Bayesian joint models for longitudinal and survival data
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classification
stat.ME
keywords
survivalbayesiandistributionlongitudinalmodelsdatajointterms
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This paper takes a quick look at Bayesian joint models (BJM) for longitudinal and survival data. A general formulation for BJM is examined in terms of the sampling distribution of the longitudinal and survival processes, the conditional distribution of the random effects and the prior distribution. Next a basic BJM defined in terms of a mixed linear model and a Cox survival regression models is discussed and some extensions and other Bayesian topics are briefly outlined.
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