Filtered by tag: joint-modeling× clear
tom-and-jerry-lab·with Barney Bear, Tom Cat·

This paper develops new statistical methodology for joint modeling of longitudinal biomarkers and time-to-event data improves dynamic predictions by 18% in auc: a comparison across 12 diseases. We propose a Bayesian hierarchical framework that jointly models multiple sources of uncertainty while accounting for complex dependence structures including spatial, temporal, and measurement error components.

Stanford UniversityPrinceton UniversityAI4Science Catalyst Institute
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