSA in locality[B]: State: Philadelphia- Camden-Wilmington, PA-NJ-DE-
MD; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.064; 
Average payment difference in percentage points[D]: State: 0.75. 

Locality number[A]: State: 31; 
MSA in locality[B]: State: Baltimore- Towson, MD; 
Number of state's counties in locality: State: 7; 
Locality GAF[C]: State: 1.050; 
Average payment difference in percentage points[D]: State: 0.58. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 11; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Massachusetts; 
Locality number[A]: 6; 
MSA in locality[B]: Boston-Cambridge-Quincy, MA-NH; 
Number of state's counties in locality: 5; 
Locality GAF[C]: 1.121; 
Average payment difference in percentage points[D]: 2.15. 

Locality number[A]: State: 33; 
MSA in locality[B]: State: Providence- New Bedford-Fall River, RI-MA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.046; 
Average payment difference in percentage points[D]: State: 0.90. 

Locality number[A]: State: 34; 
MSA in locality[B]: State: Worcester, MA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.040; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 35; 
MSA in locality[B]: State: Barnstable Town, MA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.039; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 59; 
MSA in locality[B]: State: Springfield, MA; 
Number of state's counties in locality: State: 3; 
Locality GAF[C]: State: 1.005; 
Average payment difference in percentage points[D]: State: 1.00. 

Locality number[A]: State: 97; 
MSA in locality[B]: State: Pittsfield, MA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 0.981; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 2; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Michigan; 
Locality number[A]: 11; 
MSA in locality[B]: Ann Arbor, MI; 
Number of state's counties in locality: 1; 
Locality GAF[C]: 1.110; 
Average payment difference in percentage points[D]: 0.00. 

Locality number[A]: State: 12; 
MSA in locality[B]: State: Detroit- Warren-Livonia, MI; 
Number of state's counties in locality: State: 6; 
Locality GAF[C]: State: 1.104; 
Average payment difference in percentage points[D]: State: 0.95. 

Locality number[A]: State: 48; 
MSA in locality[B]: State: Monroe, MI; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.022; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 53; 
MSA in locality[B]: State: Flint, MI; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.011; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 55; 
MSA in locality[B]: State: Lansing-East Lansing, MI; 
Number of state's counties in locality: State: 3; 
Locality GAF[C]: State: 1.010; 
Average payment difference in percentage points[D]: State: 0.30. 

Locality number[A]: State: 56; 
MSA in locality[B]: State: Grand Rapids- Wyoming, MI; 
Number of state's counties in locality: State: 4; 
Locality GAF[C]: State: 1.007; 
Average payment difference in percentage points[D]: State: 0.47. 

Locality number[A]: State: 64; 
MSA in locality[B]: State: Holland-Grand Haven, MI; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.000; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 66; 
MSA in locality[B]: State: Battle Creak, MI; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.000; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 73; 
MSA in locality[B]: State: Jackson, MI; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 0.994; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 75; 
MSA in locality[B]: State: Kalamazoo- Portage, MI; 
Number of state's counties in locality: State: 2; 
Locality GAF[C]: State: 0.993; 
Average payment difference in percentage points[D]: State: 0.15. 

Locality number[A]: State: 76; 
MSA in locality[B]: State: Saginaw- Saginaw Township North, MI; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 0.993; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 61; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Minnesota; 
Locality number[A]: 50; 
MSA in locality[B]: Minneapolis-St. Paul-Bloomington, MN-WI; 
Number of state's counties in locality: 11; 
Locality GAF[C]: 1.019; 
Average payment difference in percentage points[D]: 0.47. 

Locality number[A]: State: 88; 
MSA in locality[B]: State: Rochester, MN; 
Number of state's counties in locality: State: 3; 
Locality GAF[C]: State: 0.986; 
Average payment difference in percentage points[D]: State: 0.24. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 73; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Mississippi; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 82; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: Missouri; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 115; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: Montana; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 56; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: Nebraska; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 93; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: Nevada; 
Locality number[A]: 38; 
MSA in locality[B]: Reno-Sparks, NV; 
Number of state's counties in locality: 2; 
Locality GAF[C]: 1.033; 
Average payment difference in percentage points[D]: 0.00. 

Locality number[A]: State: 39; 
MSA in locality[B]: State: Las Vegas- Paradise, NV; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.033; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 46; 
MSA in locality[B]: State: Carson City, NV; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.024; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]:   Hampshire: 98; 
MSA in locality[B]:   Hampshire: Rest of Nation; 
Number of state's counties in locality:   Hampshire: 13; 
Locality GAF[C]:   Hampshire: 0.934; 
Average payment difference in percentage points[D]:   Hampshire: 2.63. 

State: New Hampshire; 
Locality number[A]: 6; 
MSA in locality[B]: Boston-Cambridge-Quincy, MA-NH; 
Number of state's counties in locality: 2; 
Locality GAF[C]: 1.121; 
Average payment difference in percentage points[D]: 2.15. 

Locality number[A]: State: 32; 
MSA in locality[B]: State: Manchester- Nashua, NH; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.047; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]:   Jersey: 98; 
MSA in locality[B]:   Jersey: Rest of Nation; 
Number of state's counties in locality:   Jersey: 7; 
Locality GAF[C]:   Jersey: 0.934; 
Average payment difference in percentage points[D]:   Jersey: 2.63. 

