Bayesian modelling for semi-competing risks data in the presence of censoring

Q4 Mathematics
A. Bhattacharjee, Rajashree Dey
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引用次数: 0

Abstract

In biomedical research, challenges to working with multiple events are often observed while dealing with time-to-event data. Studies on prolonged survival duration are prone to having numerous possibilities. In studies on prolonged survival, patients might die of other causes. Sometimes in the survival studies, patients experienced some events (e.g. cancer relapse) before dying within the study period. In this context, the semi-competing risks framework was found useful. Similarly, the prolonged duration of follow-up studies is also affected by censored observation, especially interval censoring, and right censoring. Some conventional approaches work with time-to-event data, like the Cox-proportional hazard model. However, the accelerated failure time (AFT) model is more effective than the Cox model because it overcomes the proportionality hazard assumption. We also observed covariates impacting the time-to-event data measured as the categorical format. No established method currently exists for fitting an AFT model that incorporates categorical covariates, multiple events, and censored observations simultaneously. This work is dedicated to overcoming the existing challenges by the applications of R programming and data illustration. We arrived at a conclusion that the developed methods are suitable to run and easy to implement in R software. The selection of covariates in the AFT model can be evaluated using model selection criteria such as the Deviance Information Criteria (DIC) and Log-pseudo marginal likelihood (LPML). Various extensions of the AFT model, such as AFT-DPM and AFT-LN, have been demonstrated. The final model was selected based on minimum DIC values and larger LPML values.
审查条件下半竞争风险数据的贝叶斯建模
在生物医学研究中,在处理时间到事件的数据时,经常会观察到处理多个事件的挑战。关于延长生存期的研究有很多可能性。在延长生存期的研究中,患者可能死于其他原因。有时,在生存研究中,患者在研究期内死亡前经历了一些事件(如癌症复发)。在这方面,半竞争性风险框架被认为是有用的。同样,随访研究的持续时间延长也受到审查观察的影响,尤其是区间审查和右审查。一些传统的方法处理事件时间数据,如Cox比例风险模型。然而,加速失效时间(AFT)模型比Cox模型更有效,因为它克服了比例风险假设。我们还观察到协变量影响作为分类格式测量的事件时间数据。目前还没有建立的方法来拟合同时包含分类协变量、多个事件和截尾观测的AFT模型。这项工作致力于通过应用R编程和数据说明来克服现有的挑战。我们得出的结论是,所开发的方法适合在R软件中运行,并且易于实现。AFT模型中协变量的选择可以使用模型选择标准来评估,例如偏差信息标准(DIC)和对数伪边际似然(LPML)。AFT模型的各种扩展,如AFT-DPM和AFT-LN。基于最小DIC值和较大LPML值来选择最终模型。
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来源期刊
Statistics in Transition
Statistics in Transition Decision Sciences-Statistics, Probability and Uncertainty
CiteScore
1.00
自引率
0.00%
发文量
0
审稿时长
9 weeks
期刊介绍: Statistics in Transition (SiT) is an international journal published jointly by the Polish Statistical Association (PTS) and the Central Statistical Office of Poland (CSO/GUS), which sponsors this publication. Launched in 1993, it was issued twice a year until 2006; since then it appears - under a slightly changed title, Statistics in Transition new series - three times a year; and after 2013 as a regular quarterly journal." The journal provides a forum for exchange of ideas and experience amongst members of international community of statisticians, data producers and users, including researchers, teachers, policy makers and the general public. Its initially dominating focus on statistical issues pertinent to transition from centrally planned to a market-oriented economy has gradually been extended to embracing statistical problems related to development and modernization of the system of public (official) statistics, in general.
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