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Contracting for Health: Evidence from Cambodia

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Providers may not consider infectious disease externalities ... Contracting in (CI): Base salary plus performance bonus, no provision for firing ... – PowerPoint PPT presentation

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Title: Contracting for Health: Evidence from Cambodia


1
Contracting for HealthEvidence from Cambodia
  • Presentation at
  • Columbia University

2
Collaborators
  • Many institutions, people involved
  • Indu Bhushan (ADB), Erik Bloom (ADB), David
    Clingingsmith (Harvard), Loraine Hawkins (World
    Bank), Rathavuth Hong (OCR Macro), Elizabeth King
    (World Bank), Michael Kremer (Harvard), Benjamin
    Loevinsohn (World Bank), Brad Schwartz
    (UNC-Chapel Hill)
  • Keller and Schwartz 2001 Loevinsohn 2000, 2001
    Schwartz and Bushan 2004

3
Collaborators
  • Many institutions, people involved
  • Indu Bhushan (ADB), Erik Bloom (ADB), David
    Clingingsmith (Harvard), Loraine Hawkins (World
    Bank), Rathavuth Hong (OCR Macro), Elizabeth King
    (World Bank), Michael Kremer (Harvard), Benjamin
    Loevinsohn (World Bank), Brad Schwartz
    (UNC-Chapel Hill)
  • Keller and Schwartz 2001 Loevinsohn 2000, 2001
    Schwartz and Bushan 2004

4
Overview I
  • Background on project and context
  • Empirical approach
  • Results
  • Contracted outcomes
  • Non-contracted outcomes
  • Health facility management
  • Choice of provider, expenditure
  • Consumer perception of care quality

5
Background Health care in developing countries
  • Government provision terrible
  • Weak provider incentives
  • 35 of health workers absent in surprise visits
    in six developing countries.
  • Private provision terrible
  • Provider incentives distorted under asymmetric
    information
  • 30-50 of prescriptions unnecessary or
    contraindicated in India (Phadke, 1998 Das and
    Sanchez 2000)
  • Providers may not consider infectious disease
    externalities
  • Contracting Afghanistan, Bangladesh, Estonia,
    Haiti, India, Burkina Faso
  • Stronger incentives than government providers
  • Less asymmetry of information
  • In rural context, limited mobility, limited
    adverse selection

6
Cambodian health context
  • Post-genocide, post-conflict society
  • Only 50 doctors left in country in 1979
  • Fighting until 1998
  • 1979-1993 Vietnamese-backed regime
  • Growth of medical staff, though quality low
  • Little rural health infrastructure investment
  • 1993 Elections adoption of market economy
  • Govt medical staff pay 40 GDP/cap.
  • Boom in private medical practice, OTC drug sales
  • Most private practitioners also govt staff
  • Drug sellers get about 33 of curative visits
    1997
  • Spending high health outcomes, coverage poor
  • Huge improvements over study period. Health
    center construction

7
The project I
  • Management of district-level government health
    services turned over to NGOs through open tender
  • 12 districts in 3 provinces
  • Total population 1.3 million
  • District the right unit for competition
  • Targeted improvement of child and maternal health
    service coverage levels. Prevention
  • Fixed price per capita bids
  • 4-year contracts with provision for monitoring
    and sanctions

8
The project I
  • Management of district-level government health
    services turned over to NGOs through open tender
  • 12 districts in 3 provinces
  • Total population 1.3 million
  • District the right unit for competition
  • Targeted improvement of child and maternal health
    service coverage levels. Prevention
  • Fixed price per capita bids
  • 4-year contracts with provision for monitoring
    and sanctions

9
The project II
  • Random assignment to tender
  • 8 treatment eligible districts, quasi-stratified
    by province 4 comparison districts
  • Two treatments
  • Contracting in (CI)
  • Work within government staff and procurement
    structure
  • Management authority, but cant hire/fire,
    procure outside
  • Contracting out (CO)
  • Full control of staffing--hire and fire
  • Full control of procurement

10
The project III
  • 10 NGOs submitted 16 bids for the 8 districts
  • Technical criteria and price
  • Bids scored by mixed committee insiders and
    outsiders 8 of 16 bids technically acceptable
  • 4 NGOs won one got two districts
  • 3 districts got no technically acceptable bids
  • Only international NGOs submitted bids
  • Expat staff between 0.5 and 3.0 per contracted
    district.
  • CO funds all flow from ADB, CI mixed
  • 0.25 per capita budget supplement for CI,
    comparison sorting out overall financing
  • Preintervention spending 1-2 per capita

11
Contracted outcomes
12
Contracted outcomes
13
What did the NGOs do? I
  • Additional compensation in all treated districts
  • Two officially banned private practice, three
    allowed it
  • Staff compensation choices
  • Contracting in (CI) Base salary plus performance
    bonus, no provision for firing
  • Contracting out (CO) high fixed salaries, with
    possibility of firing nonperformers
  • CO attracted some staff from outside district,
    outside government service

