The Cox-Polya-Gamma Algorithm for Flexible Bayesian Inference of Multilevel Survival Models
Bayesian Cox semiparametric regression is an important problem in many clinical settings. Bayesian procedures provide finite-sample inference and naturally incorporate prior information if MCMC algorithms and posteriors are well behaved. Survival analysis should also be able to incorporate multileve...
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| Main Authors | , , |
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| Format | Journal Article |
| Language | English |
| Published |
22.02.2024
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| Subjects | |
| Online Access | Get full text |
| DOI | 10.48550/arxiv.2402.15060 |
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| Summary: | Bayesian Cox semiparametric regression is an important problem in many
clinical settings. Bayesian procedures provide finite-sample inference and
naturally incorporate prior information if MCMC algorithms and posteriors are
well behaved. Survival analysis should also be able to incorporate multilevel
modeling such as case weights, frailties and smoothing splines, in a
straightforward manner. To tackle these modeling challenges, we propose the
Cox-Polya-Gamma (Cox-PG) algorithm for Bayesian multilevel Cox semiparametric
regression and survival functions. Our novel computational procedure succinctly
addresses the difficult problem of monotonicity constrained modeling of the
nonparametric baseline cumulative hazard along with multilevel regression. We
develop two key strategies. First, we exploit an approximation between Cox
models and negative binomial processes through the Poisson process to reduce
Bayesian computation to iterative Gaussian sampling. Next, we appeal to
sufficient dimension reduction to address the difficult computation of
nonparametric baseline cumulative hazard, allowing for the collapse of the
Markov transition within the Gibbs sampler based on beta sufficient statistics.
In addition, we explore conditions for uniform ergodicity of the Cox-PG
algorithm. We demonstrate our multilevel modeling approach using open source
data and simulations. We provide software for our Bayesian procedure in the
supplement. |
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| DOI: | 10.48550/arxiv.2402.15060 |