Please use this identifier to cite or link to this item: https://doi.org/10.1177/09622802211048059
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dc.titleBayesian inference on the number of recurrent events: A joint model of recurrence and survival
dc.contributor.authorBoom, Willem van den
dc.contributor.authorDE IORIO, MARIA
dc.contributor.authorTallarita, Marta
dc.date.accessioned2021-11-30T04:55:21Z
dc.date.available2021-11-30T04:55:21Z
dc.date.issued2020-05-14
dc.identifier.citationBoom, Willem van den, DE IORIO, MARIA, Tallarita, Marta (2020-05-14). Bayesian inference on the number of recurrent events: A joint model of recurrence and survival. Statistical Methods in Medical Research. ScholarBank@NUS Repository. https://doi.org/10.1177/09622802211048059
dc.identifier.issn0962-2802
dc.identifier.issn1477-0334
dc.identifier.urihttps://scholarbank.nus.edu.sg/handle/10635/208757
dc.description.abstractThe number of recurrent events before a terminating event is often of interest. For instance, death terminates an individual's process of rehospitalizations and the number of rehospitalizations is an important indicator of economic cost. We propose a model in which the number of recurrences before termination is a random variable of interest, enabling inference and prediction on it. Then, conditionally on this number, we specify a joint distribution for recurrence and survival. This novel conditional approach induces dependence between recurrence and survival, which is often present, for instance due to frailty that affects both. Additional dependence between recurrence and survival is introduced by the specification of a joint distribution on their respective frailty terms. Moreover, through the introduction of an autoregressive model, our approach is able to capture the temporal dependence in the recurrent events trajectory. A non-parametric random effects distribution for the frailty terms accommodates population heterogeneity and allows for data-driven clustering of the subjects. A tailored Gibbs sampler involving reversible jump and slice sampling steps implements posterior inference. We illustrate our model on colorectal cancer data, compare its performance with existing approaches and provide appropriate inference on the number of recurrent events.
dc.publisherSAGE Publications
dc.sourceElements
dc.subjectAccelerated failure time model
dc.subjectCensoring
dc.subjectcolorectal cancer
dc.subjectDirichlet process mixtures
dc.subjecthospital readmission cost burden
dc.subjectnumber of recurrent events
dc.subjectreversible jump Markov chain Monte Carlo
dc.typeArticle
dc.date.updated2021-11-30T01:36:32Z
dc.contributor.departmentYALE-NUS COLLEGE
dc.description.doi10.1177/09622802211048059
dc.description.sourcetitleStatistical Methods in Medical Research
dc.published.stateUnpublished
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