why do the insured use more health care? the role of insurance-induced unhealthy behaviors yingying...
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Why Do the Insured Use More Health Care?
The Role of Insurance-Induced Unhealthy Behaviors
Yingying Dong
Boston College
10/16/2007
1/25
A Real Life Story
From the New York Times (Nov. 25, 2002):
Mr. & Ms. Brooks dropped their health insurance because of increased premiums.
Then…
“Mr. Brooks, 50, has stopped taking Lipitor to control high cholesterol and has
started taking over-the-counter herbal supplements. Ms. Brooks no longer takes
Singulair for asthma and has adopted an exercise program intended to regulate
her breathing. Ms. Brooks estimates they are saving $150 a month by not using
prescription drugs. ‘We changed our diets a lot to help the effectiveness of the
supplements, and maybe that’s a good thing,’ she said.”
--Broder, John. “Problem of Lost Health Benefits is Reaching into the Middle Class.” Also cited by Dave & Kaestner (2006)
2/25
Motivation – (1)
Health insurance is associated with an increased use of health care. (Yelin et al, 2001; Meer and Rosen, 2003; Pauly, 2005; Bajari, Hong and Khwaja, 2006;
Deb and Trivedi, 2006)
Usually assumed: Individuals who potentially have a greater need of heath care are
more motivated to get insured (selection effect).
Insurance reduces the effective price of health care and hence induces individuals to use more.
★ What’s missing: Individuals once insured, may become less cautious about their
unhealthy behaviors, so they may need more health care.
Unhealthy behaviors: Drinking, Smoking, Insufficient Exercise, and unhealthy diet
3/25
Motivation- (2)
Intuitions: Insurance lowers the offsetting cost for the negative health
consequences of unhealthy behaviors. disincentive effect
Car insurance reduces precaution and stimulates car accidents; Workplace injury compensations increase injuries.
Individuals with health problems substitute medication for behavioral improvement. substitution effect
Easily accessible health care may distort the perceived risk of unhealthy behaviors. distorted image
4/25
Illustration of Causalities
True Moral Hazard: the disincentive effect of health insurance on individuals’ healthy behaviors, which may generate additional medical care demand.
Pure Price Effect: the effect that health insurance lowers the effective price of health care and hence induces individuals to use more care ceteris paribus.
Health Insurance
Use of Health Care
Selection Effect
(Ex post) Moral Hazard
Health Insurance
Use of Health Care
Selection Effect
Pure Price Effect
Health Related Behaviors
True Moral Hazard
(1) Causalities traditionally studied (2) A fuller View of Causalities
Selection Effect
5/25
Literature Review
Most existing literature studies the insurance effect on medical utilization; a small strand examines the insurance effect on health behaviors. They do not look at the structural causal relationships among the three.
Literature examining the insurance effect on medical utilization: Reviews: Zweifel and Manning (2000), Buchmueller et al (2005)
Studies examining the insurance effect on prevention, including behaviors (discrete outcomes):
Kenkel (2000), Courbage and Coulon (2004)
A few studies that do consider all three focus on discrete outcomes
Khwaja (2002, 2006) and Card et al. (2004)
6/25
Research Questions & Approaches
(1) What are the effects of health insurance on individuals’ health behaviors?
(2) What is the (total) effect of health insurance on health care utilization?
(3) Within the total effect of health insurance on health care utilization, how much is caused by the pure price effect, and how much is caused by individuals’ behavior change when they have insurance?
Start from a theoretical model to derive the structural causal relationships among the insurance decision, health behaviors, and health care utilization
Solve the structural model to obtain the semi-reduced form equations determining behaviors and care utilization as functions of the endogenous health insurance status
Derive the structural parameters of interest: the direct and indirect effects of health insurance on health care utilization
Empirical analysis adopts the generalized Tobit specification with transformations on the dependent and lagged dependent variables.
7/25
Basic Theoretical Model – (1) A two-period dynamic forward-looking model;
Assume rational addiction, marginal utility of consumption depending on health status, and uncertainty,
Utility function:
Health evolution equation:
Budget constraint:
Ct = Composite good consumption; Bt = (Bt
1, Bt2, Bt
3), Behaviors: drinking, smoking and exercise; Ht = Initial Health status/Health stock; Mt = Medical care utilization; = permanent taste parameter; = taste shifter; st = health shock, which may depend on Ht, Bt; Wt = present value of total Wealth; It = Insurance dummy; dt = the insurer co-payment rate.
