Wickramarachchi Deshanee Senevirathne, Lim Laura Huey Mien, Sun Baoluo
Department of Statistics and Data Science, National University of Singapore, Singapore.
Stat Med. 2023 Feb 20;42(4):422-432. doi: 10.1002/sim.9624. Epub 2022 Dec 11.
It is often of interest in the health and social sciences to investigate the joint mediation effects of multiple post-exposure mediating variables. Identification of such joint mediation effects generally require no unmeasured confounding of the outcome with respect to the whole set of mediators. As the number of mediators under consideration grows, this key assumption is likely to be violated as it is often infeasible to intervene on any of the mediators. In this article, we develop a simple two-step method of moments estimation procedure to assess mediation with multiple mediators simultaneously in the presence of potential unmeasured mediator-outcome confounding. Our identification result leverages heterogeneity of the population exposure effect on the mediators, which is plausible under a variety of empirical settings. The proposed estimators are illustrated through both simulations and an application to evaluate the mediating effects of post-traumatic stress disorder symptoms in the association between self-efficacy and fatigue among health care workers during the COVID-19 outbreak.
在健康和社会科学领域,研究多个暴露后中介变量的联合中介效应往往很有意义。识别这种联合中介效应通常要求在整个中介变量集方面,结果不存在未测量的混杂因素。随着所考虑的中介变量数量的增加,这一关键假设很可能会被违反,因为对任何一个中介变量进行干预通常都是不可行的。在本文中,我们开发了一种简单的两步矩估计程序,以在存在潜在未测量的中介-结果混杂因素的情况下,同时评估多个中介变量的中介作用。我们的识别结果利用了总体暴露效应在中介变量上的异质性,这在各种实证环境下都是合理的。通过模拟和一个应用实例展示了所提出的估计方法,该应用实例用于评估在新冠疫情期间医护人员自我效能感与疲劳之间的关联中创伤后应激障碍症状的中介作用。