Mixed Poisson Likelihood Regression Models for Longitudinal Interval Count Data

Publication Description
In many longitudinal studies it is desired to estimate and test the rate over time of a particular recurrent event. Often only the event counts corresponding to the elapsed time intervals between each subject's successive observation times, and baseline covariate data, are available. The intervals may vary substantially in length and number between subjects, so that the corresponding vectors of counts are not directly comparable. A family of Poisson likelihood regression models incorporating a mixed random multiplicative component in the rate function of each subject is proposed for this longitudinal data structure. A related empirical Bayes estimate of random-effect parameters is also described. These methods are illustrated by an analysis of dyspepsia data from the National Cooperative Gallstone Study.

Primary Author
Peter F. Thall

Volume
44

Issue
1

Start Page
197

Other Pages
209

Publisher
Biometric Society

URL
https://www.jstor.org/stable/2531907

PMID
3358988



Reference Type
Journal Article

Periodical Full
Biometrics

Publication Year
1988

Publication Date
Mar 1,

Place of Publication
United States

ISSN/ISBN
0006-341X

Document Object Index
10.2307/2531907