Longitudinal data analysis for discrete and continuous outcomes

SL Zeger, KY Liang - Biometrics, 1986 - JSTOR
SL Zeger, KY Liang
Biometrics, 1986JSTOR
Longitudinal data sets are comprised of repeated observations of an outcome and a set of
covariates for each of many subjects. One objective of statistical analysis is to describe the
marginal expectation of the outcome variable as a function of the covariates while
accounting for the correlation among the repeated observations for a given subject. This
paper proposes a unifying approach to such analysis for a variety of discrete and continuous
outcomes. A class of generalized estimating equations (GEEs) for the regression parameters …
Longitudinal data sets are comprised of repeated observations of an outcome and a set of covariates for each of many subjects. One objective of statistical analysis is to describe the marginal expectation of the outcome variable as a function of the covariates while accounting for the correlation among the repeated observations for a given subject. This paper proposes a unifying approach to such analysis for a variety of discrete and continuous outcomes. A class of generalized estimating equations (GEEs) for the regression parameters is proposed. The equations are extensions of those used in quasi-likelihood (Wedderburn, 1974, Biometrika 61, 439-447) methods. The GEEs have solutions which are consistent and asymptotically Gaussian even when the time dependence is misspecified as we often expect. A consistent variance estimate is presented. We illustrate the use of the GEE approach with longitudinal data from a study of the effect of mothers' stress on children's morbidity.
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