Neuhaus J M, Kalbfleisch J D
Department of Epidemiology and Biostatistics, University of California, San Francisco 94143-0560, USA.
Biometrics. 1998 Jun;54(2):638-45.
Standard methods for the regression analysis of clustered data postulate models relating covariates to the response without regard to between- and within-cluster covariate effects. Implicit in these analyses is the assumption that these effects are identical. Example data show that this is frequently not the case and that analyses that ignore differential between- and within-cluster covariate effects can be misleading. Consideration of between- and within-cluster effects also helps to explain observed and theoretical differences between mixture model analyses and those based on conditional likelihood methods. In particular, we show that conditional likelihood methods estimate purely within-cluster covariate effects, whereas mixture model approaches estimate a weighted average of between- and within-cluster covariate effects.
聚类数据回归分析的标准方法假定协变量与响应之间的模型,而不考虑聚类间和聚类内协变量效应。这些分析中隐含的假设是这些效应是相同的。示例数据表明情况往往并非如此,忽略聚类间和聚类内协变量效应差异的分析可能会产生误导。考虑聚类间和聚类内效应也有助于解释混合模型分析与基于条件似然方法的分析之间观察到的和理论上的差异。特别是,我们表明条件似然方法估计的纯粹是聚类内协变量效应,而混合模型方法估计的是聚类间和聚类内协变量效应的加权平均值。