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Competing risks joint models using R-INLA
Author(s) -
Janet van Niekerk,
Haakon Bakka,
Håvard Rue
Publication year - 2021
Publication title -
statistical modelling
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.232
H-Index - 43
eISSN - 1477-0342
pISSN - 1471-082X
DOI - 10.1177/1471082x20913654
Subject(s) - econometrics , joint (building) , hazard , computer science , gaussian , longitudinal data , field (mathematics) , mathematics , data mining , engineering , architectural engineering , chemistry , physics , organic chemistry , quantum mechanics , pure mathematics
The methodological advancements made in the field of joint models are numerous. None the less, the case of competing risks joint models has largely been neglected, especially from a practitioner's point of view. In the relevant works on competing risks joint models, the assumptions of a Gaussian linear longitudinal series and proportional cause-specific hazard functions, amongst others, have remained unchallenged. In this article, we provide a framework based on R-INLA to apply competing risks joint models in a unifying way such that non-Gaussian longitudinal data, spatial structures, times-dependent splines and various latent association structures, to mention a few, are all embraced in our approach. Our motivation stems from the SANAD trial which exhibits non-linear longitudinal trajectories and competing risks for failure of treatment. We also present a discrete competing risks joint model for longitudinal count data as well as a spatial competing risks joint model as specific examples.

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