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Joint two‐part Tobit models for longitudinal and time‐to‐event data
Authors:Getachew A Dagne
Institution:Department of Epidemiology and Biostatistics, College of Public Health, MDC 56, University of South Florida, Tampa, USA
Abstract:In this article, we show how Tobit models can address problems of identifying characteristics of subjects having left‐censored outcomes in the context of developing a method for jointly analyzing time‐to‐event and longitudinal data. There are some methods for handling these types of data separately, but they may not be appropriate when time to event is dependent on the longitudinal outcome, and a substantial portion of values are reported to be below the limits of detection. An alternative approach is to develop a joint model for the time‐to‐event outcome and a two‐part longitudinal outcome, linking them through random effects. This proposed approach is implemented to assess the association between the risk of decline of CD4/CD8 ratio and rates of change in viral load, along with discriminating between patients who are potentially progressors to AIDS from patients who do not. We develop a fully Bayesian approach for fitting joint two‐part Tobit models and illustrate the proposed methods on simulated and real data from an AIDS clinical study.
Keywords:accelerated failure time model  Bayesian inference  semiparametric model  skew distribution  survival analysis
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