Biostatistics & Health Informatics Department, King's College London.
Department of Psychology, Arizona State University.
Psychol Methods. 2018 Jun;23(2):191-207. doi: 10.1037/met0000154. Epub 2017 Dec 28.
The study of mediation of treatment effects, or how treatments work, is important to understanding and improving psychological and behavioral treatments, but applications often focus on mediators and outcomes measured at a single time point. Such cross-sectional analyses do not respect the implied temporal ordering that mediation suggests. Clinical trials of treatments often provide repeated measures of outcomes and, increasingly, of mediators as well. Repeated measurements allow the application of various types of longitudinal structural equation mediation models. These provide flexibility in modeling, including the ability to incorporate some types of measurement error and unmeasured confounding that can strengthen the robustness of findings. The usual approach is to identify the most theoretically plausible model and apply that model. In the absence of clear theory, we put forward the option of fitting a few theoretically plausible models, providing a type of sensitivity analysis for the mediation hypothesis. In this tutorial, we outline how to fit several longitudinal mediation models, including simplex, latent growth and latent change models. This will allow readers to learn about one type of model that is of interest, or about several alternative models, so that they can take this sensitivity approach. We use the Pacing, Graded Activity, and Cognitive Behavioral Therapy: A Randomized Evaluation (PACE) trial of rehabilitative treatments for chronic fatigue syndrome (ISRCTN 54285094) as a motivating example and describe how to fit and interpret various longitudinal mediation models using simulated data similar to those in the PACE trial. The simulated data set and Mplus code and output are provided. (PsycINFO Database Record
该研究的调解治疗效果,或如何治疗工作,是重要的理解和改进心理和行为治疗,但应用程序通常侧重于调解和结果在一个单一的时间点测量。这种横断面分析不尊重调解建议的隐含时间顺序。治疗的临床试验通常提供结果的重复测量,并且越来越多地提供调解的重复测量。重复测量允许应用各种类型的纵向结构方程调解模型。这些模型在建模方面提供了灵活性,包括纳入某些类型的测量误差和未测量混杂的能力,从而增强了研究结果的稳健性。通常的方法是确定最具理论意义的模型,并应用该模型。在没有明确理论的情况下,我们提出拟合几个具有理论意义的模型的选择,为调解假设提供一种敏感性分析。在本教程中,我们概述了如何拟合几种纵向调解模型,包括单形、潜在增长和潜在变化模型。这将使读者了解一种感兴趣的模型类型,或者了解几种替代模型,以便他们可以采用这种敏感性方法。我们使用慢性疲劳综合征康复治疗的 paced、分级活动和认知行为疗法:随机评估(pace)试验(isrctn54285094)作为一个激励性的例子,并描述如何使用类似于 pace 试验中的模拟数据拟合和解释各种纵向调解模型。提供了模拟数据集和 Mplus 代码和输出。