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Sine-G family of distributions in Bayesian survival modeling: A baseline hazard approach for proportional hazard regression with application to right-censored oncology datasets using R and STAN.

PloS one 2025 Vol.20(3) p. e0307410

Muse AH, Almohaimeed A, Alqifari HN, Chesneau C

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In medical research and clinical practice, Bayesian survival modeling is a powerful technique for assessing time-to-event data.

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BibTeX ↓ RIS ↓
APA Muse AH, Almohaimeed A, et al. (2025). Sine-G family of distributions in Bayesian survival modeling: A baseline hazard approach for proportional hazard regression with application to right-censored oncology datasets using R and STAN.. PloS one, 20(3), e0307410. https://doi.org/10.1371/journal.pone.0307410
MLA Muse AH, et al.. "Sine-G family of distributions in Bayesian survival modeling: A baseline hazard approach for proportional hazard regression with application to right-censored oncology datasets using R and STAN.." PloS one, vol. 20, no. 3, 2025, pp. e0307410.
PMID 40080457

Abstract

In medical research and clinical practice, Bayesian survival modeling is a powerful technique for assessing time-to-event data. It allows for the incorporation of prior knowledge about the model's parameters and provides a more comprehensive understanding of the underlying hazard rate function. In this paper, we propose a Bayesian survival modeling strategy for proportional hazards regression models that employs the Sine-G family of distributions as baseline hazards. The Sine-G family contains flexible distributions that can capture a wide range of hazard forms, including increasing, decreasing, and bathtub-shaped hazards. In order to capture the underlying hazard rate function, we examine the flexibility and effectiveness of several distributions within the Sine-G family, such as the Gompertz, Lomax, Weibull, and exponentiated exponential distributions. The proposed approach is implemented using the R programming language and the STAN probabilistic programming framework. To evaluate the proposed approach, we use a right-censored survival dataset of gastric cancer patients, which allows for precise determination of the hazard rate function while accounting for censoring. The Watanabe Akaike information criterion and the leave-one-out information criterion are employed to evaluate the performance of various baseline hazards.

MeSH Terms

Humans; Bayes Theorem; Neoplasms; Survival Analysis; Proportional Hazards Models