Department of Epidemiology, Biostatistics and Occupational Health, McGill University.
Division of Rheumatology, Inflammation, and Immunity, Department of Medicine, Brigham and Women's Hospital.
Psychol Trauma. 2023 Sep;15(6):930-938. doi: 10.1037/tra0001421. Epub 2023 Jan 26.
We provide an overview of regression-based causal mediation analysis in the field of traumatic stress and guidance on how to conduct mediation analysis using our R package .
We discuss the causal interpretations of the quantities that causal mediation analysis estimates, including total, direct, and indirect effects, especially when the interaction between exposure and mediator is permitted. We discuss the assumptions that must be fulfilled for mediation analyses to validly estimate these causal quantities, discuss suitable study designs for assessing mediation, and describe how causal mediation analysis differs from traditional methods of mediation. To illustrate how to conduct and interpret mediation analysis using our R package , we use data from a published longitudinal study to assess the extent to which children's externalizing behavior mediates changes in parental negative feelings during the COVID-19 lockdown. We compare the results to those obtained using traditional methods, thus illustrating the importance of accounting for exposure-mediator interaction when an interaction may be present.
When the exposure and the mediator interact, traditional methods can provide estimates of direct and indirect effects that differ from those provided by more flexible causal mediation methods. When the exposure and the mediator do not interact, traditional methods and causal mediation method may estimate similar direct and indirect effects depending on the model specification.
In contrast to traditional methods of mediation analysis, regression-based causal mediation methods seek to estimate specific interventional quantities, not mere associations, and the causal methods explicitly allow for exposure-mediator interactions. We recommend using these methods by default rather than using more restrictive traditional methods. (PsycInfo Database Record (c) 2023 APA, all rights reserved).
我们提供了创伤应激领域中基于回归的因果中介分析概述,并提供了如何使用我们的 R 包进行中介分析的指导。
我们讨论了因果中介分析估计的数量的因果解释,包括总效应、直接效应和间接效应,特别是当允许暴露和中介之间存在交互作用时。我们讨论了中介分析要有效估计这些因果数量必须满足的假设,讨论了评估中介的合适研究设计,并描述了因果中介分析与传统中介方法的区别。为了说明如何使用我们的 R 包进行和解释中介分析,我们使用已发表的纵向研究的数据来评估儿童的外化行为在 COVID-19 封锁期间对父母负面情绪变化的中介程度。我们将结果与传统方法的结果进行比较,从而说明了在存在交互作用时,考虑暴露-中介相互作用的重要性。
当暴露和中介相互作用时,传统方法可以提供与更灵活的因果中介方法提供的直接和间接效应不同的估计值。当暴露和中介不相互作用时,传统方法和因果中介方法可能根据模型规范估计相似的直接和间接效应。
与传统的中介分析方法相比,基于回归的因果中介方法旨在估计特定的干预数量,而不仅仅是关联,并且因果方法明确允许暴露-中介相互作用。我们建议默认使用这些方法,而不是使用更具限制性的传统方法。(PsycInfo 数据库记录(c)2023 APA,保留所有权利)。