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Disease and Development: The Effect of Life Expectancy on Economic Growth Daron, Acemoglu & Johnson Proponent Section
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Does increasing life expectancy accelerate economic growth? Improving global health is an important social objective, but is it also an economic objective? There is a growing consensus among academics and NGOs that improving health can accelerate economic growth – Eliminating malaria in sub-Saharan Africa could increase GDP/capita growth rate by 2.6%/yr (Gallup & Sachs 2006) However, the only conclusive evidence shows correlation and not causation.
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Health interventions appear to have clear microeconomic benefits, but… Micro studies have demonstrated improved health’s positive effect on individual productivity Yet no general equilibrium study has shown that these micro effects extend to increasing economic growth rates. – Weil (2007) finds positive returns to health, but studies only constant population scenarios – Young (2005) finds positive GDP per capita returns to one specific disease, the HIV/AIDS epidemic, as it thinned the population Two confounding effects in general equilibrium could be countering the benefits to increasing productivity: – Diminishing returns to individual productivity given capital constraints – Increasing competition in labor market as population increases
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Acemoglu & Johnson test the macro effect of health on economic growth Experimental setup: – Proxy for health: life expectancy at birth – Exogenous shock to health: the international epidemiological transition occurring in the 1940s – Instrumental variable: predicted mortality, based on the interaction of two variables: Intervention dates for specific diseases Baseline cross-country disease burden for each disease Data obtained from UN, WHO and League of Nations records for burdens of 15 major diseases, fertility rates and life expectancy across 75 countries
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Exogenous shock: international epidemiological transition Pre-1940 few places aside from western Europe and the United States made significant public health efforts. Then a 3-part transition: – New treatments available Antibiotics (e.g. penicillin, streptomycin) Vaccines (e.g. yellow fever) Chemicals (e.g. DDT) – New organizations spread tech and practices e.g. World Health Organization, United Nations International Children’s Emergency Fund – Globalization of international values Post-1950 most new developments had already been universally implemented.
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Exogenous shock: log life expectancy at birth over time
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Exogenous shock: log GDP per capita over time
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Hypothesis: increased population and limited resources stunts growth Increasing population depresses capital-to- labor ratio temporarily (with rebound possible as more capital is accumulated) Increasing population depress land-to-labor ratios permanently (land supply is inelastic)
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Hypothesis: closed-economy neoclassical growth model For economy i at time t, a closed-economy neoclassical growth model (essentially a Cobb- Douglas production function) gives: – Y it = (A it H it ) α K it β L it 1 - α - β, for α + β ≤ 1 A it is a fixed function of cross-country baseline differences K it is the supply of capital L it is the supply of land H it is the effective supply of labor: H it = h it N it – N it is total population (employed and unemployed) – h it is total human capital per person
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Applying the model to health shocks To capture these effects in a reduced-form manner (writing production Y as a function of life expectancy X), we assume: – A it = A i X it γ, h it = h i X it η, N it = N i X it λ X it is life expectancy in country i at time t Ā i, h i, and N i designates baselines differences across countries Then substitution gives: – Y it = [(A i X it γ )(h i X it η )(N i X it λ )] α K it β L it 1 - α – β Taking logs: – y it = βlogK it0 + αlogA i + αlogh i - (1-α)logN i + [α(γ+η)-(1- α)λ]x it
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Applying the model to health shocks y it = βlogK it0 + αlogA i + αlogh i - (1-α)logN i + [α(γ+η)-(1-α)l]x it – The increase in log life expectancy x it will raise income per capita y it if the positive effects of health on total factor productivity (TFP, measured by α[γ+η]) exceed the potential negative effects arising from the increase in population because of fixed land and capital supply, (1-α) λ. – Otherwise, increases in log life expectancy will reduce income per capita.
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Applying the model to health shocks To accommodate the elasticity of the capital supply: – Suppose that country i has a constant saving rate equal to s i (0, 1) and that capital depreciates at the rate δ i (0, 1) Then the capital stock in country i at time t is given by K it+1 = s i Y it +(1- δ i )K it, and we find:
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Applying the model to health shocks Then the condition for a positive correlation between x and y is that TFP be greater than the negative effects arising from the increase in population because of fixed land supply, (1-α-β) λ. Because fixed land supply is only a major concern for agriculture-dominated economies, the term (1-α-β) λ approaches zero for developed nations and has a significant detrimental effect in developing nations.
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Applying the model to health shocks Estimation equation: π is the parameter of interest ζ i denotes the set of fixed effects that are functions of A i, h i, N i, s i µ i is set of time-variant factors common across all countries Z’ i is a vector of other controls
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Instrumental variable: predicted mortality Predicted mortality M at time t in country i after intervention I for disease d: M dFt is the mortality at the “health frontier of the world”, assumed to be 0 in this paper. First-stage equation: Exclusion restriction: M is not correlated with ε
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Change in log life expectancy over change in predicted mortality
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What effect did health shock have?
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Main results: health shock did not change GDP/cap growth The predicted mortality instrument did have a large & robust effect on changes in life expectancy after 1940 (and not before) The instrumented changes in life expectancy did have an effect on population (1.7-2% increase in population per 1% increase in life expectancy) because the increase in life expectancy was only partly compensated for in fertility
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Main results: health shock increased population
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Main esults: exogenous shock did not change GDP/cap growth The predicted mortality instrument did have a large & robust effect on changes in life expectancy after 1940 (and not before) The instrumented changes in life expectancy did have an effect on population (1.7-2% increase in population per 1% increase in life expectancy) because the increase in life expectancy was only partly compensated for in fertility There was no statistically significant effect on GDP, but two standard error range was so large this result is inconclusive.
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Final result: health shock had negligible effect on total GDP
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