State: New Jersey; 
Locality number[A]: 3; 
MSA in locality[B]: New York- Northern NJ-Long Island, NY-NJ-PA; 
Number of state's counties in locality: 12; 
Locality GAF[C]: 1.158; 
Average payment difference in percentage points[D]: 2.58. 

Locality number[A]: State: 5; 
MSA in locality[B]: State: Trenton-Ewing, NJ; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.127; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 24; 
MSA in locality[B]: State: Philadelphia- Camden-Wilmington, PA-NJ-DE-
MD; 
Number of state's counties in locality: State: 4; 
Locality GAF[C]: State: 1.064; 
Average payment difference in percentage points[D]: State: 0.75. 

Locality number[A]: State: 26; 
MSA in locality[B]: State: Atlantic City, NJ; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.059; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 41; 
MSA in locality[B]: State: Vineland- Millville-Bridgeton, NJ; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.028; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 47; 
MSA in locality[B]: State: Ocean City, NJ; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.022; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]:   Mexico: 57; 
MSA in locality[B]:   Mexico: Allentown-Bethlehem-Easton, PA-NJ; 
Number of state's counties in locality:   Mexico: 1; 
Locality GAF[C]:   Mexico: 1.007; 
Average payment difference in percentage points[D]:   Mexico: 1.56. 

State: New Mexico; 
Locality number[A]: 72; 
MSA in locality[B]: Santa Fe, NM; 
Number of state's counties in locality: 1; 
Locality GAF[C]: 0.994; 
Average payment difference in percentage points[D]: 0.00. 

Locality number[A]:   York: 98; 
MSA in locality[B]:   York: Rest of Nation; 
Number of state's counties in locality:   York: 32; 
Locality GAF[C]:   York: 0.934; 
Average payment difference in percentage points[D]:   York: 2.63. 

State: New York; 
Locality number[A]: 3; 
MSA in locality[B]: New York- Northern NJ-Long Island, NY-NJ-PA; 
Number of state's counties in locality: 10; 
Locality GAF[C]: 1.158; 
Average payment difference in percentage points[D]: 2.58. 

Locality number[A]: State: 20; 
MSA in locality[B]: State: Poughkeepsie- Newburgh-Middletown, NY; 
Number of state's counties in locality: State: 2; 
Locality GAF[C]: State: 1.078; 
Average payment difference in percentage points[D]: State: 0.15. 

Locality number[A]: State: 61; 
MSA in locality[B]: State: Kingston, NY; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.003; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 83; 
MSA in locality[B]: State: Albany- Schenectady-Troy, NY; 
Number of state's counties in locality: State: 5; 
Locality GAF[C]: State: 0.988; 
Average payment difference in percentage points[D]: State: 0.72. 

Locality number[A]:   Carolina: 98; 
MSA in locality[B]:   Carolina: Rest of Nation; 
Number of state's counties in locality:   Carolina: 44; 
Locality GAF[C]:   Carolina: 0.934; 
Average payment difference in percentage points[D]:   Carolina: 2.63. 

State: North Carolina; 
Locality number[A]: 71; 
MSA in locality[B]: Raleigh-Cary, NC; 
Number of state's counties in locality: 3; 
Locality GAF[C]: 0.995; 
Average payment difference in percentage points[D]: 0.86. 

Locality number[A]: State: 77; 
MSA in locality[B]: State: Durham, NC; 
Number of state's counties in locality: State: 4; 
Locality GAF[C]: State: 0.992; 
Average payment difference in percentage points[D]: State: 1.84. 

Locality number[A]:   Dakota: 98; 
MSA in locality[B]:   Dakota: Rest of Nation; 
Number of state's counties in locality:   Dakota: 93; 
Locality GAF[C]:   Dakota: 0.934; 
Average payment difference in percentage points[D]:   Dakota: 2.63. 

State: North Dakota; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 53; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: Ohio; 
Locality number[A]: 68; 
MSA in locality[B]: Cleveland- Elyria-Mentor, OH; 
Number of state's counties in locality: 5; 
Locality GAF[C]: 0.997; 
Average payment difference in percentage points[D]: 0.97. 

Locality number[A]: State: 87; 
MSA in locality[B]: State: Akron, OH; 
Number of state's counties in locality: State: 2; 
Locality GAF[C]: State: 0.987; 
Average payment difference in percentage points[D]: State: 0.30. 

Locality number[A]: State: 89; 
MSA in locality[B]: State: Columbus, OH; 
Number of state's counties in locality: State: 8; 
Locality GAF[C]: State: 0.986; 
Average payment difference in percentage points[D]: State: 0.95. 

Locality number[A]: State: 96; 
MSA in locality[B]: State: Cincinnati- Middletown, OH-KY-IN; 
Number of state's counties in locality: State: 5; 
Locality GAF[C]: State: 0.982; 
Average payment difference in percentage points[D]: State: 1.49. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 68; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Oklahoma; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 77; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: Oregon; 
Locality number[A]: 78; 
MSA in locality[B]: Portland- Vancouver-Beaverton, OR-WA; 
Number of state's counties in locality: 5; 
Locality GAF[C]: 0.991; 
Average payment difference in percentage points[D]: 0.50. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 31; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Pennsylvania; 
Locality number[A]: 3; 
MSA in locality[B]: New York-Northern NJ-Long Island, NY-NJ-PA; 
Number of state's counties in locality: 1; 
Locality GAF[C]: 1.158; 
Average payment difference in percentage points[D]: 2.58. 

