TL;DR
This paper introduces a novel landmark approach combined with machine learning techniques to improve individual dynamic prediction of clinical events using large, complex longitudinal biomarker data.
Contribution
It extends landmark models to handle high-dimensional, multi-marker longitudinal data using machine learning methods like regularized regressions and random forests.
Findings
Machine learning methods outperform standard models in complex, nonlinear scenarios.
The approach successfully predicts death in clinical and public health contexts.
Method implementation is available in R for practical use.
Abstract
The individual data collected throughout patient follow-up constitute crucial information for assessing the risk of a clinical event, and eventually for adapting a therapeutic strategy. Joint models and landmark models have been proposed to compute individual dynamic predictions from repeated measures to one or two markers. However, they hardly extend to the case where the complete patient history includes much more repeated markers possibly. Our objective was thus to propose a solution for the dynamic prediction of a health event that may exploit repeated measures of a possibly large number of markers. We combined a landmark approach extended to endogenous markers history with machine learning methods adapted to survival data. Each marker trajectory is modeled using the information collected up to landmark time, and summary variables that best capture the individual trajectories are…
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