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Regression Discontinuity for Causal Effect Estimation in Epidemiology

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2016

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Springer International Publishing
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Oldenburg, Catherine E., Ellen Moscoe, and Till Bärnighausen. 2016. “Regression Discontinuity for Causal Effect Estimation in Epidemiology.” Current Epidemiology Reports 3 (1): 233-241. doi:10.1007/s40471-016-0080-x. http://dx.doi.org/10.1007/s40471-016-0080-x.

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Abstract

Regression discontinuity analyses can generate estimates of the causal effects of an exposure when a continuously measured variable is used to assign the exposure to individuals based on a threshold rule. Individuals just above the threshold are expected to be similar in their distribution of measured and unmeasured baseline covariates to individuals just below the threshold, resulting in exchangeability. At the threshold exchangeability is guaranteed if there is random variation in the continuous assignment variable, e.g., due to random measurement error. Under exchangeability, causal effects can be identified at the threshold. The regression discontinuity intention-to-treat (RD-ITT) effect on an outcome can be estimated as the difference in the outcome between individuals just above (or below) versus just below (or above) the threshold. This effect is analogous to the ITT effect in a randomized controlled trial. Instrumental variable methods can be used to estimate the effect of exposure itself utilizing the threshold as the instrument. We review the recent epidemiologic literature reporting regression discontinuity studies and find that while regression discontinuity designs are beginning to be utilized in a variety of applications in epidemiology, they are still relatively rare, and analytic and reporting practices vary. Regression discontinuity has the potential to greatly contribute to the evidence base in epidemiology, in particular on the real-life and long-term effects and side-effects of medical treatments that are provided based on threshold rules – such as treatments for low birth weight, hypertension or diabetes.

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Regression discontinuity, Causal inference, Quasi-experimental, Epidemiologic methods, Econometrics

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