A Bayesian proportional hazards model for general interval-censored data Journal Article


Authors: Lin, X.; Cai, B.; Wang, L.; Zhang, Z.
Article Title: A Bayesian proportional hazards model for general interval-censored data
Abstract: The proportional hazards (PH) model is the most widely used semiparametric regression model for analyzing right-censored survival data based on the partial likelihood method. However, the partial likelihood does not exist for interval-censored data due to the complexity of the data structure. In this paper, we focus on general interval-censored data, which is a mixture of left-, right-, and interval-censored observations. We propose an efficient and easy-to-implement Bayesian estimation approach for analyzing such data under the PH model. The proposed approach adopts monotone splines to model the baseline cumulative hazard function and allows to estimate the regression parameters and the baseline survival function simultaneously. A novel two-stage data augmentation with Poisson latent variables is developed for the efficient computation. The developed Gibbs sampler is easy to execute as it does not require imputing any unobserved failure times or contain any complicated Metropolis-Hastings steps. Our approach is evaluated through extensive simulation studies and illustrated with two real-life data sets. © 2014, Springer Science+Business Media New York.
Keywords: proportional hazards model; semiparametric regression; interval-censored data; monotone splines; nonhomogeneous poisson process
Journal Title: Lifetime Data Analysis
Volume: 21
Issue: 3
ISSN: 1380-7870
Publisher: Springer  
Date Published: 2015-07-01
Start Page: 470
End Page: 490
Language: English
DOI: 10.1007/s10985-014-9305-9
PROVIDER: scopus
PUBMED: 25098226
DOI/URL:
Notes: Export Date: 2 July 2015 -- Source: Scopus
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  1. Zhigang Zhang
    428 Zhang