A new approach to price measures for health care.
Smith, Shelly
AS HEALTH CARE spending continues to grow, the Bureau of Economic
Analysis (BEA) plans to develop a health care satellite account, which
is a detailed set of statistics that would allow economists to better
assess health care spending and the effects on the U.S. economy. In
particular, the planned health care account would provide statistics
that allow health economists to better analyze the returns to treatments
of disease and the sources of changes in health care costs. (1)
Critical to the development of these supplemental measures is the
development of appropriate price indexes. (2) Such indexes are important
because they allow economists to assess the extent to which increases in
spending reflect increases in actual services versus increases in
prices; that is, they allow for estimates of "real" spending.
With improved price measures as a key goal, BEA's planned health
care account will feature a new approach to analyzing expenditures: it
will detail spending according to bundles of treatments for specific
diseases, called the disease-based approach in this article. This
contrasts with the conventional approach-called a treatment-based
approach in this article-which details spending according to specific
treatments and procedures, such as a doctor's office visit or a
particular drug.
The disease-based approach has been recommended by leading
economists and has been explored for specific diseases, such as heart
disease, cataracts, and mental conditions. (3) A key benefit of this new
approach is that it captures the critical substitution effects that the
conventional approach misses; that is, it can account for shifts to
lower cost, new, or alternative treatments.
This Research Spotlight provides a short recap of recent research
by Ana Aizcorbe of the Bureau of Economic Analysis and Nicole Nestoriak
of the Bureau of Labor Statistics (Aizcorbe and Nestoriak 2008). The
paper is available at www.bea.gov under "Papers and Working
Papers." Building on existing research, the authors developed a
price index that redefines the medical care "good" as the
bundle of treatments for a given disease and calculates price measures
for spending on such bundles. Based on a sample of private medical
insurance claims, the research found that substitution indeed has had a
profound impact on health care prices, defined in the new way,
generating substantial cost savings. From 2003 to 2005, prices
calculated using the disease-based approach increased at an average
annual rate of 4.4 percent, while prices of individual treatments rose
at an average annual rate of 6.1 percent.
Because medical care accounts for 16 percent of gross domestic
product (GDP), this slower rate of price increase translates into a
slower rate of increase for BEA's gross domestic purchases prices
and GDP prices and a higher rate of real GDP growth.
Background
Health economists have long advocated pricing the treatment of a
condition rather than the individual medical services provided
(Scitovsky 1964). Several recent studies have defined the health care
"good" as the entire bundle of treatments for a given medical
condition, such as a heart attack or a bad knee. Capturing the price of
treating a condition according to this new approach would require
tracking the price of the bundle rather than the separate treatments.
Such an approach would better reflect the dynamic nature of the
health care industry. It would capture any market shifts across
treatments, and it would capture the emergence of new treatments, which
can change the prices of the bundle without changing the price of
individual treatments.
There are several examples of substitution in health care services.
Consider the treatment of depression. In recent years, there has been a
shift away from talk therapy to lower cost drug therapy. Conventional
price indexes that track these two treatments separately cannot account
for the substitution that has occurred. As another example, knee surgery
used to involve a costly overnight stay in a hospital but now is often
performed on an outpatient basis, resulting in a lower cost for the
treatment of the bad knee. By tracking the cost of hospital stays
separately from the cost of outpatient services, standard medical care
price indexes cannot capture the cost savings that arise from the change
in treatments.
So how should one define the price? Taking the patient's
perspective, one would define the price as whatever the patient pays for
the service. This is the perspective taken by the consumer price index,
which aims to track payments for health insurance and out-of-pocket
payments for treatments. Instead, Aizcorbe and Nestoriak take a provider
perspective and define the "price" as the amount of revenues
received by providers from all payers--the perspective most suited for
the national accounts. To measure the total costs of all treatments for
a given disease, Aizcorbe and Nestoriak's approach would, in
theory, account for the total dollars received by the health care
system--that is, all providers taken together--for the treatment of some
condition over a given quarter divided by the number of patients
treated.
Algebraically,
[c.sub.d] = [[summation].sub.i]([c.sub.d,i] [x.sub.d,i])/[P.sub.d]
where, for a given quarter,
[c.sub.d,i] measures the cost of treatment i for condition d,
[x.sub.d.i] is the number of such treatments, and [P.sub.d] is the
number of patients under treatment for condition d.
