School of Law, Psychology and Social Work, Center for Health and Medical Psychology, Örebro University, Örebro, Sweden.
Department of Behavioural Sciences and Learning, Linköping University, Linköping, Sweden.
Clin Psychol Psychother. 2022 May;29(3):1050-1058. doi: 10.1002/cpp.2687. Epub 2021 Nov 18.
Despite widespread interest in the development of process-based psychotherapies, little is still known about the underlying processes that underpin our most effective therapies. Statistical mediation analysis is a commonly used analytical method to evaluate how, or by which processes, a therapy causes change in an outcome. Causal mediation analysis (CMA) represents a new advancement in mediation analysis that employs causally defined direct and indirect effects based on potential outcomes. These novel ideas and analytical techniques have been characterized as revolutionary in epidemiology and biostatistics, although they are not (yet) widely known among researchers in clinical psychology. In this paper, I outline the fundamental concepts underlying CMA, clarify the differences between the CMA approach and the traditional approach to mediation, and identify two important data analytical aspects that have been emphasized as a result of these recent advancements. To illustrate the key ideas, assumptions, and mathematical definitions intuitively, an applied clinical example from a previously published randomized controlled trial is used. CMA's main contributions are discussed, as well as some of the key challenges. Finally, it is argued that the most significant contribution of CMA is the formalization of mediation in a unified causal framework with clear assumptions.
尽管人们普遍对基于过程的心理治疗的发展感兴趣,但对于支撑我们最有效的治疗方法的潜在过程仍知之甚少。统计中介分析是一种常用的分析方法,用于评估治疗如何或以何种方式通过哪些过程引起结果的变化。因果中介分析(CMA)是中介分析的一个新进展,它根据潜在结果使用因果定义的直接和间接效应。这些新的想法和分析技术在流行病学和生物统计学中被认为是革命性的,尽管在临床心理学研究人员中还没有(尚未)广为人知。在本文中,我概述了 CMA 的基本概念,阐明了 CMA 方法与传统中介方法之间的区别,并确定了由于这些新进展而强调的两个重要数据分析方面。为了直观地说明关键思想、假设和数学定义,使用了先前发表的随机对照试验中的一个应用临床示例。讨论了 CMA 的主要贡献,以及一些关键挑战。最后,有人认为 CMA 的最重要贡献是在一个具有明确假设的统一因果框架中对中介进行形式化。