Bayesian Regression Methods for Crossing Survival Curves
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Date
2009-09-29
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Abstract
In survival data analysis, the proportional hazards (PH), accelerated failure time
(AFT), and proportional odds (PO) models are commonly used semiparametric models for
the comparison of survivability in subjects. These models assume that the survival curves
do not cross. However, in some clinical applications, the survival curves pertaining to the two groups of subjects under the study may cross each other, especially for long-duration
studies. Hence, these three models stated above may no longer be suitable for making inference
Yang and Prentice (2005) proposed a model which separately models the short-term and long-term hazard ratios nesting both PH and PO. This feature allows for the survival functions to cross. First, we study the estimation procedure in the Yang-Prentice model with regards to the two-sample case. We propose two different approaches: (1) Bayesian bootstrap and (2) smoothing methods. The first approach involves Bayesian bootstrap
with likelihoods corresponding to binomial and Poisson forms while the second approach
involves kernel smoothing methods as well as smoothing spline methods. A simulation is
conducted to compare various methods under the two-sample case. Next, we extend the
Yang-Prentice model to a regression version involving predictors and examine three likelihood
approaches including Poisson form, pseudo-likelihood, and Bayesian smoothing. The
effects of model misspecification on asymptotic relative efficiency are also studied empirically. The results from simulation studies indicate that the PH, AFT, and PO models are not robust to model misspecifications when the survival functions are allowed to cross.
Finally, we calculate the marginal density via variational methods to determine
the Bayes factor. Either a full Bayesian or Bayesian approach is implemented to perform
model selection. Both approaches accurately identify the correct model, even under slight
misspecification, and are computationally more efficient than MCMC techniques.
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variational methods, Bayesian inference, survival analysis
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Degree
PhD
Discipline
Statistics