1 ( , , )t t t t tH H H M s B
1 1 1 1 1 1( , , , , , ) [ ( , , , , , )]t t t t t t t t t t t tC U H s C U H s B B B B
1 1( (1 ) ) ( ) .t It t B t t t t B t tC P I dI M C W P B P B
t
8/25
Basic Theoretical Model – (2) The individual invests in health in 1st period (t), and bears the addiction and
negative health consequences of unhealthy behaviors in 2nd period (t+1).
C: choice set: {It} {Ct, Bt, Mt} {Ct+1, Bt+1} F: information set: {Bt,Ht, ,t} {Bt,Ht,It, ,t} {Bt,Ht+1,It,,t+1, st+1} S: shock set: {st , st+1, t+1} {st, st+1, t+1} {st+1}
Expected Utility maximization
s.t.
At the beginning of 1st period
1st period 2nd period
1 1
1 1
*, , 1 1 1 1 1 1; , ,
,
max ( , , , , , ) ( , , , , , )t t t
t t t t
t t
s s t t t t t t t t t t t tI C M
C
E C U H s C U H s
B
B
B B B BF
1 1( (1 ) ) ( ) .t It t B t t t t B t tC P I dI M C W P B P B
9/25
Structural & Semi-reduced Form Equations
Maximizing expected utility by backward induction Structural equations (FOC’s) for Mt, Bt,, and the insurance decision It
Bt-1, PIt : exclusion restrictions
fI() = PIt*: willingness-to-pay for insurance
Intuitions
Solve (1),(2) for Bt and Mt semi-reduced form equations
Assume U() is quadratic and health production function is linear
linear functions for Bt and Mt and the It index
1
( , , , , ) (1)
( , , , , , ), for 1,2,3 (
(
2)
1 0 , , , ) (3)l
t M t t
II t t
t tl
t
t t t t tB
t t
M f I H
B f I M H l
PI f H
t-1
B
B
B
1
1
( , , , , ) (4)
( , , , , ), for (1,2,3) (5)l
t M t t t tlt t t t tB
M g I H
B g I H l
B
B
10/25
Direct and Indirect Insurance Effects on Care Utilization - (1)
Eqs. (1), (4) and (5) imply the following decomposition
t t t t
t t t t
dM M M
dI I I
B
B
1
1 1
t t t
t t t
M M
B
B B B
31 33 31
Total effect = direct price effect + indirect effect
Obtained from Eq. (4)
Obtained from Eq. (5)
To be backed out
13 31
(I)
(II)
Obtained from the Eq. (5)
Obtained from Eq. (4)
11/25
Direct and Indirect Insurance Effects on Care Utilization– (2)
(I) is a vector form of
(II) is the solution of a linear equation system
t t t t
t t t t
dM M M
dI I I
B
B
1 2 3
1 2 3.t t t t t t t t
t t t t tt t t
dM M M B M B M B
dI I I I IB B B
1
1 1
t t t
t t t
M M
B
B B B
1 2 3
1 1 1 1 2 1 31 1 1 1
1 2 3
2 2 1 2 2 2 31 1 1 1
1 2 3
3 3 1 3 2 3 31 1 1 1
,
,
.
t t t t t t t
t t t t t t t
t t t t t t t
t t t t t t t
t t t t t t t
t t t t t t t
M B M B M B M
B B B B B B B
M B M B M B M
B B B B B B B
M B M B M B M
B B B B B B B
Three unknowns
12/25
General Data Problems
A significant fraction of zeros (68% zero drinking, 83% zero smoking)
Discrete change between zero & non-zero consumptionextensive margin of the insurance effect
Continuous change in the positive level of consumptionintensive margin of the insurance effect
Two part specification: Insurance effect on the probability of non-zero consumption Insurance effect on the level of consumption, given participation
Generalized Tobit model (sample selection model)
A skewed distribution of positive observations (nonnormality)
Transformation on the dependent and lagged dependent variables IHS (Inverse hyperbolic sine), Box-Cox, log
13/25
Empirical Model & Identification
Generalized Tobit (sample selection) model with transformations on the dependent and lagged dependent variables
where Yt = Bt or Mt ;
Insurance is endogenous joint estimate It and Bt or Mt .
