A Flexible Joint Model for Multiple Longitudinal Biomarkers and A Time-to-Event Outcome: With Applications to Dynamic Prediction Using Highly Correlated Biomarkers
Ning Li, Yi Liu, Shanpeng Li, Robert M. Elashoff, Gang Li

TL;DR
This paper introduces a flexible joint modeling framework for multiple correlated longitudinal biomarkers and a time-to-event outcome, enabling dynamic prediction in biomedical studies with complex biomarker data.
Contribution
It develops a nonparametric latent process model with an EM algorithm for flexible, data-driven joint modeling of multiple biomarkers and event times.
Findings
The model effectively captures high correlations among biomarkers.
Simulation studies demonstrate accurate parameter estimation.
Application to lung transplant data improves prediction of CLAD.
Abstract
In biomedical studies it is common to collect data on multiple biomarkers during study follow-up for dynamic prediction of a time-to-event clinical outcome. The biomarkers are typically intermittently measured, missing at some event times, and may be subject to high biological variations, which cannot be readily used as time-dependent covariates in a standard time-to-event model. Moreover, they can be highly correlated if they are from in the same biological pathway. To address these issues, we propose a flexible joint model framework that models the multiple biomarkers with a shared latent reduced rank longitudinal principal component model and correlates the latent process to the event time by the Cox model for dynamic prediction of the event time. The proposed joint model for highly correlated biomarkers is more flexible than some existing methods since the latent trajectory shared…
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Taxonomy
TopicsStatistical Methods and Inference · Statistical Methods in Clinical Trials · Statistical Methods and Bayesian Inference
