Title: Adam Wagstaff
1Photos from Hans Kemp
Health insurance for the poor in Vietnam An
impact evaluation of Vietnams health insurance
program
Adam Wagstaff Development Research Group East
Asia HD, The World Bank
2Introduction
- Policy and program issues
- Lack of health insurance in China and Vietnam
following de-collectivization of agriculture - New policy of public finance of free health care
for the poor by enrolling them in social
insurance - Substantive issues
- Health insurance literature focuses on negative
- Paper looks at risk-reduction associated with HI,
and positive consequences from it - Methodological issues
- Paper uses propensity score matching (PSM) with
pre- and post-intervention data to estimate
impact of health insurance - Empirical findings policy implications
3Policy/institutional issues
Policy issues
- In China and Vietnam, cooperative health
insurance collapsed after de-collectivization of
agriculture - In both countries concern over affordability of
health care, esp. among rural poor - People encouraged to enroll in Vietnams health
insurance (VHI) programcompulsory for certain
groups - Decision 139 mandates and supports provinces to
enroll poor in VHI (or make alternative
arrangements for them) - What will impact of enrollment among 139
beneficiaries be on key outcomes?
4Costly care, high spending
Policy issues
5Impoverishing too
Policy issues
6Impoverishing too
Policy issues
Out-of-pocket payments for health care pushed
2.6m Vietnamese into poverty in 1998. Increased
headcount by 23 and poverty gap by 25
7VHI before decision 139
Policy issues
- Set up in 1993, reformed in 1999
- Compulsory scheme for formal sector workers,
civil servants, etc. - Voluntary schemecurrently attracts mostly school
kids students - By 1998, ?15 enrolled 60 compulsorily
- Coverage against inpatient costs, fees incurred
in outpatient care less generous coverage for
voluntary members
8How decision 139 will change coverage
Policy issues
9Health insurance issues
Substantive issues
- Much of the health insurance literature
emphasizes the negative - Moral hazard
- Adverse selection
- Recent work emphasizes
- Risk-reduction benefits of insurance, and
positive consequences of this - Lower precautionary savings
- Better health outcomes
- Difficulty of measuring true moral hazard
10Evaluation with non-experimental data
Methodological issues
Participation in program Participation in program Participation in program
Outcome D1 Yes D0 No
Y1 outcome with treatment ? ?
Y0 outcome without treatment ? ?
Difference effect of treatment on treated
Difference bias
11Propensity score matching as approach to reducing
bias
Methodological issues
Component of bias Strategy to reduce bias
Participants and non-participants differ in relevant respectsi.e. have different Xs Compute probability of participation as function of Xs, P(X). Match participants and non-participants on P(X). Compute mean difference in outcomes between matches (single difference or SD)
For some participants, there are no comparable non-participants Confine comparisons to region of common support of P(X)
Outcome differences not attributable to treatment might remain even after conditioning on Xs and confining attention to common supportproblem of selection bias In cross-section, nothing can be done. With pre- and post-intervention data, compute difference between mean change among participants and mean change among non-participants (double difference or DD). This allows for time-invariant selection on unobservables effect
12Data variables
Empirical results
- Data from Vietnam Living Standards Survey
- High proportion of HHs interviewed in 1993 were
re-interviewed in 1998 - Outcomes variables
- Contact probability
- Volume of services used (1998 data only, so can
do only single difference PSM) - Out-of-pocket payments
- Non-medical HH spending
- Child health, measured through anthropometrics
(underweight, etc.)
13Probit model for participation
Empirical results
- VHI enrollment depends on
- Whether in school ()
- Employed
- Communist party, government, army, social
organization, state-owned company () - Private company (-)
- Income ()
- Education ()
- Urban ()
- Commune fixed effects
14Descriptives of probability, before after
matching
Empirical results
Predicted probability of coverage Predicted probability of coverage Predicted probability of coverage Predicted probability of coverage
cases Mean Std. Dev. Min Max
Before matching Uninsured 14537 0.12736 0.13665 0.00011 0.98705
Before matching Insured 3015 0.38192 0.25335 0.00477 0.99989
After nearest neighbor matching Uninsured 3015 0.38189 0.25326 0.00477 0.98705
After nearest neighbor matching Insured 3015 0.38192 0.25335 0.00477 0.99989
After caliper matching with 0.001 caliper Uninsured 2775 0.34330 0.22151 0.00477 0.98705
After caliper matching with 0.001 caliper Insured 2775 0.34330 0.22150 0.00477 0.98768
15Histograms of probabilities, before and after
matching
Empirical results
Uninsured Insured
16PSM results 1 (DD SD)
Empirical results
Sample Estimator Outcome Effect T-stat
Sample DD Out-of-pocket payments 4.582 0.19
Inpatients SD Inpatient costs -738.18 -1.69
Inpatients SD Out-of-pocket payments -1102.73 -2.42
Sample SD Inpatient costs 10.09 1.04
Sample SD Non-hospital costs 15.50 0.89
Sample DD Contact probability 0.040 2.26
Sample DD Weight-for-age kids lt 10 0.203 1.98
Sample DD Weight-for-height kids lt10 0.215 1.90
Sample DD Non-health consumption 387.53 5.37
DDdouble difference SDsingle difference
17PSM results 2 (SD)
Empirical results
Sample Sample Poorest quintile Poorest quintile
Effect T-stat Effect T-stat
Total visits 0.017 0.22 0.095 0.57
Hospital visits 0.051 3.85 0.030 1.72
Inpatient nights 0.973 3.55 0.216 0.78
CHS visits 0.025 1.85 0.069 1.21
Polyclinic visits 0.000 0.00 0.009 0.28
Private visits -0.001 -0.03 -0.052 -1.67
Traditional healers -0.010 -0.75 -0.004 -0.13
Pharmacy visits -0.056 -0.94 0.043 0.30
18Conclusions
- PSM useful for program evaluationuse panel data
and diffs-in-diffs estimator if possible - VHI increases contact probability, volume of use
- No impact on out-of-pocket payments
- Effect on non-medical consumptionreflects risk
reduction? - For hospital care, smallest impact of VHI among
the poor - Extrapolation to 139 difficultpoorest quintile
estimates most relevant but NB no copayments