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Activity Number: 326
Type: Topic Contributed
Date/Time: Tuesday, August 5, 2014 : 10:30 AM to 12:20 PM
Sponsor: Biometrics Section
Abstract #312667
Title: Regression Analysis of Longitudinal Data with Irregular and Informative Observation Times
Author(s): Yong Chen*+ and Jing Ning and Chunyan Cai
Companies: University of Texas School of Public Health and MD Anderson Cancer Center and University of Texas Health Science Center at Houston
Keywords: Informative observation time ; Irregular observation time ; Longitudinal data analysis ; Outcome-dependent sampling ; Pairwise likelihood
Abstract:

In longitudinal data analyses, the observation times are often assumed to be independent of the outcomes. In applications in which this assumption is violated, the standard inferential approach of using the generalized estimating equations may lead to biased inference. Current methods require the correct specification of either the observation time process or the repeated measure process with a correct covariance structure. In this article, we construct a novel pairwise pseudolikelihood method for longitudinal data that allows for dependence between observation times and outcomes. This method investigates the marginal covariate effects on the repeated measure process, while leaving the probability structure of the observation time process unspecified. The novelty of this method is that it yields consistent estimator of the marginal covariate effects without specification of the observation time process or the covariance structure of repeated measures process. Simulation studies demonstrate that the proposed method performs well in finite samples. An analysis of weight loss data from a web-based program is presented to illustrate the proposed method.


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