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Journal of Probability and Statistics

Publication date: 2012-01-01
Volume: 2012
Publisher: Hindawi Publishing Corporation

Author:

Murawska, M
Rizopoulos, Dimitrios ; Lesaffre, Emmanuel

Keywords:

Science & Technology, Physical Sciences, Statistics & Probability, Mathematics, PROPORTIONAL HAZARDS MODEL, SURVIVAL-DATA, INFERENCE, COUNT

Abstract:

In transplantation studies, often longitudinal measurements are collected for important markers prior to the actual transplantation. Using only the last available measurement as a baseline covariate in a survival model for the time to graft failure discards the whole longitudinal evolution. We propose a two-stage approach to handle this type of data sets using all available information. At the first stage, we summarize the longitudinal information with nonlinear mixed-effects model, and at the second stage, we include the Empirical Bayes estimates of the subject-specific parameters as predictors in the Cox model for the time to allograft failure. To take into account that the estimated subject-specific parameters are included in the model, we use a Monte Carlo approach and sample from the posterior distribution of the random effects given the observed data. Our proposal is exemplified on a study of the impact of renal resistance evolution on the graft survival. © 2012 Magdalena Murawska et al.