Bayesian approaches have been utilized to address the challenge of variable selection and statistical inference in high-dimensional survival analysis. However, the discontinuity of the ℓ 0 -norm prior, including the useful spike-and-slab prior, may lead to computational and implementation challenges, potentially limiting the widespread use of Bayesian methods. The Gaussian and diffused-gamma (GD) prior has emerged as a promising alternative due to its continuous-and-differentiable ℓ 0 -norm approximation and computational efficiency in generalized linear models. In this paper, we extend the GD prior to semi-parametric Cox models by proposing a rank-based Bayesian inference procedure with the Cox partial likelihood. We develop a computationally efficient algorithm based on the iterative conditional mode (ICM) and Markov chain Monte Carlo methods for posterior inference. Our simulations demonstrate the effectiveness of the proposed method, and we apply it to an electronic health record dataset to identify risk factors associated with COVID-19 mortality in ICU patients at a regional medical center.
Keyphrases
- monte carlo
- electronic health record
- single cell
- coronavirus disease
- sars cov
- intensive care unit
- cardiovascular events
- mechanical ventilation
- randomized controlled trial
- clinical decision support
- machine learning
- healthcare
- risk factors
- cardiovascular disease
- magnetic resonance imaging
- coronary artery disease
- minimally invasive
- molecular dynamics
- magnetic resonance
- respiratory syndrome coronavirus
- quality improvement
- computed tomography
- image quality