Stein Catherine M, Morris Nathan J, Hall Noémi B, Nock Nora L
Department of Population and Quantitative Health Sciences, Case Western Reserve University School of Medicine, Wolstein Research Building, 2103 Cornell Road, Cleveland, OH, 44106-7281, USA.
Center for Proteomics and Bioinformatics, Case Western Reserve University, Cleveland, OH, USA.
Methods Mol Biol. 2017;1666:557-580. doi: 10.1007/978-1-4939-7274-6_28.
Structural equation modeling (SEM) is a multivariate statistical framework that is used to model complex relationships between directly observed and indirectly observed (latent) variables. SEM is a general framework that involves simultaneously solving systems of linear equations and encompasses other techniques such as regression, factor analysis, path analysis, and latent growth curve modeling. Recently, SEM has gained popularity in the analysis of complex genetic traits because it can be used to better analyze the relationships between correlated variables (traits), to model genes as latent variables as a function of multiple observed genetic variants, and to assess the association between multiple genetic variants and multiple correlated phenotypes of interest. Though the general SEM framework only allows for the analysis of independent observations, recent work has extended SEM for the analysis of data on general pedigrees. Here, we review the theory of SEM for both unrelated and family data, describe the available software for SEM, and provide examples of SEM analysis.
结构方程模型(SEM)是一种多元统计框架,用于对直接观测变量和间接观测(潜在)变量之间的复杂关系进行建模。SEM是一个通用框架,涉及同时求解线性方程组,并涵盖其他技术,如回归分析、因子分析、路径分析和潜在增长曲线建模。最近,SEM在复杂遗传性状分析中受到欢迎,因为它可用于更好地分析相关变量(性状)之间的关系,将基因建模为多个观测到的遗传变异的函数的潜在变量,并评估多个遗传变异与多个感兴趣的相关表型之间的关联。尽管一般的SEM框架仅允许对独立观测值进行分析,但最近的工作已将SEM扩展用于分析一般系谱数据。在此,我们回顾了用于非亲属和家族数据的SEM理论,描述了可用的SEM软件,并提供了SEM分析的示例。