Department of Psychology, Faculty of Arts and Social Sciences, National University of Singapore, Block AS4, Level 2, 9 Arts Link, Singapore, 117570, Singapore,
Behav Res Methods. 2014 Mar;46(1):29-40. doi: 10.3758/s13428-013-0361-y.
Meta-analytic structural equation modeling (MASEM) combines the ideas of meta-analysis and structural equation modeling for the purpose of synthesizing correlation or covariance matrices and fitting structural equation models on the pooled correlation or covariance matrix. Cheung and Chan (Psychological Methods 10:40-64, 2005b, Structural Equation Modeling 16:28-53, 2009) proposed a two-stage structural equation modeling (TSSEM) approach to conducting MASEM that was based on a fixed-effects model by assuming that all studies have the same population correlation or covariance matrices. The main objective of this article is to extend the TSSEM approach to a random-effects model by the inclusion of study-specific random effects. Another objective is to demonstrate the procedures with two examples using the metaSEM package implemented in the R statistical environment. Issues related to and future directions for MASEM are discussed.
元分析结构方程建模(MASEM)结合了元分析和结构方程建模的思想,旨在综合相关或协方差矩阵,并在合并的相关或协方差矩阵上拟合结构方程模型。Cheung 和 Chan(2005b,Psychological Methods 10:40-64;2009,Structural Equation Modeling 16:28-53)提出了一种两阶段结构方程建模(TSSEM)方法来进行 MASEM,该方法基于固定效应模型,假设所有研究都具有相同的总体相关或协方差矩阵。本文的主要目的是通过纳入研究特定的随机效应,将 TSSEM 方法扩展到随机效应模型。另一个目标是使用在 R 统计环境中实现的 metaSEM 包,通过两个示例来说明这些过程。讨论了与 MASEM 相关的问题和未来方向。