Stanek E J, Kline G
University of Massachusetts, School of Public Health, Amherst 01003.
Stat Med. 1991 Jan;10(1):119-30. doi: 10.1002/sim.4780100116.
Experimental designs with repeated measures allow response patterns over time (or dose) to be modelled and compared between different homogeneous groups. Issues in data analysis often focus on the pattern of variation of the repeated measures, the appropriateness of a univariate or multivariate analysis, and the shape of the response pattern. An aspect of analysis that is often of equal importance is the development of a regression model for response once the pattern has been characterized. Analysis of variance or multivariate growth curve results often do not include easily interpretable regression equation estimates that can be used for prediction. We present methods and tables that permit simple construction of such predictive equations for repeated measures designs when response is modelled as a polynomial over time with univariate or multivariate analyses.
具有重复测量的实验设计允许对不同时间(或剂量)的反应模式进行建模,并在不同的同质组之间进行比较。数据分析中的问题通常集中在重复测量的变化模式、单变量或多变量分析的适用性以及反应模式的形状上。一旦反应模式被确定,经常同样重要的一个分析方面是建立反应的回归模型。方差分析或多变量生长曲线结果通常不包括可用于预测的易于解释的回归方程估计值。当反应通过单变量或多变量分析被建模为随时间变化的多项式时,我们提出了一些方法和表格,用于在重复测量设计中简单构建此类预测方程。