Nguyen Trang Quynh, Schmid Ian, Stuart Elizabeth A
Department of Mental Health, Johns Hopkins Bloomberg School of Public Health.
Psychol Methods. 2020 Jul 16. doi: 10.1037/met0000299.
The incorporation of causal inference in mediation analysis has led to theoretical and methodological advancements-effect definitions with causal interpretation, clarification of assumptions required for effect identification, and an expanding array of options for effect estimation. However, the literature on these results is fast-growing and complex, which may be confusing to researchers unfamiliar with causal inference or unfamiliar with mediation. The goal of this article is to help ease the understanding and adoption of causal mediation analysis. It starts by highlighting a key difference between the causal inference and traditional approaches to mediation analysis and making a case for the need for explicit causal thinking and the causal inference approach in mediation analysis. It then explains in as-plain-as-possible language existing effect types, paying special attention to motivating these effects with different types of research questions, and using concrete examples for illustration. This presentation differentiates 2 perspectives (or purposes of analysis): the explanatory perspective (aiming to explain the total effect) and the interventional perspective (asking questions about hypothetical interventions on the exposure and mediator, or hypothetically modified exposures). For the latter perspective, the article proposes tapping into a general class of interventional effects that contains as special cases most of the usual effect types-interventional direct and indirect effects, controlled direct effects and also a generalized interventional direct effect type, as well as the total effect and overall effect. This general class allows flexible effect definitions which better match many research questions than the standard interventional direct and indirect effects. (PsycInfo Database Record (c) 2020 APA, all rights reserved).
在中介分析中纳入因果推断已带来了理论和方法上的进步——具有因果解释的效应定义、对效应识别所需假设的澄清以及效应估计方法的不断扩展。然而,关于这些结果的文献增长迅速且复杂,这可能会让不熟悉因果推断或中介分析的研究人员感到困惑。本文的目的是帮助简化对因果中介分析的理解和应用。文章首先强调了因果推断与传统中介分析方法之间的关键差异,并论证了在中介分析中进行明确因果思考和采用因果推断方法的必要性。然后,文章用尽可能通俗易懂的语言解释了现有的效应类型,特别关注如何用不同类型的研究问题来激发这些效应,并通过具体例子进行说明。本介绍区分了两种视角(或分析目的):解释性视角(旨在解释总效应)和干预性视角(询问关于对暴露和中介进行假设干预或假设性改变暴露的问题)。对于后一种视角,文章提出利用一类一般的干预效应,其中包含作为特殊情况的大多数常见效应类型——干预直接效应和间接效应、控制直接效应以及一种广义的干预直接效应类型,还有总效应和总体效应。这类一般效应允许灵活的效应定义,比标准的干预直接效应和间接效应更能匹配许多研究问题。(PsycInfo数据库记录(c)2020美国心理学会,保留所有权利)