Effect of omitted confounders on the analysis of correlated binary data

被引:20
|
作者
Chao, WH [1 ]
Palta, M [1 ]
Young, T [1 ]
机构
[1] ACAD SINICA,INST STAT SCI,TAIPEI 11529,TAIWAN
关键词
confounding; generalized estimating equations; generalized linear models; longitudinal data; model misspecification; population averaged models;
D O I
10.2307/2533967
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Marginal analysis using the generalized estimating equation approach is widely applied to correlated observations, as occur in studies with clusters and in longitudinal follow-up of individuals. In this article, we investigate the effect of confounding in such models. We assume that a risk factor x and a confounder z are related by a generalized linear model to the outcome y, which can be binary or ordinal. In order to investigate confounding arising from the omission of z, a joint structure for x and z must be specified. Modeling normally distributed (x,z) as sums of between- and within-individual (or cluster) components allows us to incorporate different degrees of between and within-individual correlation. Such a structure includes, as special cases, cohort and period effects in longitudinal settings and random intercept models. The latter situation corresponds to allowing z to vary only on the between-individual (or cluster) level and to be uncorrelated with x, and leads to attenuation of the coefficient of x in marginal models with the legit and probit links. More complex situations occur when z is allowed to also vary on the within-individual (or cluster) level and when z is correlated with x. We examine the model specification and the expected bias when fitting a marginal model in the presence of the omitted confounder z. We derive general formulas and interpret the parameters and results in an ongoing cohort study. Testing for omitted I covariates is also discussed.
引用
收藏
页码:678 / 689
页数:12
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