Bayesian joint modeling for assessing the progression of chronic kidney disease in children

Author:

Armero Carmen1,Forte Anabel1,Perpiñán Hèctor12,Sanahuja María José3,Agustí Silvia3

Affiliation:

1. Department of Statistics and Operational Research, Universitat de València, Burjassot, Spain

2. Fundación para el Fomento de la Investigación Sanitaria y Biomédica de la Comunitat Valenciana (Fisabio), Valencia, Spain

3. Conselleria de Sanitat i Consum, Generalitat Valenciana, Valencia, Spain

Abstract

Joint models are rich and flexible models for analyzing longitudinal data with nonignorable missing data mechanisms. This article proposes a Bayesian random-effects joint model to assess the evolution of a longitudinal process in terms of a linear mixed-effects model that accounts for heterogeneity between the subjects, serial correlation, and measurement error. Dropout is modeled in terms of a survival model with competing risks and left truncation. The model is applied to data coming from ReVaPIR, a project involving children with chronic kidney disease whose evolution is mainly assessed through longitudinal measurements of glomerular filtration rate.

Publisher

SAGE Publications

Subject

Health Information Management,Statistics and Probability,Epidemiology

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