14
What did the NGOs do? II
  • Example Peareng district, contracting in (CI)
  • Facilities signed annual contracts with NGO,
    workers 3-mo subcontracts. Private practice
    banned.
  • Staff motivation viewed as key problem
  • Additional payment on top of government salary
  • Composed of fixed supplement (55) punctuality
    incentive (15) performance of facility
    incentive (30)
  • 500-800 increase in official income if full
    incentive paid
  • Spot checks based on random interviews to enforce
    accurate reporting by facilities
  • Staff incentives based on targeted outcomes,
    patient satisfaction, quality of care, and no
    fraud

15
Econometric Issues
  • Selection into treatment
  • CO 4 districts tendered, 3 awarded
  • CI 4 districts tendered, 2 awarded
  • Previous data collection, analysis based on
    actual treatment status, not initial assignment
  • Perhaps NGOs focused bids on districts where
    gains would be easiest
  • Cluster-level intervention

16
Econometric Issues
  • Selection into treatment
  • CO 4 districts tendered, 3 awarded
  • CI 4 districts tendered, 2 awarded
  • Previous data collection, analysis based on
    actual treatment status, not initial assignment
  • Perhaps NGOs focused bids on districts where
    gains would be easiest
  • Cluster-level intervention

17
The data
  • Baseline household survey in 1997, follow-up in
    2003
  • 30 randomly selected villages in each of 12
    districts
  • 7-14 households per village randomly chosen in
    each survey year
  • Household census, recent illnesses and treatment,
    program outcomes
  • Follow-up included health service quality module
  • Facility survey in 2003

18
Empirical method I
  • District-level intervention with individual
    outcomes
  • Randomly-assigned eligibility an instrument for
    actual treatment.
  • TOT for outcome k
  • Instruments

19
Empirical method I
  • District-level intervention with individual
    outcomes
  • Randomly-assigned eligibility an instrument for
    actual treatment.
  • TOT for outcome k
  • Instruments

20
Empirical method II
  • District-level intervention with individual
    outcomes
  • Need to account for district level shocks
  • Clustering may over-reject null with small number
    of clusters
  • Randomization inference behaves better, but may
    have low power
  • Create full set placebo random assignments using
    actual randomization process. (Rosenbaum 2002)
  • Generate placebo treatment effect for each member
    of the set.
  • Use distribution of placebo treatment effects as
    test distribution.

21
Empirical method III
  • Average effect size (AES) for family of K
    outcomes
  • Kling, Katz, Leibman, and Sonbanmatsu (2003),
    OBrien (1984)
  • Joint estimation of TOT for K outcomes
  • Aggregate to get common unit of observation v
  • VCM estimates cross-equation correlation of
    effects
  • Treatment effects are elements of .
  • AES
  • is the average treatment effect in comparison
    group standard deviations.

22
Results in a nutshell
  • Both CI and CO had large, positive and
    significant TOT effects on contracted outcomes,
    no effects were significantly negative
  • Noncontracted outcomes showed gains or no effect.
    No average effect.
  • Increased use of public facilities, mostly at
    expense of drug sellers
  • Facility management improved
  • Contracted quality of care perceived as worse
    than comparison

23
TOT for changes in targeted outcomes
24
TOT for changes in targeted outcomes
25
Change in District Average Use of Public
Facilities
26
Change in District Average Antenatal Care
27
Household wealth controls
  • Household wealth controls could help absorb
    time-varying district level shocks
  • Bias should go against finding a positive
    treatment effect

28
Changes in targeted outcomes with wealth controls
29
TOT for non-contracted outcomes
30
TOT for non-contracted outcomes
31
TOT for non-contracted outcomes
32
TOT for health center management I
Notes All columns are IV regressions in levels
with province fixed effects. Standard errors in
parentheses corrected for clustering at the
district level significant at 10
significant at 5 significant at 1.
P-values for hypothesis test using randomization
inference in brackets.
33
TOT for health center management II
Notes All columns are IV regressions in levels
with province fixed effects. Standard errors in
parentheses corrected for clustering at the
district level significant at 10
significant at 5 significant at 1.
P-values for hypothesis test using randomization
inference in brackets.
34
AES for 11 health center management outcomes
Notes Joint estimation corrected for clustering
at the district level. significant at 10
significant at 5 significant at 1.
  • HC open with patients
  • All scheduled staff present
  • Child delivery service available
  • User fees clearly posted
  • Number of supervisor visits
  • Number of outreach trips
  • Index of equipment installed and functional
  • Index of drugs and other supplies available
  • All childhood immunizations available

35
TOT for changes in care-seeking outcomes, all
household members
36
TOT for changes in care-seeking outcomes, visits
to a provider
37
AES for change in provider choice, expenditure
savings
Notes Average differential increases caused by
treatment in baseline comparison-group standard
deviations. Provider choice codes drug seller and
traditional healer visits as negative and
qualified private and public provider visits as
positive. Regressions include province-by-year
fixed effects. Joint estimation corrected for
clustering at the district level. significant
at 10 significant at 5 significant at
1.
38
Annual per-capita health spending (2003 USD)
Notes Public spending from Ministry of Health
administrative records. Private from household
survey.
39
TOT for health spendingper capita (2003 USD)
40
TOT for consumer perception of quality
41
TOT for consumer perception of quality
42
Conclusion
  • Contracting with NGOs improved health care
    service delivery
  • CI vs. CO
  • Total health spending flat or declined
  • Perceptions worse
  • Channels?
  • Generalizability?
  • Lancet Article
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