Locality number[A]: State: 24; 
MSA in locality[B]: State: Philadelphia- Camden-Wilmington, PA-NJ-DE-
MD; 
Number of state's counties in locality: State: 5; 
Locality GAF[C]: State: 1.064; 
Average payment difference in percentage points[D]: State: 0.75. 

Locality number[A]: State: 57; 
MSA in locality[B]: State: Allentown- Bethlehem-Easton, PA-NJ; 
Number of state's counties in locality: State: 3; 
Locality GAF[C]: State: 1.007; 
Average payment difference in percentage points[D]: State: 1.56. 

Locality number[A]: State: 81; 
MSA in locality[B]: State: Harrisburg- Carlisle, PA; 
Number of state's counties in locality: State: 3; 
Locality GAF[C]: State: 0.988; 
Average payment difference in percentage points[D]: State: 1.06. 

Locality number[A]:   Island: 98; 
MSA in locality[B]:   Island: Rest of Nation; 
Number of state's counties in locality:   Island: 55; 
Locality GAF[C]:   Island: 0.934; 
Average payment difference in percentage points[D]:   Island: 2.63. 

State: Rhode Island; 
Locality number[A]: 33; 
MSA in locality[B]: Providence-New Bedford-Fall River, RI-MA; 
Number of state's counties in locality: 5; 
Locality GAF[C]: 1.046; 
Average payment difference in percentage points[D]: 0.90. 

State: South Carolina; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 46; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: South Dakota; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 66; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: Tennessee; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 95; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: Texas; 
Locality number[A]: 49; 
MSA in locality[B]: Houston-Sugar Land-Baytown, TX; 
Number of state's counties in locality: 10; 
Locality GAF[C]: 1.019; 
Average payment difference in percentage points[D]: 1.11. 

Locality number[A]: State: 62; 
MSA in locality[B]: State: Dallas-Fort Worth-Arlington, TX; 
Number of state's counties in locality: State: 12; 
Locality GAF[C]: State: 1.002; 
Average payment difference in percentage points[D]: State: 1.34. 

Locality number[A]: State: 65; 
MSA in locality[B]: State: Austin-Round Rock, TX; 
Number of state's counties in locality: State: 5; 
Locality GAF[C]: State: 1.000; 
Average payment difference in percentage points[D]: State: 0.77. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 227; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Utah; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 29; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: Vermont; 
Locality number[A]: 70; 
MSA in locality[B]: Burlington- South Burlington, VT; 
Number of state's counties in locality: 3; 
Locality GAF[C]: 0.996; 
Average payment difference in percentage points[D]: 0.22. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 11; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Virginia; 
Locality number[A]: 10; 
MSA in locality[B]: Washington-Arlington-Alexandria, DC-VA-MD-WV; 
Number of state's counties in locality: 15; 
Locality GAF[C]: 1.116; 
Average payment difference in percentage points[D]: 2.22. 

Locality number[A]: State: 91; 
MSA in locality[B]: State: Richmond, VA; 
Number of state's counties in locality: State: 20; 
Locality GAF[C]: State: 0.986; 
Average payment difference in percentage points[D]: State: 1.08. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 100; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Washington; 
Locality number[A]: 37; 
MSA in locality[B]: Seattle- Tacoma-Bellevue, WA; 
Number of state's counties in locality: 3; 
Locality GAF[C]: 1.034; 
Average payment difference in percentage points[D]: 1.30. 

Locality number[A]: State: 52; 
MSA in locality[B]: State: Olympia, WA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.015; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 58; 
MSA in locality[B]: State: Bremerton- Silverdale, WA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 1.006; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]: State: 78; 
MSA in locality[B]: State: Portland- Vancouver-Beaverton, OR-WA; 
Number of state's counties in locality: State: 2; 
Locality GAF[C]: State: 0.991; 
Average payment difference in percentage points[D]: State: 0.50. 

Locality number[A]: State: 79; 
MSA in locality[B]: State: Kennewick- Richland-Pasco, WA; 
Number of state's counties in locality: State: 2; 
Locality GAF[C]: State: 0.991; 
Average payment difference in percentage points[D]: State: 1.19. 

Locality number[A]: State: 90; 
MSA in locality[B]: State: Mount Vernon- Anacortes, WA; 
Number of state's counties in locality: State: 1; 
Locality GAF[C]: State: 0.986; 
Average payment difference in percentage points[D]: State: 0.00. 

Locality number[A]:   Virginia: 98; 
MSA in locality[B]:   Virginia: Rest of Nation; 
Number of state's counties in locality:   Virginia: 29; 
Locality GAF[C]:   Virginia: 0.934; 
Average payment difference in percentage points[D]:   Virginia: 2.63. 

State: West Virginia; 
Locality number[A]: 10; 
MSA in locality[B]: Washington-Arlington-Alexandria, DC-VA-MD-WV; 
Number of state's counties in locality: 1; 
Locality GAF[C]: 1.116; 
Average payment difference in percentage points[D]: 2.22. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 54; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Wisconsin; 
Locality number[A]: 21; 
MSA in locality[B]: Chicago- Naperville-Joliet, IL-IN-WI; 
Number of state's counties in locality: 1; 
Locality GAF[C]: 1.072; 
Average payment difference in percentage points[D]: 3.10. 

Locality number[A]: State: 50; 
MSA in locality[B]: State: Minneapolis- St. Paul-Bloomington, MN-WI; 
Number of state's counties in locality: State: 2; 
Locality GAF[C]: State: 1.019; 
Average payment difference in percentage points[D]: State: 0.47. 

