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Factor analytic models of clustered multivariate data with informative censoring

机译:具有信息审查的聚类多元数据的因子分析模型

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This article describes a general class of factor analytic models for the analysis of clustered multivariate data in the presence of informative missingness. We assume that there are distinct sets of cluster-level latent variables related to the primary outcomes and to the censoring process, and we account for dependency between these latent variables through a hierarchical model. A linear model is used to relate covariates and latent variables to the primary outcomes for each subunit. A generalized linear model accounts for covariate and latent variable effects on the probability of censoring for subunits within each cluster. The model accounts for correlation within clusters and within subunits through a flexible factor analytic framework that allows multiple latent variables and covariate effects on the latent variables. The structure of the model facilitates implementation of Markov chain Monte Carlo methods for posterior estimation. Data from a spermatotoxicity study are analyzed to illustrate the proposed approach. [References: 21]
机译:本文介绍了一种通用的因子分析模型,用于在存在信息缺失的情况下分析聚类多元数据。我们假设存在与主要结果和审查过程相关的不同的群集级潜在变量集,并且我们通过层次模型解释了这些潜在变量之间的依赖性。线性模型用于将协变量和潜在变量与每个亚基的主要结果相关联。广义线性模型考虑了协变量和潜变量对每个聚类中亚单位的审查概率的影响。该模型通过灵活的因子分析框架说明了群集内和子单元内的相关性,该框架允许多个潜在变量以及对潜在变量的协变量影响。该模型的结构有助于实现马尔可夫链蒙特卡洛方法用于后验估计。对来自精子毒性研究的数据进行了分析,以说明所提出的方法。 [参考:21]

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