Title of article
A Bayesian Semiparametric Joint Hierarchical Model for Longitudinal and Survival Data
Author/Authors
Ibrahim، Joseph G. نويسنده , , Brown، Elizabeth R. نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2003
Pages
-220
From page
221
To page
0
Abstract
This article proposes a new semiparametric Bayesian hierarchical model for the joint modeling of longitudinal and survival data. We relax the distributional assumptions for the longitudinal model using Dirichlet process priors on the parameters defining the longitudinal model. The resulting posterior distribution of the longitudinal parameters is free of parametric constraints, resulting in more robust estimates. This type of approach is becoming increasingly essential in many applications, such as HIV and cancer vaccine trials, where patientsʹ responses are highly diverse and may not be easily modeled with known distributions. An example will be presented from a clinical trial of a cancer vaccine where the survival outcome is time to recurrence of a tumor. Immunologic measures believed to be predictive of tumor recurrence were taken repeatedly during follow-up. We will present an analysis of this data using our new semiparametric Bayesian hierarchical joint modeling methodology to determine the association of these longitudinal immunologic measures with time to tumor recurrence.
Keywords
Goodness of fit , Identifiability , Restricted latent class models , Model diagnosis , Parametric bootstrap
Journal title
CANADIAN JOURNAL OF STATISTICS
Serial Year
2003
Journal title
CANADIAN JOURNAL OF STATISTICS
Record number
83240
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