Locality number[A]: State: 82; 
MSA in locality[B]: State: Milwaukee- Waukesha-West Allis, WI; 
Number of state's counties in locality: State: 4; 
Locality GAF[C]: State: 0.988; 
Average payment difference in percentage points[D]: State: 0.27. 

Locality number[A]: State: 95; 
MSA in locality[B]: State: Madison, WI; 
Number of state's counties in locality: State: 3; 
Locality GAF[C]: State: 0.983; 
Average payment difference in percentage points[D]: State: 0.95. 

Locality number[A]:  : 98; 
MSA in locality[B]:  : Rest of Nation; 
Number of state's counties in locality:  : 62; 
Locality GAF[C]:  : 0.934; 
Average payment difference in percentage points[D]:  : 2.63. 

State: Wyoming; 
Locality number[A]: 98; 
MSA in locality[B]: Rest of Nation; 
Number of state's counties in locality: 23; 
Locality GAF[C]: 0.934; 
Average payment difference in percentage points[D]: 2.63. 

State: Nation; 
Locality number[A]: 98; 
MSA in locality[B]: [Empty]; 
Number of state's counties in locality: [Empty]; 
Locality GAF[C]: [Empty]; 
Average payment difference in percentage points[D]: 1.89. 

Source: GAO analysis of 2005 CMS, 2000 Census Bureau, and fiscal year 
2006 HUD data. 

Notes: Our analysis includes the 50 states and District of Columbia and 
excludes Puerto Rico and the U.S. Virgin Islands. The MSA-based 
iterative approach creates a single-MSA payment locality for any MSA 
whose GAF exceeds the weighted average GAF of all counties in the 
nation with lower GAFs by 5 percent or more. All remaining counties are 
grouped into the "Rest-of-Nation" locality. If a state does not have 
any MSAs whose GAF exceeds the weighted average GAF of all counties in 
the nation with lower GAFs by 5 percent or more, the entire state is 
grouped into the "Rest-of-Nation" locality. 

[A] The locality number is relative on a national basis. That is, 
locality 1 has the highest GAF in the United States, locality 2 has the 
second-highest GAF, and so on. Locality 98 represents counties that 
were grouped into the "Rest-of-Nation" locality. 

[B] In the case that an MSA crosses state lines, it is listed under 
each state that it is part of. MSA names are those published by the 
Office of Management and Budget as of December 2005. 

[C] We calculated the locality GAF as the average county-specific GAF 
of counties in the locality, weighted by county RVUs. Our formula for 
calculating the locality GAF is the same as that used by CMS. 

[D] Payment difference compares the costs physicians incur for 
providing services in different geographic areas (the county-specific 
GAF) with the geographic adjustment that Medicare applies to those 
areas (the locality GAF). We calculated payment difference as the 
absolute value of the locality GAF minus the county-specific GAF, 
divided by the county-specific GAF. In calculating the average payment 
difference, each county's payment difference was weighted by county 
RVUs. 

[End of table] 

[End of section] 

Appendix III: Comments from the Centers for Medicare & Medicaid 
Services: 

Department Of Health & Human Services: 
Centers for Medicare & Medicaid Services: 
Administrator: 
Washington, DC 20201: 

Date: May - 4 2007: 

To: A. Bruce Steinwald: 
Director, Health Care: 
Government Accountability Office: 

From: Leslie V. Norwalk, Esq: 
Acting Administrator: 

Subject: Government Accountability Office (GAO) Draft Report: 
"Medicare: Geographic Areas Used to Adjust Physician Payments for 
Variation in Practice Costs Should Be Revised." (GAO-07-466): 

Thank you for the opportunity to review and comment on the subject GAO 
draft report. 

The Medicare statute requires that physician fee schedule payments be 
adjusted for certain differences in the relative costs among areas. 
Specifically, the statute requires an adjustment which reflects 
differences among areas for the relative costs of the mix of goods and 
services comprising practice expenses (other than malpractice expenses) 
compared to the national average. The statute also requires adjustment 
for the relative costs of malpractice expenses among areas compared to 
the national average. The statute also requires adjustment for one- 
quarter of the difference between the relative value of physicians' 
work effort among areas and the national average of such work effort. 

The physician work component represents 52.466 percent of the national 
average fee schedule payment amount. Thus, the statutory requirement 
for geographic adjustment of only one-quarter to the physician work 
component means that, on average, only 13.117 percentage points of 
physician work are geographically adjusted, and 39.349 percentage 
points are not adjusted and represent a national fee schedule. 

In addition, the practice expense component represents 43.669 percent 
of the national average fee schedule payment amount. Practice expenses 
are comprised of nonphysician employee compensation, office expenses 
(including rent), medical equipment, drugs and supplies, and other 
expenses. Only the categories of nonphysician employee compensation and 
rents are geographically adjusted. Such categories represent, on 
average, 30.862 percentage points of the total practice expense, and 
12.807 percent of practice expenses are not geographically adjusted. 

In total, more than half (52.I56 percent) of the average physician fee 
schedule amount is a national payment and not geographically adjusted. 
This is an important note to place into context any discussion of 
physician payment localities. 

