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Simultaneous clustering and joint modeling of multivariate binary longitudinal and time-to-event data

Srijan Chattopadhyay, Sevantee Basu, Swapnaneel Bhattacharyya, Manash Pratim Gogoi and Kiranmoy Das ()
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Srijan Chattopadhyay: Indian Statistical Institute
Sevantee Basu: Indian Statistical Institute
Swapnaneel Bhattacharyya: Indian Statistical Institute
Manash Pratim Gogoi: Tata Medical Center
Kiranmoy Das: Indian Statistical Institute

Lifetime Data Analysis: An International Journal Devoted to Statistical Methods and Applications for Time-to-Event Data, 2025, vol. 31, issue 4, No 5, 830-851

Abstract: Abstract Joint modeling of longitudinal outcomes and time-to-event data has been extensively used in medical studies because it can simultaneously model the longitudinal trajectories and assess their effects on the event-time. However, in many applications we come across heterogeneous populations, and therefore the subjects need to be clustered for a powerful statistical inference. We consider multivariate binary longitudinal outcomes for which we use Bayesian data-augmentation and get the corresponding latent continuous outcomes. These latent outcomes are clustered using Bayesian consensus clustering, and then we perform a cluster-specific joint analysis. Longitudinal outcomes are modeled by generalized linear mixed models, and we use the proportional hazards model for modeling time-to-event data. Our work is motivated by a clinical trial conducted by Tata Translational Cancer Research Center, Kolkata, where 184 cancer patients were treated for the first two years, and then were followed for the next three years. Three biomarkers (lymphocyte count, neutrophil count and platelet count), categorized as normal/abnormal, were measured during the treatment, and the relapse time (if any) was recorded for each patient. Our analysis finds three latent clusters for which the effects of the covariates and the median non-relapse probabilities substantially differ. Through a simulation study we illustrate the effectiveness of the proposed simultaneous clustering and joint modeling.

Keywords: Acute lymphocytic leukemia (ALL); Bayesian consensus clustering; Binary longitudinal outcomes; Joint modeling; MCMC (search for similar items in EconPapers)
Date: 2025
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DOI: 10.1007/s10985-025-09664-z

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