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Statistical Methods in Medical Research
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0962280206075311v1
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Article

Latent class models and their application to missing-data patterns in longitudinal studies

Jason Roy*

Department of Biostatistics and Computational Biology, University of Rochester, Rochester, NY, USA

* To whom correspondence should be addressed.


   Abstract

Latent class models have been developed as a flexible way of modeling the correlation of multivariate data, as a method for discovering subpopulations with similar response profiles and as a dimension reduction tool. In this manuscript, we provide a review of some of this literature and describe specific developments in several statistical and substantive areas. We then describe latent class models that could be used for characterizing missing-data patterns in longitudinal studies with regularly spaced observation times, where there is a large amount of intermittent missing data. We illustrate by analyzing data from a longitudinal study of depression, where there were 379 unique missing-data patterns.

First published on July 26, 2007, doi:10.1177/0962280206075311

Statistical Methods in Medical Research 2007;16:441.

A more recent version of this article appeared on October 1, 2007


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