Currently there are 89 Medicare physician payment localities to which 
geographic practice cost indices (GPCIs) are applied. The structure of 
the payment localities has been in place since I998. Over time, 
changing demographics and local economic conditions may have lead to 
variations in practice costs within payment locality boundaries. The 
Centers for Medicare & Medicaid Services (CMS) is concerned about the 
potential impact of these variations and has been studying this issue 
and potential alternatives for a number of years. However, because 
changes to the GPCIs must be applied in a budget neutral manner (and 
under the current locality system, budget neutrality results in 
aggregate payments within each State remaining the same), there are 
significant redistributive effects to any change. Therefore, because of 
this redistributive impact, we have looked for support from an impacted 
state, such as from a State medical association, before proposing to 
make changes to payment localities in a state. The GAO report considers 
these issues and offers recommendations to CMS. We have some concerns 
about the recommendations and specific points made in the report. 

Analytic Basis: 

The report uses county level data as the "gold standard" for 
comparison. The report compares a GPCI for each county to the GPCI of 
the locality in which the county in located. The standard of "accurate" 
payment is the degree of congruence between these two figures. Use of 
the county as the gold standard implies that county level data are 
measured with absolute precision. Several caveats are important. First, 
the data used are only "proxies" for physician work, employee 
compensation and rents. That is, wage data for various categories of 
employees are used to proxy the wages of physician employees. Second, 
even the data used for such proxies are based on actual Census data 
only for a limited number of counties. Data for more than 90 percent of 
counties are based on proxies based on larger geographic areas (e.g., 
data for all rural areas in a state combined are used to proxy the 
values for each rural county in a state). We are concerned that the 
report purports to present such definitive conclusions about payment 
"accuracy" without any caveats to indicate that the underlying data are 
necessarily proxies for actual costs. 

Impact of the GAO proposals: 

The report finds that I4 percent of counties are affected by what are 
characterized as "inaccurate" payments, and makes recommendations about 
possible changes to the payment localities. The GAO's characterization 
of these payments as "inaccurate" is highly inappropriate and 
potentially problematic. We are concerned that a finding by the GAO 
that certain payments are "inaccurate" could be construed to mean that 
there has been an overpayment for which recoupment and other possible 
remedies and sanctions should be pursued. The GAO study did not review 
or consider whether claims submitted by physicians in these counties 
are paid properly. Rather, there is every indication that such claims 
were paid in accordance with current Medicare policy, including 
policies in effect regarding the use of geographic areas in the 
calculation of GPCIs. We believe it would be more appropriate and 
technically accurate for the report to indicate that the proxies for 
costs in these counties are above or below the proxies for average 
costs for the area analyzed. 

We are also concerned that the report does not sufficiently account for 
the impact the recommended changes would have on physicians. "Budget 
neutrality" using the existing data sources is applied at the State 
level. 

Thus, if we make changes that increase payments to physicians in some 
counties in a State, those same changes will reduce payments to 
physicians in other counties in the State. This report does not 
sufficiently convey the extent to which physician payments in certain 
areas would be reduced under the various options. We are concerned that 
neither the summary of "What GAO Found" nor the "Conclusion" makes 
clear that any change to increase payments in some areas would result 
in significant reductions in payments in others. We believe that the 
report should be transparent about the nature and extent of the payment 
reductions that would occur, particularly at the county level, under 
the options analyzed. We believe it would be particularly important to 
point out the impact of reductions in rural areas, i.e., the urban-
rural payment differences that would result in rural states that are 
currently statewide localities. Since GAO uses the county as the basis 
far analysis, GAO should have the data to determine and discuss the 
changes that would occur at the county level for both the counties that 
would receive higher and lower payments. The report should present both 
state and county level impacts of the options analyzed. 

Administrative Burden: 

In the report, the GAO references telephone conversations that GAO 
staff had with carrier and CMS staff regarding the administrative 
burden its recommendations would have on the agency. GAO concluded that 
there would be a one time, minimal administrative burden. CMS believes 
that the burden would be more significant than what is presented in 
this draft report. Changing localities requires reprogramming systems 
and extensive provider education, both of which are expensive and 
burdensome administrative activities that can last for a significant 
period of time. Because we receive claims for payment that cross 
calendar years, carriers must maintain payment files for the two 
different years. Locality changes present administrative challenges to 
ensure that the pricing file for the correct locality for a physician 
in each year is used to make payment. 

In addition, the GAO report does not point out the potential 
implications of an increased number of localities. In contrast to an 
institutional provider that furnishes services in a fixed location, 
physicians (and other health care professionals paid under the 
physician fee schedule) often practice in multiple locations. Thus, 
there are different considerations when evaluating the effect of 
locality changes for physicians than for institutional providers. The 
more localities that exist, the more borders exist. Physicians often 
practice in multiple office settings which often cross localities. The 
more localities, the more opportunities exist to inappropriately submit 
bills with the place of service being the higher paid locality. 
Consider an ophthalmologist who works in three different offices on 
different days of the week. If the different offices are located in 
three different payment localities, each claim should be filed based on 
the specific location where the service is furnished. Thus, a physician 
with an office in each of three different localities should be filing 
claims based on three different localities. An increase in the number 
of localities will increase the likelihood of this scenario, thereby 
increasing administrative costs for physicians, especially if they have 
a single billing function for their practice. Even if a physician tried 
to bill properly, locality changes and an increased number of 
localities could increase administrative costs and lead to more 
incorrect billings. It would be difficult for carriers to monitor and 
audit the accuracy of payment based on the specific branch of a 
physician's office in which each service is furnished. Thus, creation 
of a larger number of localities creates more opportunities for 
erroneous billing, unintended or intended. We believe it is important 
for the report to point out these potential on-going administrative 
expenses. 