PIt is an exclusion restriction (Instrumental Variable): Age≥65 dummy (Card, Dobkin and Maestas, 2004) Self-employment status(Meer and Rosen, 2003; Deb and Trivedi,
2006)
1 0 ,t tt It tI P X α
11 0 1 0 ,t t t tY b I X b
1( , ) 1 0 ( ),t Y t t t tT Y Y b I X b
1(1, ( , ), , ) .t t tT H BX B
14/25
IV Validity-(1)
Relevance insurance holding rate:
Age<65 (88.1%), Age≥65 (99.1%) Self-employed(78.7% ), Non Self-employed (92.6%)
Exogeneity Measures of medical care utilization and health behaviors would have evolved
smoothly with age in the absence of the discrete change in insurance coverage at age 65.
Include in all equations a smooth age profile function, tentatively include the age dummy in the outcome equations, coefficients are not significant.
Sargan’s and Basmann’s over-identification tests Hansen’s J test Using panel data check the transition into/out of self-employment on behaviors
15/25
IV Validity-(2)
Treatment 1 Control 1 Diff.-In-Diff. P-value
Change in drinking (level) .271(.300) -.087(.197) .358(.359) .319
Change in drinking (prob.) -.028(.021) -.029(.014) .001(.025) .965
Change in smoking (prob.) -.009(.008) -.014(.007) .005(.010) .637
Change in exercising (prob.) -.050(.033) -.027(.018) -.023(.038) .536
Treatment 1 Control 1 Diff.-In-Diff. P-value
Change in drinking (level) -.509(.419) -.207(.041) .301(.421) .476
Change in drinking (prob.) -.022(.028) -.030(.004) .008(.028) .787
Change in smoking (prob.) -.029(.015) -.012(.002) -.017(.015) .267
Change in exercising (prob.) .029(.041) -.014(.005) .043(.041) .300
Table 2-(a) The impact of transition out of self-employment on health behaviors
Table 2-(b) The impact of transition into self-employment on health behaviors
16/25
Sample Description
RAND HRS : 3rd, 4th and 5th (Year 96, 98, 00) waves of data
Not include: Age 70, On social security disability insurance, Deceased within 2 years since being observed in the sample
N=14,289
Dependent variables : Dummies: smoking, exercising (3 or more times per week), drinking,
visiting a doctor/hospital (at least once for the past two years)
Levels: # of alcoholic drinks consumed per week
# of doctor/hospital visits per year
17/25
Summary Statistics-(Dependant Var.s)
Insured (n=13,016) Uninsured (n=1,273)
Mean Std. Dev. Mean Std. Dev.
Visiting a doctor/hospital .941 .235 .811 .391
# of visits 4.35 7.74 3.02 4.98
Current period: Smoking .167 .373 .262 .440
Exercising .504 .500 .485 .500
Drinking .330 .470 .265 .441
Positive # of alcoholic drinks 7.14 8.50 10.17 12.61
The insured are more likely to visit a doctor or hospital, and they also have more visits on average than the uninsured.
Insurance is associated with healthier behaviors; e.g., The insured are less likely to smoke; more likely to drink, but on average drink much less.
★ These may not be causal: confounding factors or selection effects.
18/25
Summary Statistics-(Covariates)
Insured (n=13,016) Uninsured (n=1,273)
Mean Std. Dev. Mean Std. Dev.
Last period: Smoking .184 .387 .274 .446
Exercising .523 .499 .516 .500
Drinking .353 .478 .295 .456
Positive # of alcoholic drinks 7.01 8.46 10.58 15.29
Last period diagnosed disease*: Cancer
.065 .246 .048 .214
Hypertension .367 .482 .342 .475
Heart disease .119 .324 .072 .259
Lung disease .050 .218 .038 .191
Age 61.65 5.19 59.48 4.97
The insured have healthier behaviors ex ante (last period); The insured are in general older, tend to have chronic diseases;
* This list leaves out some chronic diseases due to space limit.
19/25
Summary Statistics-(Covariates)
Insured (n=13,016) Uninsured (n=1,273)
Mean Std. Dev. Mean Std. Dev.
