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Wiley InterScience

Biometrics

Biometrics

Volume 61 Issue 3, Pages 862 - 866

Published Online: 31 Aug 2005

©2009 International Biometric Society



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Comments about Joint Modeling of Cluster Size and Binary and Continuous Subunit-Specific Outcomes
Ralitza V. Gueorguieva 1
  1 Division of Biostatistics, Department of Epidemiology and Public Health, Yale University School of Medicine, 60 College Street, New Haven, Connecticut 06520, U.S.A.
email:ralitza.gueorguieva@yale.edu
Copyright The International Biometric Society, 2005
KEYWORDS
Developmental toxicity • Maximum likelihood • PROC NLMIXED • Repeated measures

ABSTRACT

Summary .   In longitudinal studies and in clustered situations often binary and continuous response variables are observed and need to be modeled together. In a recent publication Dunson, Chen, and Harry (2003, Biometrics59, 521–530) (DCH) propose a Bayesian approach for joint modeling of cluster size and binary and continuous subunit-specific outcomes and illustrate this approach with a developmental toxicity data example. In this note we demonstrate how standard software (PROC NLMIXED in SAS) can be used to obtain maximum likelihood estimates in an alternative parameterization of the model with a single cluster-level factor considered by DCH for that example. We also suggest that a more general model with additional cluster-level random effects provides a better fit to the data set. An apparent discrepancy between the estimates obtained by DCH and the estimates obtained earlier by Catalano and Ryan (1992, Journal of the American Statistical Association87, 651–658) is also resolved. The issue of bias in inferences concerning the dose effect when cluster size is ignored is discussed. The maximum-likelihood approach considered herein is applicable to general situations with multiple clustered or longitudinally measured outcomes of different type and does not require prior specification and extensive programming.


Received January 2004. Revised May 2004. Accepted May 2004.

DIGITAL OBJECT IDENTIFIER (DOI)
10.1111/j.1541-020X.2005.00409_1.x About DOI

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