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Modelling Survival Events with Longitudinal Covariates Measured with Error
Authors:Hongsheng Dai  Jianxin Pan  Yanchun Bao
Affiliation:1. School of CEM , University of Brighton , Brighton , United Kingdom hsdai@hotmail.com;3. School of Mathematics , University of Manchester , Manchester , United Kingdom;4. School of Mathematics , Yunnan Normal University , China
Abstract:In survival analysis, time-dependent covariates are usually present as longitudinal data collected periodically and measured with error. The longitudinal data can be assumed to follow a linear mixed effect model and Cox regression models may be used for modelling of survival events. The hazard rate of survival times depends on the underlying time-dependent covariate measured with error, which may be described by random effects. Most existing methods proposed for such models assume a parametric distribution assumption on the random effects and specify a normally distributed error term for the linear mixed effect model. These assumptions may not be always valid in practice. In this article, we propose a new likelihood method for Cox regression models with error-contaminated time-dependent covariates. The proposed method does not require any parametric distribution assumption on random effects and random errors. Asymptotic properties for parameter estimators are provided. Simulation results show that under certain situations the proposed methods are more efficient than the existing methods.
Keywords:Longitudinal measurements  Linear mixed model  Partial likelihood  Proportional hazard model  Random effects
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