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Doubly robust estimation and causal inference in longitudinal studies with dropout and truncation by death

机译:纵向研究中的双重稳健估计和因果推断

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摘要

Motivated by aging research, we propose an estimator of the effect of a time-varying exposure on an outcome in longitudinal studies with dropout and truncation by death. We use an inverse-probability weighted (IPW) estimator to derive a doubly robust augmented inverse-probability weighted (AIPW) estimator. IPW estimation involves weights for the exposure mechanism, dropout, and mortality; AIPW estimation additionally involves estimating data-generating models via regression. We demonstrate that the estimators identify a causal contrast that is a function of principal strata effects under a set of assumptions. Simulations show that AIPW estimation is unbiased when weights or outcome regressions are correct, and that AIPW estimation is more efficient than IPW estimation when all models are correct. We apply the method to a study of vitamin D and gait speed among older adults.
机译:出于衰老研究的动机,我们提出了一个时变暴露量对纵向研究中因辍学和死亡而被截断的结果的估计。我们使用逆概率加权(IPW)估计量来推导双稳健的增强的逆概率加权(AIPW)估计量。 IPW估算涉及暴露机制,辍学率和死亡率的权重; AIPW估算还涉及通过回归估算数据生成模型。我们证明,在一组假设下,估计量确定了因果对比,这是主要分层效应的函数。仿真表明,当权重或结果回归正确时,AIPW估计是无偏的;而在所有模型正确时,AIPW估计比IPW估计更有效。我们将该方法用于老年人维生素D和步态速度的研究。

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