Goldstein H, Healy M J, Rasbash J
Institute of Education, University of London, U.K.
Stat Med. 1994 Aug 30;13(16):1643-55. doi: 10.1002/sim.4780131605.
The analysis of repeated measures data can be conducted efficiently using a two-level random coefficients model. A standard assumption is that the within-individual (level 1) residuals are uncorrelated. In some cases, especially where measurements are made close together in time, this may not be reasonable and this additional correlation structure should also be modelled. A time series model for such data is proposed which consists of a standard multilevel model for repeated measures data augmented by an autocorrelation model for the level 1 residuals. First- and second-order autoregressive models are considered in detail, together with a seasonal component. Both discrete and continuous time are considered and it is shown how the autocorrelation parameters can themselves be structured in terms of further explanatory variables. The models are fitted to a data set consisting of repeated height measurements on children.
使用两级随机系数模型可以有效地进行重复测量数据的分析。一个标准假设是个体内部(第1级)残差是不相关的。在某些情况下,尤其是测量时间间隔很近时,这可能不合理,因此还应建立这种额外的相关结构模型。本文提出了一种针对此类数据的时间序列模型,该模型由重复测量数据的标准多级模型和第1级残差的自相关模型组成。详细考虑了一阶和二阶自回归模型以及季节性成分。同时考虑了离散时间和连续时间,并展示了自相关参数如何根据进一步的解释变量进行构建。这些模型被应用于一个由儿童重复身高测量组成的数据集。