California Medical Association Proposal: 

In discussing that there have been no recent changes to the payment 
locality structure, the report refers to a proposal made to CMS by the 
California Medical Association (CMA) to change certain aspects of the 
payment locality structure in California, and indicates that the CMA 
proposal was rejected by CMS. Specifically, this proposal by the CMA 
suggested that CMS remove ten high cost counties from the "Rest of 
California" payment locality. We believe there are a number of 
significant problems with the CMA proposal as we outlined in the 
November 2I, 2005 physician fee schedule final rule (70 FR 7015I) that 
prevented us from implementing these suggested changes--most notably 
that the proposal is inconsistent with our statutory authority. Thus, 
we do not believe the CMS rejection of the CMA proposal demonstrates a 
reluctance on the part of the agency to consider and adopt changes in 
payment localities. 

GAO Recommendation: 

The GAO recommends that CMS examine and revise the physician payment 
localities using an approach that is uniformly applied to all states 
and based on the most current data. 

CMS Response: 

The CMS considers payment locality issues as concerns are raised to us 
by interested parties and based on our own initiative. Because locality 
changes are redistributive, we have looked to State Medical 
Associations for leadership and support, but we also seek input from a 
broad range of stakeholders, including urban and rural physicians in a 
State. In the future, we will evaluate and consider applying changes 
uniformly to the locality structure across all the states; however, we 
note that we will also give full consideration to the redistributive 
impacts and administrative burdens of such an approach. 

GAO Recommendation: 

The GAO recommends that CMS review the payment locality structure every 
ten years and make changes accordingly. 

CMS Response: 

The CMS considers the payment locality issue as concerns are raised to 
us by interested parties and based on our own initiative. We believe 
this is a more flexible and efficient approach than doing a review 
every ten years. 

We appreciate the work that GAO has done in examining this issue. The 
analysis will serve as a helpful resource as we continue to examine 
payment locality alternatives. 

[End of section] 

Appendix IV: GAO Contact and Staff Acknowledgments: 

GAO Contact: 

A. Bruce Steinwald, (202) 512-7114 or steinwalda@gao.gov: 

Acknowledgments: 

In addition to the contact named above, Thomas A. Walke, Assistant 
Director; Margaret S. Colby; Jennifer DeYoung; and Joanna L. Hiatt made 
major contributions to this report. 

FOOTNOTES 

[1] See 61 Fed. Reg. 34,616-17 (1996). 

[2] See 61 Fed. Reg. 34,616 (1996). 

[3] Health Economics Research, Inc., Assessment and Redesign of 
Medicare Fee Schedule Areas (Localities) (Waltham, Mass., 1995). 

[4] Medicare Part B provides coverage for certain physician, outpatient 
hospital, laboratory, and other services to beneficiaries who pay 
monthly premiums. 

[5] Specifically, we calculated payment difference as the absolute 
value of the county's locality GAF minus its county-specific GAF, 
divided by its county-specific GAF. 

[6] Of the 2 additional payment localities, one encompasses Puerto Rico 
and one encompasses the U.S. Virgin Islands. The District of Columbia 
payment locality currently consists of the District, five Virginia 
counties, and two Maryland counties. These Virginia and Maryland 
counties are excluded from the Virginia and Rest-of-Maryland payment 
localities. 

[7] See Pub. L. No. 101-239, § 6102(a), 103 Stat. 2106, 2169-84 (adding 
section 1848 of the Social Security Act) (codified at 42 U.S.C. § 1395w-
4 (2000)). 

[8] By law, these payment rates were updated by 1.5 percent in 2004 and 
2005, and by 0 percent in 2006 and 2007. See Pub. L. No. 108-173, § 
601(a)(1), 117 Stat. 2066, 2300-01, Pub. L. No. 109-171, § 5104, 120 
Stat. 4, 40-41, Pub. L. No. 109-432, Div. B, Tit. I, § 101, 120 Stat. 
2922, 2975. 

[9] A more complete description is "office or other outpatient visit 
for the evaluation and management of an established patient." In the 
American Medical Association coding system, the current procedural 
terminology (CPT) code for this service is 99213. 

[10] The full description for this procedure, CPT code 96425, is 
"infusion technique, initiation of prolonged infusion (more than 8 
hours) requiring the use of a portable or implantable pump." 

[11] In 2005, we found that because Medicare revenue constitutes only 
one-quarter of physicians' income, on average, the effect of the GPCIs 
on physicians' income is limited. Income is also only one of several 
factors that affect physicians' location decisions and employers' 
efforts to recruit and retain physicians. See GAO, Medicare Physician 
Fees: Geographic Adjustment Indices Are Valid in Design, but Data and 
Methods Need Refinement, GAO-05-119 (Washington, D.C.: Mar. 11, 2005). 

[12] In 2005, we reported on CMS's methods for calculating the GPCIs. 
See GAO-05-119. 

