Electronic health records and other sources of observational data are increasingly used for drawing causal inferences. The estimation of a causal effect using these data not meant for research purposes is subject to confounding and irregular covariate-driven observation times affecting the inference. A doubly-weighted estimator accounting for these features has previously been proposed that relies on the correct specification of two nuisance models used for the weights. In this work, we propose a novel consistent quadruply robust estimator and demonstrate analytically and in large simulation studies that it is more flexible and more efficient than its only proposed alternative. It is further applied to data from the Add Health study in the United States to estimate the causal effect of therapy counselling on alcohol consumption in American adolescents.
翻译:电子健康记录和其他观测性数据越来越被用于抽取因果推断。使用这些非用于研究目的的数据进行因果效应估计会受到混淆和非规则协变量驱动的观测时间的影响。之前提出了一种双加权估计器,用于考虑这些特征,其中依赖于两个用于权重的劣设定情境模型。在本文中,我们提出了一种新的一致的四重坚固估计器,并在大型模拟研究中分析和演示它比其唯一提出的替代方案更灵活和更有效。此外,它还被应用于美国Add Health研究的数据,以估计治疗咨询对美国青少年饮酒的因果效应。