Joint modelling of longitudinal measurements and survival times via a multivariate copula approach

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Abstract

Joint modelling of longitudinal and time-to-event data is usually described by a joint model which uses shared or correlated latent effects to capture associations between the two processes. Under this framework, the joint distribution of the two processes can be derived straightforwardly by assuming conditional independence given the random effects. Alternative approaches to induce interdependency into sub-models have also been considered in the literature and one such approach is using copulas to introduce non-linear correlation between the marginal distributions of the longitudinal and time-to-event processes. The multivariate Gaussian copula joint model has been proposed in the literature to fit joint data by applying a Monte Carlo expectation-maximisation algorithm. In this paper, we propose an exact likelihood estimation approach to replace the more computationally expensive Monte Carlo expectation-maximisation algorithm and we consider results based on using both the multivariate Gaussian and t copula functions. We also provide a straightforward way to compute dynamic predictions of survival probabilities, showing that our proposed model is comparable in prediction performance to the shared random effects joint model.

Original languageEnglish
Pages (from-to)2739-2759
Number of pages21
JournalJournal of Applied Statistics
Volume50
Issue number13
DOIs
Publication statusPublished - 2023
Externally publishedYes

Keywords

  • dynamic prediction
  • joint modelling
  • likelihood approach
  • Longitudinal data
  • multivariate copula
  • time-to-event data

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