Joint Models for Multiple Longitudinal Processes and Time-to-event Outcome

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2016
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English
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Taylor & Francis
Abstract

Joint models are statistical tools for estimating the association between time-to-event and longitudinal outcomes. One challenge to the application of joint models is its computational complexity. Common estimation methods for joint models include a two-stage method, Bayesian and maximum-likelihood methods. In this work, we consider joint models of a time-to-event outcome and multiple longitudinal processes and develop a maximum-likelihood estimation method using the expectation–maximization algorithm. We assess the performance of the proposed method via simulations and apply the methodology to a data set to determine the association between longitudinal systolic and diastolic blood pressure measures and time to coronary artery disease.

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Yang, L., Yu, M., & Gao, S. (2016). Joint models for multiple longitudinal processes and time-to-event outcome. Journal of Statistical Computation and Simulation, 86(18), 3682–3700. https://doi.org/10.1080/00949655.2016.1181760
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Journal of Statistical Computation and Simulation
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