[13] By law, the work GPCI incorporates only one-quarter of the 
relative cost of physicians' work, compared to the national average, 
meaning that a 20 percent difference in costs results in a 5 percent 
difference in the work GPCI. In addition, from 2004 through 2006, the 
Medicare Prescription Drug, Improvement, and Modernization Act of 2003 
(MMA) established a floor of 1.0 for any locality where the work GPCI 
would otherwise fall below 1.0. Pub. L. No. 108-173, § 412, 117 Stat. 
at 2274 (codified at 42 U.S.C. § 1395w-4(e) (1)(E)). This provision was 
extended through 2007 by the Tax Relief and Health Care Act of 2006, 
Pub. L. No. 109-432, Div. B, Tit. I, § 102, 120 Stat. 2922, 2981. 

[14] From 2004 through 2005, MMA set the work, practice expense, and 
malpractice expense GPCIs for the state of Alaska at 1.67 if any GPCI 
would otherwise be less than 1.67. Pub. L. No. 108-173, § 602, 117 
Stat. at 2301 (codified at 42 U.S.C. § 1395w-4(e)(1)(G)). 

[15] Across the United States, Medicare's 2007 locality GAFs vary, 
ranging from a minimum of 0.905 for the Arkansas payment locality, to a 
maximum of 1.265 for the Santa Clara, California, payment locality. The 
GAF is not used to compute fees for specific physician services. 

[16] These percentages do not total to 100 percent due to rounding. The 
percentages correspond to shares of the average cost of running a 
physician practice. 

[17] See Pub. L. No. 101-239, § 6102(a), 103 Stat. 2106, 2169-84 
(adding section 1848 of the Social Security Act) (codified at 42 U.S.C. 
§ 1395w-4 (2000)). 

[18] These six states were: Iowa (1995), Minnesota (1992), Nebraska 
(1992), North Carolina (1994), Ohio (1994), and Oklahoma (1992). 

[19] CMS stated that it did not set an absolute numerical level of 
support because of the uniqueness of the locality structure in each 
state; it said that setting a numerical level of support would limit 
the discretion required for it to properly evaluate each request. It 
did, however, identify four elements that it would require, at a 
minimum, for overwhelming support to be demonstrated: (1) a formal 
request for the change from the state medical association, including a 
copy of a recently adopted resolution requesting the change; (2) the 
number of licensed actively practicing physicians in the state and the 
number that were society members; (3) the number of society members in 
each local (county) society; and (4) letters from the local societies 
representing physicians in areas experiencing a payment decrease 
indicating the level of support for the change. 59 Fed. Reg. 63,416 
(1994). 

[20] Specifically, CMS stated that payment localities had not been 
established on a consistent geographic basis. 61 Fed. Reg. 34,615 
(1996). Some were based on zip codes or MSAs, while others were based 
on political boundaries, such as cities, counties, or states. 56 Fed. 
Reg. 25,832 (1991). 

[21] In addition, the District of Columbia locality currently consists 
of the District, five Virginia counties, and two Maryland counties. 

[22] See 58 Fed. Reg. 38,003 (1993). 

[23] The average GAF was weighted by locality RVUs. 

[24] CMS's contractor calculated "payment inaccuracy" in a different 
manner than we calculate "payment difference" in this report. CMS's 
contractor calculated payment inaccuracy as the absolute value of the 
county's locality GAF minus its county-specific GAF. See Health 
Economics Research, Inc., Assessment and Redesign of Medicare Fee 
Schedule Areas (Localities). We calculated payment difference as the 
absolute value of the county's locality GAF minus its county-specific 
GAF, divided by its county-specific GAF. CMS stated that in Missouri, 
the methodology would have resulted in significant payment inaccuracies 
because it failed to separate the Kansas City and St. Louis areas from 
the rest of the state. In Massachusetts, the agency stated that the 
methodology would have failed to separate the high-cost Boston area 
from lower-cost central and western Massachusetts. In Pennsylvania, it 
stated the methodology would have continued to inappropriately group 
Pittsburgh with more expensive Philadelphia. 61 Fed. Reg. 34,620 
(1996). 

[25] CMS generally created separate localities for the central counties 
of the highest-cost metropolitan areas in each state and grouped all 
other counties into a Rest-of-State locality. 

[26] Since 1997, CMS has indicated that only one state medical 
association has petitioned for a change to the payment localities. In 
2004, California's state medical association petitioned for a change. 
CMS denied its petition, stating that CMS did not have the statutory 
authority to make the specific change the association had requested. 

[27] Our analysis excluded 2 of the 89 physician payment localities: 
Puerto Rico and the U.S. Virgin Islands. 

[28] GAO-05-119. 

[29] These four states are: Montana, Rhode Island, South Carolina, and 
Wyoming. 

[30] These nine states are: Colorado, Connecticut, Delaware, Minnesota, 
New Hampshire, New Mexico, North Carolina, Vermont, and Virginia. 

[31] These 21 states are: Alabama, Alaska, Arkansas, Arizona, Hawaii, 
Idaho, Indiana, Iowa, Kansas, Kentucky, Mississippi, Nebraska, Nevada, 
North Dakota, Ohio, Oklahoma, South Dakota, Tennessee, Utah, West 
Virginia, and Wisconsin. 

[32] These 16 states are: California, Florida, Georgia, Illinois, 
Louisiana, Maine, Maryland, Massachusetts, Michigan, Missouri, New 
Jersey, New York, Oregon, Pennsylvania, Texas, and Washington. Although 
most of these states retain multiple localities under each of these 
three approaches, there are several exceptions: New Jersey and Oregon 
become statewide localities under the county-based iterative approach, 
and Missouri becomes a statewide locality under the MSA-based iterative 
approach. 

