VanderWeele T J, Vansteelandt S
Harvard School of Public Health, Boston, MA 02115.
Ghent University, Ghent, Belgium.
Epidemiol Methods. 2014 Jan;2(1):95-115. doi: 10.1515/em-2012-0010.
Recent advances in the causal inference literature on mediation have extended traditional approaches to direct and indirect effects to settings that allow for interactions and non-linearities. In this paper, these approaches from causal inference are further extended to settings in which multiple mediators may be of interest. Two analytic approaches, one based on regression and one based on weighting are proposed to estimate the effect mediated through multiple mediators and the effects through other pathways. The approaches proposed here accommodate exposure-mediator interactions and, to a certain extent, mediator-mediator interactions as well. The methods handle binary or continuous mediators and binary, continuous or count outcomes. When the mediators affect one another, the strategy of trying to assess direct and indirect effects one mediator at a time will in general fail; the approach given in this paper can still be used. A characterization is moreover given as to when the sum of the mediated effects for multiple mediators considered separately will be equal to the mediated effect of all of the mediators considered jointly. The approach proposed in this paper is robust to unmeasured common causes of two or more mediators.
因果推断文献中关于中介效应的最新进展已将传统的直接和间接效应方法扩展到允许存在相互作用和非线性的情形。在本文中,这些来自因果推断的方法被进一步扩展到可能存在多个感兴趣中介变量的情形。本文提出了两种分析方法,一种基于回归,另一种基于加权,以估计通过多个中介变量介导的效应以及通过其他路径的效应。这里提出的方法考虑了暴露 - 中介变量的相互作用,并且在一定程度上也考虑了中介变量 - 中介变量之间的相互作用。这些方法可处理二元或连续的中介变量以及二元、连续或计数型结局。当中介变量相互影响时,一次评估一个中介变量的直接和间接效应的策略通常会失败;本文给出的方法仍然可以使用。此外,还给出了一个关于何时分别考虑多个中介变量的介导效应之和等于联合考虑所有中介变量的介导效应的特征描述。本文提出的方法对于两个或多个中介变量的未测量共同原因具有稳健性。