Title: Managed Care and Medicare Expenditures
1Managed Care and Medicare Expenditures
- Health Economics Interest Group
- Seattle, WA
- Michael Chernew
- Phil DeCicca
- Robert Town
- June 24, 2006
2Overview
- Background
- Data and Analysis Sample
- Empirical Strategy
- Results
- Tentative Conclusions
3Background
- Investigate the existence and extent of managed
care spillovers in Medicare - We examine the impact of county-specific Medicare
HMO penetration on spending of FFS Medicare
beneficiaries - In particular, we try to identify the impact of
within-county changes in MC HMO penetration on
spending
4Background (cont)
- Existence of spillovers assumes connected
markets - Many pathways for spillovers
- Increased competition
- Changes in structure of delivery system
- Changes in practice patterns
- Previous work suggests spillovers exist
- Baker (1997, 1999) Bundorf et al. (2004)
5Data and Sample Info
- Medicare Current Beneficiary Study (MCBS)
- Cost and Use Files, 1994 to 2001
- Analysis Sample
- Exclude individuals administered a Facility
interview - Exclude individuals enrolled in HMOs
- Exclude counties that contribute less than two
cases per year, on average - Yields 60,067 cases from 293 counties
- Including 2.5 with zero expenditure
6Key Variables
- MCBS Variables
- Per-Person Total Annual Spending
- Various Broad Measures of Utilization
- Covariates including usual suspects and more
detailed measures of health status - County-level Variables
- Medicare HMO Penetration
- Payment Rates (AAPCC)
7Empirical Strategy
- We Estimate Models of the Form
- Log(Spend)ictd(MCHMO)ctXßµcateict
- X depends on specification
- µ and a are County and Year effects
- dlt0 implies the existence of spillover
8Empirical Strategy (Details)
- Two Models EstimatedShort Long
- Estimate models with and without zeroes
- Models estimated via OLS and IV
- We use the payment rate (AAPCC) and its square as
instruments for HMO penetration - As will see, strong relationship between payment
rate and penetration
9Estimates
- In general, OLS estimates practically small
- For example,
- Largest estimated effect suggests that a one
percentage point increase in MC HMO penetration
leads to an 0.3 percent decrease in spending by
FFS beneficiaries - Reduction ranges from 0.2 to 0.3 percent,
depending on specification
10Estimates (cont)
- OLS estimates, however, may be biased
- E.g., HMOs may enter areas based on cost growth
or characteristics correlated with it - Sorting into high cost growth areas would tend to
attenuate measured spillover effects - Sorting into low cost growth areas would tend to
overstate the magnitude of spillovers
11Estimates (cont)
- Overview of Remaining Estimates
- IV (First Stage)
- IV (Structural Equation)
- Utilization Models
- Sensitivity Checks
- Where are savings being generated?
- High-Use vs. Low-Use Beneficiaries
12Estimates (cont)
Short Long
Payment Rate -0.00137 (7.76) -0.00137 (7.81)
(Payment Rate)2 0.0000167 (6.06) 0.0000167 (6.11)
--First-stage estimates strong in all specs. --Partial R2 0.14 and First-Stage F-stats 33. --Upshot Payment rate very strong predictor --First-stage estimates strong in all specs. --Partial R2 0.14 and First-Stage F-stats 33. --Upshot Payment rate very strong predictor --First-stage estimates strong in all specs. --Partial R2 0.14 and First-Stage F-stats 33. --Upshot Payment rate very strong predictor
13Estimates (cont)
Short Long
Without Zeroes -0.0165 (3.10) -0.0138 (3.19)
With Zeroes -0.0183 (2.53) -0.0142 (2.52)
--IV estimates (d) from four separate models --Std. errors adjusted for clustering at county level --IV estimates (d) from four separate models --Std. errors adjusted for clustering at county level --IV estimates (d) from four separate models --Std. errors adjusted for clustering at county level
14Estimates (cont)
- Interpretation
- Estimates suggest a one pct. point increase in
HMO penetration leads to between 1.3 and 1.8
percent reduction in spending by FFS
beneficiaries - (Perceived) Magnitudes
- Estimates perhaps not as large as seem when
consider that a one pct point increase in
penetration is off a base of 9-10 pct pts - Many IV Diagnostics
- All suggest that IV strategy is legitimate
15Estimates (cont)
- Next Step Estimate Utilization Models
- Here, we use broad utilization categories as
dependent variables - We find increases in MC HMO penetration reduce
Inpatient and Outpatient events, especially
on intensive margins - Supports our spending estimates which suggest
non-trivial spillover
16Estimates (cont)
- Next Check Sensitivity of Main Estimates
- Est. models without CA and FL counties
- Est. models with Supplemental HI controls
- Compare effect on High vs. Low-Use
- Define high-use as FFS with 1 chronic
condition (CC) low-use as those with no CCs. - CCs include Diabetes, HBP, Arthritis, Heart
Disease and Other Heart Problems - Est. Spending Models Separately for Two Groups
17Estimates (cont)
Without Zeroes With Zeroes
CCgt0 (High-Use) -0.0159 (3.63) -0.0179 (3.22)
CC0 (Low-Use) -0.0033 (0.24) 0.0054 (0.29)
--IV estimates from Long model reported (d) --Estimates from Short model similar --IV estimates from Long model reported (d) --Estimates from Short model similar --IV estimates from Long model reported (d) --Estimates from Short model similar
18Estimates (cont)
- Chronic Conditions Models Details
- Results suggest main spending estimates driven by
relatively high-use individuals - In particular, estimates imply 1.6 to 2.3 percent
drop in FFS spending for high-use and virtually
no effect for those without CCs - Perhaps not too surprising as high-use
individuals spending 2X low-users
19Summary
- We find evidence MC HMO penetration reduces
spending by FFS beneficiaries - Evidence that MC HMO penetration reduces
utilization supports spending reductions - Spending reductions seem to be derived from
high-use individuals
20THE END