AN APPROXIMATE GENERALIZED LINEAR-MODEL WITH RANDOM EFFECTS FOR INFORMATIVE MISSING DATA

被引:209
|
作者
FOLLMANN, D
WU, M
机构
[1] Office of Biostatistics Research, NHLBI, Federal Building, Bethesda
关键词
INFORMATIVE CENSORING; LONGITUDINAL DATA; REPEATED MEASURES; SAMPLE SELECTION MODELS;
D O I
10.2307/2533322
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
This paper develops a class of models to deal with missing data from longitudinal studies. We assume that separate models for the primary response and missingness (e.g., number of missed visits) are linked by a common random parameter. Such models have been developed in the econometrics (Heckman, 1979, Econometrica 47, 153-161) and biostatistics (Wu and Carroll, 1988, Biometrics 44, 175-188) literature for a Gaussian primary response. We allow the primary response, conditional on the random parameter, to follow a generalized linear model and approximate the generalized linear model by conditioning on the data that describes missingness. The resultant approximation is a mixed generalized linear model with possibly heterogeneous random effects. An example is given to illustrate the approximate approach, and simulations are performed to critique the adequacy of the approximation for repeated binary data.
引用
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页码:151 / 168
页数:18
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