A caveat: for the purposes of empirical work, Aizcorbe and
Nestoriak's research was based only on patients with private health
insurance, typically provided by employers. While the data were suitable
for the study, the empirical results cannot be generalized to the entire
health care economy.
Another caveat: most economists agree that price indexes should
account for major quality changes. For health care indexes, quality
refers to changes in health outcomes, that is, in the effectiveness of
specific treatments. (Berndt, Busch, and Frank, 2001). While many
previous detailed case studies adjusted for quality, the primary goal of
the indexes in Aizcorbe and Nestoriak's research is to account for
treatment substitution across a broad range of conditions. This
diversity of disease types raises difficulties in accounting for changes
in outcomes. Thus, their indexes are best viewed as
"quality-unadjusted" price indexes. To the extent that the
quality of care is increasing over time, these quality-unadjusted price
indexes will overstate true price growth and are best viewed as an upper
bound.
Empirical results
Aizcorbe and Nestoriak obtained data that included more than 700
million claims from a sample of Health Maintenance Organization (HMO),
Preferred Provider Organization (PPO), and Point of Service (POS) plans
for 2003-2005. (4) These data were processed using an episode grouper, a
computer algorithm developed by Symmetry/Ingenix, that allocated the
claims data to more than 500 disease groups. The grouper allowed the
authors to construct prices for the disease categories and to create an
aggregate price index that covers all conditions. (5)
In addition, the authors constructed a treatment-based price index
similar in concept to producer price indexes constructed by the Bureau
of Labor Statistics in order to compare the disease-based estimates with
a more conventional approach to measuring prices of medical care. The
results are shown in chart 1. (6)
[GRAPHIC 1 OMITTED]
The disease-based index, which takes treatment substitution into
account, grew at a slower rate from 2003 to 2005 than the
treatment-based price index (4.4 percent versus 6.1 percent at a
compound annual rate). These findings are consistent with previous
cost-of-disease studies. From a national accounts perspective-assuming
the result holds across all types of patients and not just the
commercially insured--the 1.7-percentage-points difference in the
deflator for medical care spending would raise real GDP in a given year
by as much as a quarter of a percentage point.
The authors' results, summarized in table 1, are consistent
with many health economists' expectations: when medical care
services are redefined as the treatment of a medical condition, prices
are shown to increase at a slower rate than when services are defined as
specific treatments.
Of the 19 disease categories shown, 15 showed smaller price
increases over the 3-year period when measured using the index based on
the bundle of treatments; these categories accounted for 90.3 percent of
total medical care spending for this sample of patients.
But is this lower rate of inflation coming from a substitution of
treatments? Aizcorbe and Nestoriak developed a decomposition of the
differences between the indexes, which allowed them to measure changes
in treatment use. This decomposition is presented in table 2. A finding
that a certain type of treatment is being used less intensively is
indicated by a negative value (conversely, a positive value is evidence
of more intense use of a treatment). Across a disease category, a
combination of negative and positive values across treatment types
indicates treatment substitution.
The decomposition confirms the presence of treatment substitution
for several categories: shifts from office visits and hospital visits
towards drugs for psychiatric conditions, shifts from care at hospitals
towards care at ambulatory surgical centers for orthopedic and
gastroenterological conditions, and similar shifts in endocrinology (a
disease class that includes diabetes and obesity).
In four categories, in which the disease-based indexes showed
faster rates of change than the treatment indexes (obstetrics,
neonatology, infectious diseases, and chemical dependency), these cost
increases stemmed mainly from increased inpatient hospital use (for
chemical dependency, increases in prescription drug use and emergency
room visits also contributed).
In cardiology, the decomposition also reveals another pattern: a
large decline in the use of inpatient care with little change in the
intensity of other treatments. The authors present two possible
explanations for this outcome. One explanation is that although patients
appear to have as many office visits and purchase as many prescriptions
as they did in 2003, perhaps the 2005 treatments were better, obviating
the need for inpatient care and, thus, giving rise to cost savings. The
other explanation is simply that patients received less care in 2005
than in 2003, perhaps because the care in 2003 was excessive or perhaps
because the quality of care declined. This latter possibility
underscores the importance of accounting for outcomes; a decline in the
quality of care should be recorded as a decline in real services, not
prices, while delivering the same quality of care with fewer treatments
should be re corded as a decline in price. As the authors note, it is
impossible to distinguish between the two possibilities without
accounting for outcomes. The assumption underlying the authors'
conclusions is that, on average, the quality of care is increasing over
time.
