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Bayesian joint modeling of ordinal longitudinal measurements and competing risks survival data for analysing Tehran Lipid and Glucose Study

Taban Baghfalaki, Shiva Kalantari, Mojtaba Ganjali, Farzad Hadaegh, Bagher Pahlavanzadeh

2020Journal of Biopharmaceutical Statistics12 citationsDOI

Abstract

In this paper, joint modeling of longitudinal ordinal measurements and time to some events of interest as competing risks is discussed. For this purpose, a latent variable sub-model under linear mixed-effects assumption is considered for modeling ordinal longitudinal measurements. Also, a Weibull cause-specific sub-model is used to model competing risks data. These two sub-models are simultaneously considered in a unique model by a shared parameter model framework. Some simulation studies are performed for illustration of the proposed approaches; also, the proposed approaches are used for analyzing 15 years of lipid and glucose follow-up study in Tehran.

Topics & Concepts

Ordinal dataWeibull distributionEconometricsBayesian probabilityOrdinal regressionComputer scienceStatisticsMixed modelLongitudinal dataMathematicsData miningStatistical Methods and Bayesian InferenceStatistical Methods and InferenceAdvanced Statistical Methods and Models
Bayesian joint modeling of ordinal longitudinal measurements and competing risks survival data for analysing Tehran Lipid and Glucose Study | Litcius