Some covariance models for longitudinal count data with overdispersion.

P F Thall, S C Vail
Author Information
  1. P F Thall: Statistics/Computer & Information Systems Department, George Washington University, Washington, D.C. 20052.

Abstract

A family of covariance models for longitudinal counts with predictive covariates is presented. These models account for overdispersion, heteroscedasticity, and dependence among repeated observations. The approach is a quasi-likelihood regression similar to the formulation given by Liang and Zeger (1986, Biometrika 73, 13-22). Generalized estimating equations for both the covariate parameters and the variance-covariance parameters are presented. Large-sample properties of the parameter estimates are derived. The proposed methods are illustrated by an analysis of epileptic seizure count data arising from a study of progabide as an adjuvant therapy for partial seizures.

Grants

  1. R01-AM-35952/NIADDK NIH HHS

MeSH Term

Analysis of Variance
Biometry
Epilepsy
Humans
Longitudinal Studies
Models, Statistical

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