Male .406 .491 .341 .474
Hispanic .067 .251 .235 .424
Last period health status: Fair/ Poor .166 .372 .269 .444
Good/Very good .652 .476 .571 .495
Excellent .182 .386 .159 .366
Education: Less than high-school .192 .394 .437 .496
High-school or GED .386 .487 .311 .463
College or above .422 .494 .252 .434
Income($1000) 62.80 86.19 36.27 65.93
Number of children 3.45 2.05 4.01 2.54
The insured also tend to have higher income, higher education…
20/25
Estimated Insurance EffectsTable 1 Insurance effects on the probabilities of using health care and health behaviors
Dependent variable Coeff. Of Insurance (SE) Marginal Effect
Visiting a doctor/hospital (0/1) .037 (.146) .008
Exercising(0/1) -.112 (.127) -.046
Smoking(0/1) .166 (.192) .017
Drinking(0/1) -.187 (.145) -.065
***Significant at .01 level;
Table 2 Insurance effects on the levels of health care utilization and drinking
HIS Box-Cox Log
% change (SE) #% change (SE)
#% change (SE)
#
# of visits / year .347(.069)*** 1.58 .359(.068) *** 1.63 .348(.057) *** 1.58
# of alcoholic drinks/week .043(.097) .318 .041(.095) .302 .029(.093) .214
21/25
Further Investigation on Drinking
Puzzle 1: Insurance may decrease the probability of drinking, although it may increase the amount of drinking by the drinkers.
Puzzle 2: The insurance effect on the probability of drinking and that on smoking have opposite signs.
Unlike smoking, a low level of drinking is generally considered as
healthy.
In the data, the insured have a smaller proportion of smokers, but a larger proportion of drinkers; whereas the insured drinkers tend to be light drinkers.
Distinguish between light drinking and heavy drinking
Disincentive effect of insurance on healthy behaviors: Does insurance holding encourage heavy drinking?
22/25
Further Investigation on Heavy Drinking
Table 3 Insurance effects on heavy drinking
Heavy drinking Probability Weekly # of drinks (IHS model)
Cutoff percentile
# of drinks
Sample mean
Coeff.(SE)Marginal
effect Marginal effect (SE)
Change in level
50th >4 12.8 .093(.175) .011 .131(.066) ** 1.67
60th >6 14.9 .190(.165) .013 .155(.071) ** 2.31
70th (mean) >7 16.8 .127(.168) .007 .120(.070) * 2.02
80th >12 21.4 .229(.188) .005 .177(.074) ** 3.79
85th >14 27.2 .307(.211) .003 .232(.100) ** 6.31
90th >15 28.5 .330(.278) .002 .255(.099) ** 6.98
* Significant at .1 level; **Significant at .05 level; ***Significant at .01 level
23/25
Increased Number of Visits due to Insurance-Induced Drinking
Increased medical utilization due to insurance-induced drinking:1 2 3
1 2 3 (I) t t t t t t t t t t t t
t t t t t t t t tt t t
dM M M B M B M B dM M M
dI I I I I dI I IB B B
B
B
11 1 1
1 1 11 1
t t t t t
t tt t t
M B B M B
I IB B B
Among the above-the-median heavy drinkers, the increased number of visits caused by insurance-induced drinking is at most 0.3%.
Averaging it over the whole population will make it even smaller.
If the number of visits caused by the insurance-induced changes in smoking and exercise is of the same magnitude, then the increased number of visits caused by insurance-induced unhealthy behaviors as summarized by drinking, smoking and insufficient exercise is less than 1%.
11
1 1 11 11 1
(II) t t t t t t
t t tt t t
B M M M M
B B B
B
B B B
24/25
Conclusions
Health insurance encourages individuals’ unhealthy behaviors, in particular, heavy drinking, but this does not induce an immediate perceivable increase in their use of health care.
The insurance effects at the extensive margin are in general less significant than those at the intensive margin.
Eg. The effects on the probabilities of smoking, heavy drinking, and visiting a doctor/hospital are small and insignificant; The effects on the quantity of heavy drinking and on the number of visits are more considerable and statistically significant.
Within the total effect of insurance on health care utilization, the pure price effect is dominant.
Policy implications
Presenter: Yingying Dong
Thank you !!!