Conclusion and future work
Aizcorbe and Nestoriak's paper represents the first step in
preparing alternative measures of health care spending in the national
accounts. The authors show that treatment substitution is a significant
issue over a broad range of conditions and that the effects are large
enough that they could meaningfully affect real GDP growth. Their
research, however, is preliminary and leads to other questions. Do these
conclusions hold for the entire population? How reliable are the episode
groupers in allocating medical care spending into disease categories?
Future research will involve assessing the sensitivity of these price
indexes to the choice of episode grouper and exploring the costs of
treatments faced by other significant segments of the population-namely
Medicare and Medicaid recipients, the uninsured, and the
institutionalized.
References
Aizcorbe, Ana M., and Nicole Nestoriak. 2008. "The importance
of Pricing the Bundle of Treatments." BEA working paper no.
2008-04; www.bea.gov.
Aizcorbe, Ana M., Bonnie A. Retus, and Shelly Smith. 2008.
"Toward a Health Care Satellite Account." SURVEY OF CURRENT
BUSINESS 88 (May): 24-30.
Berndt, Ernst R., Susan H. Busch, and Richard G. Frank. 2001.
"Treatment Price Indexes for Acute Phase Major Depression." In
Medical Care Output and Productivity, edited by David M. Cutler and
Ernst R. Berndt, 463-505. Studies in Income and Wealth, vol. 62.
Chicago: University of Chicago Press.
Curler, David M., Mark McClellan, Joseph P. Newhouse, and Dahlia Remler. 2001. "Pricing Heart Attack Treatments." In Medical
Care Output and Productivity, edited by David M. Cutler and Ernst R.
Berndt, 305-347. Studies in Income and Wealth, vol. 62. Chicago:
University of Chicago Press.
National Research Council. 2009. Strategies for a BEA Health Care
Satellite Account: Summary of a Workshop. Christopher Mackie,
Rapporteur. Steering Committee for the Workshop to Provide Guidance for
Development of a Satellite Account at the Bureau of Economic Analysis.
Committee on National Statistics, Division of Behavioral and Social
Sciences and Education. Washington, DC: The National Academies Press.
Scitovsky, Anne A. 1964. "An Index of the Cost of Medical
Care--A Proposed New Approach." In The Economics of Health and
Medical Care, edited by Solomon J. Axelrod, 128-142. Ann Arbor:
University of Michigan, Bureau of Public Health Economics.
Shapiro, Irving, Matthew D. Shapiro, and David W. Wilcox. 2001.
"Measuring the Value of Cataract Surgery." In Medical Care
Output and Productivity, edited by David M. Cutler and Ernst R. Berndt,
411-437. Studies in Income and Wealth, vol. 62. Chicago: University of
Chicago Press.
(1.) See Aizcorbe, Retus, and Smith (2008) for a description of
BEA's proposed health care spending satellite account.
(2.) BEA's effort to improve existing price measures for
health care services is partly funded by a grant from the National
Institutes of Health and complements research currently underway at the
Bureau of Labor Statistics (BLS). See National Research Council (2009)
for a description of recent work at BLS.
(3.) See Cutler, McClellan, Newhouse, and Remler (2001) for an
analysis of heart attacks, Shapiro, Shapiro, and Wilcox (2001) for an
analysis of cataracts, and Berndt, Busch, and Frank (2001) for an
analysis of depression.
(4.) The data were purchased from Pharmetrics, Inc.
(5.) Episode groupers are just one means of allocating data into
disease categories. See Aizcorbe, Retus, and Smith (2008) for a
discussion of other ways to allocate medical care spending.
(6.) Laspeyres indexes are shown. In addition, the authors
calculated a Fisher ideal index; the results are nearly identical.
