Department of Psychology.
Department of Psychiatry.
J Consult Clin Psychol. 2022 May;90(5):446-458. doi: 10.1037/ccp0000727.
Modeling cross-lagged effects in psychotherapy mechanisms of change studies is complex and requires careful attention to model selection and interpretation. However, there is a lack of field-specific guidelines. We aimed to (a) describe the estimation and interpretation of cross lagged effects using multilevel models (MLM) and random-intercept cross lagged panel model (RI-CLPM); (b) compare these models' performance and risk of bias using simulations and an applied research example to formulate recommendations for practice.
Part 1 is a tutorial focused on introducing/describing dynamic effects in the form of autoregression and bidirectionality. In Part 2, we compare the estimation of cross-lagged effects in RI-CLPM, which takes dynamic effects into account, with three commonly used MLMs that cannot accommodate dynamics. In Part 3, we describe a Monte Carlo simulation study testing model performance of RI-CLPM and MLM under realistic conditions for psychotherapy mechanisms of change studies.
Our findings suggested that all three MLMs resulted in severely biased estimates of cross-lagged effects when dynamic effects were present in the data, with some experimental conditions generating statistically significant estimates in the wrong direction. MLMs performed comparably well only in conditions which are conceptually unrealistic for psychotherapy mechanisms of change research (i.e., no inertia in variables and no bidirectional effects).
Based on conceptual fit and our simulation results, we strongly recommend using fully dynamic structural equation modeling models, such as the RI-CLPM, rather than static, unidirectional regression models (e.g., MLM) to study cross-lagged effects in mechanisms of change research. (PsycInfo Database Record (c) 2022 APA, all rights reserved).
在心理治疗机制变化研究中,对交叉滞后效应进行建模是复杂的,需要仔细注意模型选择和解释。然而,目前缺乏特定于该领域的指南。我们旨在:(a) 描述使用多层模型 (MLM) 和随机截距交叉滞后面板模型 (RI-CLPM) 估计和解释交叉滞后效应;(b) 通过模拟和应用研究示例比较这些模型的性能和偏差风险,为实践制定建议。
第 1 部分是一个教程,重点介绍了自回归和双向性形式的动态效应的引入/描述。在第 2 部分中,我们比较了 RI-CLPM 中交叉滞后效应的估计,RI-CLPM 考虑了动态效应,而不能适应动态效应的三种常用 MLM 则不能。在第 3 部分,我们描述了一项蒙特卡罗模拟研究,该研究测试了 RI-CLPM 和 MLM 在心理治疗机制变化研究的现实条件下的模型性能。
我们的研究结果表明,当数据中存在动态效应时,所有三种 MLM 都会导致交叉滞后效应的严重偏差估计,一些实验条件会生成在错误方向上具有统计学意义的估计。只有在概念上不现实的心理治疗机制变化研究条件下(即变量无惯性且无双向效应),MLM 才会表现出相当好的性能。
基于概念契合度和我们的模拟结果,我们强烈建议在机制变化研究中使用完全动态的结构方程建模模型,如 RI-CLPM,而不是静态的、单向的回归模型(如 MLM)来研究交叉滞后效应。(PsycInfo 数据库记录(c)2022 APA,保留所有权利)。