A comparison of Bayesian accelerated failure time models with spatially varying coefficients

02/08/2020
by   Guanyu Hu, et al.
0

The accelerated failure time (AFT) model is a commonly used tool in analyzing survival data. In public health studies, data is often collected from medical service providers in different locations. Survival rates from different locations often present geographically varying patterns. In this paper, we focus on the accelerated failure time model with spatially varying coefficients. We compare three types of the priors for spatially varying coefficients. A model selection criterion, logarithm of the pseudo-marginal likelihood (LPML), is developed to assess the fit of AFT model with different priors. Extensive simulation studies are carried out to examine the empirical performance of the proposed methods. Finally, we apply our model to SEER data on prostate cancer in Louisiana and demonstrate the existence of spatially varying effects on survival rates from prostate cancer data.

READ FULL TEXT
research
08/24/2019

Geographically Weighted Cox Regression for Prostate Cancer Survival Data in Louisiana

The Cox proportional hazard model is one of the most popular tools in an...
research
09/02/2020

Analysis of survival data with non-proportional hazards: A comparison of propensity score weighted methods

One of the most common ways researchers compare survival outcomes across...
research
12/06/2021

Bayesian Structural Equation Modeling in Multiple Omics Data Integration with Application to Circadian Genes

It is well known that the integration among different data-sources is re...
research
03/16/2023

A Spatially Varying Hierarchical Random Effects Model for Longitudinal Macular Structural Data in Glaucoma Patients

We model longitudinal macular thickness measurements to monitor the cour...
research
12/20/2019

Robust Estimation and Variable Selection for the Accelerated Failure Time Model

This paper considers robust modeling of the survival time for cancer pat...

Please sign up or login with your details

Forgot password? Click here to reset