Vogler G P
Genet Epidemiol. 1985;2(1):35-53. doi: 10.1002/gepi.1370020105.
A method is presented for applying path analysis to general multivariate models of familial resemblance. In path models formulated using this approach, variables are defined as column vectors, path coefficients are defined as matrices of path coefficients, and correlations are defined as matrices of correlations. By applying a few simple rules for multivariate path analysis, general multivariate expected correlations can be derived from a path diagram which is essentially as simple as a univariate diagram and which can be used to analyze any number of variables. Multivariate expected correlations for three models of familial resemblance are derived, with particular attention given to the modeling of assortative mating: nuclear families with a phenotypic homogamy model of assortative mating, nuclear families with a social homogamy model of assortative mating, and twins and their parents with phenotypic homogamy. These models are applicable to many of the types of studies commonly undertaken in genetic epidemiology. The simplicity of the technique facilitates analyses of the etiology of variation and covariation among variables measured in such studies.
本文提出了一种将路径分析应用于家族相似性一般多变量模型的方法。在使用这种方法制定的路径模型中,变量被定义为列向量,路径系数被定义为路径系数矩阵,相关性被定义为相关矩阵。通过应用多变量路径分析的一些简单规则,可以从一个路径图中推导出一般多变量预期相关性,该路径图本质上与单变量图一样简单,并且可用于分析任意数量的变量。推导了三种家族相似性模型的多变量预期相关性,特别关注选型交配的建模:具有表型同型交配模型的核心家庭、具有社会同型交配模型的核心家庭以及具有表型同型交配的双胞胎及其父母。这些模型适用于遗传流行病学中常见的许多类型的研究。该技术的简单性有助于分析此类研究中测量的变量之间变异和协变的病因。