Laird N M, Ware J H
Biometrics. 1982 Dec;38(4):963-74.
Models for the analysis of longitudinal data must recognize the relationship between serial observations on the same unit. Multivariate models with general covariance structure are often difficult to apply to highly unbalanced data, whereas two-stage random-effects models can be used easily. In two-stage models, the probability distributions for the response vectors of different individuals belong to a single family, but some random-effects parameters vary across individuals, with a distribution specified at the second stage. A general family of models is discussed, which includes both growth models and repeated-measures models as special cases. A unified approach to fitting these models, based on a combination of empirical Bayes and maximum likelihood estimation of model parameters and using the EM algorithm, is discussed. Two examples are taken from a current epidemiological study of the health effects of air pollution.
用于纵向数据分析的模型必须认识到同一单位上连续观测值之间的关系。具有一般协方差结构的多变量模型通常难以应用于高度不平衡的数据,而两阶段随机效应模型则可以轻松使用。在两阶段模型中,不同个体的响应向量的概率分布属于单个族,但一些随机效应参数因个体而异,并在第二阶段指定一个分布。本文讨论了一个一般的模型族,其中包括生长模型和重复测量模型作为特殊情况。本文还讨论了一种基于经验贝叶斯和模型参数最大似然估计相结合并使用期望最大化(EM)算法来拟合这些模型的统一方法。两个例子取自当前一项关于空气污染对健康影响的流行病学研究。