Table 1. Comparison of Disease-Based Price Indexes
With Treatment-Based Price Indexes
Average annual
growth rates,
2003:1-2005:IV
Share of (percent)
Disease category total
costs Disease- Treat- Difference
(percent) based ment-
index based
index
Orthopedics and
rheumatology 16.0 11.8 18.0 -6.2
Cardiology 10.6 1.7 17.5 -15.7
Gastroenterology 8.5 16.3 21.6 -5.2
Otolaryngology 8.3 9.2 14.8 -5.6
Gynecology 7.4 11.2 21.0 -9.8
Endocrinology 6.2 11.8 14.9 -3.1
Neurology 5.9 15.4 21.3 -5.9
Psychiatry 5.4 3.1 8.0 -4.9
Pulmonology 5.3 16.3 18.9 -2.6
Obstetrics 5.1 19.1 16.1 3.0
Dermatology 4.5 16.4 19.3 -3.0
Hematology 3.3 9.4 11.6 -2.3
Urology 3.1 7.0 15.8 -8.8
Neonatology 2.9 30.8 28.7 2.2
Hematology 2.7 18.8 22.2 -3.5
Ophthalmology 1.9 8.4 10.8 -2.4
Nephrology 1.2 3.6 10.2 -6.6
Infectious diseases 1.0 37.3 32.9 4.3
Chemical dependency 0.7 18.3 12.3 6.0
Table 2. Decomposition of Cost Savings From Treatment Substitution
[Percentage points]
Hospital
Difference
Disease category Inpatient Outpatient Emergency
room
Orthopedics and
rheumatology -6.2 -1.1 -2.8 -0.2
Cardiology -15.7 -11.6 -1.6 0.1
Gastroenterology -5.2 -1.3 -2.7 -0.1
Otolaryngology -5.6 0.1 -2.6 -0.2
Gynecology -9.8 -3.0 -2.8 0.1
Endocrinology -3.1 -2.8 -1.0 -0.1
Neurology -5.9 -0.5 -1.9 -0.3
Psychiatry -4.9 -1.0 -0.3 0.0
Pulmonology -2.6 0.7 -1.7 -0.5
Obstetrics 3.0 3.1 -0.5 0.2
Dermatology -3.0 0.7 -1.3 -0.3
Hepatology -2.3 0.3 -1.6 0.2
Urology -8.8 -3.0 -3.4 -0.2
Neonatology 2.2 2.1 -0.1 0.0
Hematology -3.5 -0.7 -2.3 0.0
Ophthalmology -2.4 -0.1 -2.1 -0.1
Nephrology -6.6 -0.2 -5.9 0.0
Infectious diseases 4.3 3.4 -0.7 0.3
Chemical dependency 6.0 2.4 -2.4 2.9
Prescrip-
Office tion
Disease category visits drugs Laboratory
Orthopedics and
rheumatology -1.4 -0.1 0.0
Cardiology -1.5 -0.1 0.1
Gastroenterology -2.0 -0.5 0.2
Otolaryngology -2.0 -0.8 0.1
Gynecology -3.0 -0.5 -0.1
Endocrinology -2.2 3.0 -0.1
Neurology -2.9 0.5 0.0
Psychiatry -5.3 2.3 0.0
Pulmonology -1.8 0.0 0.0
Obstetrics 0.0 -0.4 0.2
Dermatology -1.7 -1.0 0.3
Hepatology -0.5 -1.7 0.0
Urology -1.9 0.2 0.1
Neonatology 0.6 -0.1 0.0
Hematology -1.7 -0.4 0.1
Ophthalmology -0.6 -0.5 0.0
Nephrology -0.5 0.4 0.1
Infectious diseases -0.8 1.2 0.2
Chemical dependency -2.0 3.4 0.1
Home Ambulatory
care surgical Other
Disease category centers
Orthopedics and
rheumatology 0.6 0.2 -1.5
Cardiology 0.1 -0.1 -1.0
Gastroenterology 0.0 0.7 0.4
Otolaryngology 0.2 0.0 -0.3
Gynecology 0.0 -0.4 0.0
Endocrinology 0.5 -0.1 -0.4
Neurology 0.0 0.0 -0.8
Psychiatry 0.0 0.0 -0.7
Pulmonology 0.3 0.0 0.4
Obstetrics 0.1 -0.1 0.3
Dermatology 0.3 -0.6 0.6
Hepatology 0.0 0.2 0.9
Urology 0.1 -0.1 -0.6
Neonatology -0.3 0.0 0.0
Hematology 0.0 0.0 1.4
Ophthalmology 0.3 0.8 -0.2
Nephrology -0.2 -0.1 -0.3
Infectious diseases 0.6 0.0 0.0
Chemical dependency 0.0 0.1 1.5