[33] The method we used regrouped payment localities into GAF ranges 
using a 1-percent threshold. Under this method, the lowest county- 
specific GAF that qualified to become a single-county payment locality 
becomes the lower boundary for the first regrouped GAF range. This 
lower boundary is increased by 1 percent to create the upper boundary 
of the first regrouped GAF range. All single-county payment localities 
with a GAF in that GAF range are grouped into the same locality. The 
first GAF that exceeds the upper boundary of the first regrouped GAF 
range becomes the lower boundary of a second regrouped GAF range and is 
increased by 1 percent to create the upper boundary of this range. The 
process is repeated until all single-county payment localities in the 
state are assigned to new regrouped payment localities. 

[34] See Health Economics Research, Inc., Assessment and Redesign of 
Medicare Fee Schedule Areas (Localities) (Waltham, Mass., 1995). 

[35] In calculating the GAF, each of the GPCIs is weighted by the 
percentage of costs accounted for by its corresponding relative value 
unit--a measure of the relative costliness of providing a particular 
service. On average, across all services, work represents 52.5 percent 
of costs, practice expense represents 43.7 percent, and malpractice 
expense represents 3.9 percent. These percentages do not total to 100 
percent due to rounding. 

[36] From 2004 through 2006, the Medicare Prescription Drug, 
Improvement, and Modernization Act of 2003 (MMA) established a floor of 
1.0 for any locality where the work GPCI would otherwise fall below 
1.0. Pub. L. No. 108-173, § 412, 117 Stat. at 2274 (codified at 42 
U.S.C. § 1395w-4(e)(1)(E)). This provision was extended through 2007 by 
the Tax Relief and Health Care Act of 2006, Pub. L. No. 109-432, Div. 
B, Tit. I, § 102, 120 Stat. 2922, 2981. From 2004 through 2005, MMA set 
the work, practice expense, and malpractice expense GPCIs for the state 
of Alaska at 1.67 if any GPCI would otherwise be less than 1.67. Pub. 
L. No. 108-173, § 602, 117 Stat. at 2301 (codified at 42 U.S.C. §1395w- 
4(e)(1)(G)). We used the 2005 locality GAF before the work GPCI floor 
and Alaska adjustments were put into place because the work GPCI floor 
is set to expire at the end of 2007 and the Alaska adjustments expired 
in 2005. 

[37] These six categories are: architecture and engineering; 
computer, mathematical, and natural sciences; social scientists, social 
workers, and lawyers; education, training, and library; registered 
nurses and pharmacists; and writers, artists, and editors. 

[38] The CMS and HUD data we obtained are more recent than the data CMS 
used to calculate the 2005 GPCIs. 

[39] Our analysis excluded 2 of the 89 physician payment localities: 
Puerto Rico and the U.S. Virgin Islands. 

[40] Although our county-based approaches generate localities that do 
not cross state lines, it would also be possible to create county-based 
localities that do cross state lines. 

[41] Although our MSA-based approach generates payment localities that 
do cross state lines, it would also be possible to create MSA-based 
payment localities that do not cross state lines. 

[42] Although our range methodology did not require that all counties 
in a payment locality be contiguous, it would be possible to make 
geographic contiguity a priority. 

[43] In general, lower thresholds generate more payment localities and 
further improve payment accuracy. Although the specific results would 
differ if an alternate threshold were used, the general advantages and 
disadvantages of each approach would remain the same. 

GAO's Mission: 

The Government Accountability Office, the audit, evaluation and 
investigative arm of Congress, exists to support Congress in meeting 
its constitutional responsibilities and to help improve the performance 
and accountability of the federal government for the American people. 
GAO examines the use of public funds; evaluates federal programs and 
policies; and provides analyses, recommendations, and other assistance 
to help Congress make informed oversight, policy, and funding 
decisions. GAO's commitment to good government is reflected in its core 
values of accountability, integrity, and reliability. 

Obtaining Copies of GAO Reports and Testimony: 

The fastest and easiest way to obtain copies of GAO documents at no 
cost is through GAO's Web site (www.gao.gov). Each weekday, GAO posts 
newly released reports, testimony, and correspondence on its Web site. 
To have GAO e-mail you a list of newly posted products every afternoon, 
go to www.gao.gov and select "Subscribe to Updates." 

Order by Mail or Phone: 

The first copy of each printed report is free. Additional copies are $2 
each. A check or money order should be made out to the Superintendent 
of Documents. GAO also accepts VISA and Mastercard. Orders for 100 or 
more copies mailed to a single address are discounted 25 percent. 
Orders should be sent to: 

U.S. Government Accountability Office 441 G Street NW, Room LM 
Washington, D.C. 20548: 

To order by Phone: Voice: (202) 512-6000 TDD: (202) 512-2537 Fax: (202) 
512-6061: 

To Report Fraud, Waste, and Abuse in Federal Programs: 

Contact: 

Web site: www.gao.gov/fraudnet/fraudnet.htm E-mail: fraudnet@gao.gov 
Automated answering system: (800) 424-5454 or (202) 512-7470: 

Congressional Relations: 

Gloria Jarmon, Managing Director, JarmonG@gao.gov (202) 512-4400 U.S. 
Government Accountability Office, 441 G Street NW, Room 7125 
Washington, D.C. 20548: 

Public Affairs: 

Paul Anderson, Managing Director, AndersonP1@gao.gov (202) 512-4800 
U.S. Government Accountability Office, 441 G Street NW, Room 7149 
Washington, D.C. 20548: