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A joint modelling approach for clustered recurrent events and death events
Authors:Yanchun Bao  Hongsheng Dai  Tao Wang  Sung-Kiang Chuang
Institution:1. School of Mathematics , Yunnan Normal University , Yunnan , People's Republic of China;2. Department of Mathematics , University of Brighton , Sussex , BN2 4GJ , UK;3. Massachusetts General Hospital, Harvard School of Dental Medicine and Harvard School of Public Health , Boston , MA , USA
Abstract:In dental implant research studies, events such as implant complications including pain or infection may be observed recurrently before failure events, i.e. the death of implants. It is natural to assume that recurrent events and failure events are correlated to each other, since they happen on the same implant (subject) and complication times have strong effects on the implant survival time. On the other hand, each patient may have more than one implant. Therefore these recurrent events or failure events are clustered since implant complication times or failure times within the same patient (cluster) are likely to be correlated. The overall implant survival times and recurrent complication times are both interesting to us. In this paper, a joint modelling approach is proposed for modelling complication events and dental implant survival times simultaneously. The proposed method uses a frailty process to model the correlation within cluster and the correlation within subjects. We use Bayesian methods to obtain estimates of the parameters. Performance of the joint models are shown via simulation studies and data analysis.
Keywords:Bayesian analysis  censoring  clustered events  joint modelling  recurrent events
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