Roy J, Lin X
Department of Biostatistics, University of Michigan, Ann Arbor, Michigan 48109, USA.
Biometrics. 2000 Dec;56(4):1047-54. doi: 10.1111/j.0006-341x.2000.01047.x.
Multiple outcomes are often used to properly characterize an effect of interest. This paper proposes a latent variable model for the situation where repeated measures over time are obtained on each outcome. These outcomes are assumed to measure an underlying quantity of main interest from different perspectives. We relate the observed outcomes using regression models to a latent variable, which is then modeled as a function of covariates by a separate regression model. Random effects are used to model the correlation due to repeated measures of the observed outcomes and the latent variable. An EM algorithm is developed to obtain maximum likelihood estimates of model parameters. Unit-specific predictions of the latent variables are also calculated. This method is illustrated using data from a national panel study on changes in methadone treatment practices.
多个结果通常用于恰当地描述感兴趣的效应。本文针对对每个结果随时间进行重复测量的情况提出了一种潜在变量模型。假定这些结果从不同角度测量主要感兴趣的一个潜在量。我们使用回归模型将观察到的结果与一个潜在变量联系起来,然后通过一个单独的回归模型将该潜在变量建模为协变量的函数。随机效应用于对因观察到的结果和潜在变量的重复测量而产生的相关性进行建模。开发了一种期望最大化(EM)算法来获得模型参数的最大似然估计。还计算了潜在变量的单位特定预测值。使用来自一项关于美沙酮治疗实践变化的全国性面板研究的数据对该方法进行了说明。