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Bayesian modelling for binary outcomes in the regression discontinuity design

机译:不连续回归设计中二元结果的贝叶斯建模

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The regression discontinuity (RD) design is a quasi-experimental design which emulates a randomized study by exploiting situations where treatment is assigned according to a continuous variable as is common in many drug treatment guidelines. The RD design literature focuses principally on continuous outcomes. We exploit the link between the RD design and instrumental variables to obtain an estimate for the causal risk ratio for the treated when the outcome is binary. Occasionally this risk ratio for the treated estimator can give negative lower confidence bounds. In the Bayesian framework we impose prior constraints that prevent this from happening. This is novel and cannot be easily reproduced in a frequentist framework. We compare our estimators with those based on estimating equation and generalized methods-of-moments methods. On the basis of extensive simulations our methods compare favourably with both methods and we apply our method to a real example to estimate the effect of statins on the probability of low density lipoprotein cholesterol levels reaching recommended levels.
机译:回归不连续性(RD)设计是一种准实验设计,它通过利用许多药物治疗指南中常见的根据连续变量分配治疗的情况来模拟随机研究。 RD设计文献主要关注连续结果。当结果为二进制时,我们利用RD设计与工具变量之间的联系来获得对被治疗者因果风险比的估计。有时,处理过的估算器的这一风险比可能会给出负的较低置信区间。在贝叶斯框架中,我们施加了事先的约束来阻止这种情况的发生。这是新颖的,不能在频繁论者框架中轻松复制。我们将估算器与基于估算方程和广义矩量法的估算器进行比较。在广泛的模拟基础上,我们的方法与这两种方法均具有可比性,并且将我们的方法应用于一个真实的例子,以评估他汀类药物对低密度脂蛋白胆固醇水平达到推荐水平的可能性的影响。

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