Joint Modelling of Repeated Measures and Survival Time Data
- 3 September 2003
- journal article
- Published by Wiley in Biometrical Journal
- Vol. 45 (6) , 647-658
- https://doi.org/10.1002/bimj.200390039
Abstract
In many clinical trials both repeated measures data and event history data are simultaneously observed from the same subject. These two types of responses are usually correlated, because they are from the same subject. In this article, we propose a joint model for the combined analysis of repeated measures data and event history data in the framework of hierarchical generalized linear models. The correlation between repeated measures and event time is modelled by introducing a shared random effect. The model parameters are estimated using the hierarchical‐likelihood approach. The proposed model is illustrated using a real data set for the renal transplant patients.Keywords
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