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On nonlinear random effects models for repeated measurements
Authors:Kathryn Hirst  Gary O. Zerbe  David W. Boyle  Randall B. Wilkening
Affiliation:1. Preventive Medicine and Biometrics , University of Colorado School of Medicine , Denver, Colorado, 80262;2. Pediatrics , University of Colorado School of Medicine , Denver, Colorado, 80262
Abstract:Linear random effects models for longitudinal data discussed by Laird and Ware (1982), Jennrich and Schluchter (1986), Lange and Laird (1989), and others are extended in a straight forward manner to nonlinear random effects models. This results in a simple computational approach which accommodates patterned covariance matrices and data insufficient for fitting each subject separately. The technique is demonstrated with an interesting medical data set, and a short, simple SAS PROC IML program based on the EM algorithm is presented.
Keywords:nonlinear mixed effects model  EM algorithm  longitudinal data  stochastic parameters
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