Combining Dynamic Predictions From Joint Models for Longitudinal and Time-to-Event Data Using Bayesian Model Averaging

  • Dimitris Rizopoulos (677667)
  • Laura A. Hatfield (677668)
  • Bradley P. Carlin (677669)
  • Johanna J. M. Takkenberg (677670)
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Publication date
October 2014
ISSN
0162-1459
Citation count (estimate)
21

Abstract

<div><p>The joint modeling of longitudinal and time-to-event data is an active area of statistics research that has received a lot of attention in recent years. More recently, a new and attractive application of this type of model has been to obtain individualized predictions of survival probabilities and/or of future longitudinal responses. The advantageous feature of these predictions is that they are dynamically updated as extra longitudinal responses are collected for the subjects of interest, providing real time risk assessment using all recorded information. The aim of this article is two-fold. First, to highlight the importance of modeling the association structure between the longitudinal and event time responses that can greatly in...

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