Dynamic prediction of an event using multiple longitudinal markers: a model averaging approach
Reza Hashemi, Taban Baghfalaki, Viviane Philipps, Helene Jacqmin-Gadda

TL;DR
This paper introduces a model averaging approach for dynamic event prediction using multiple longitudinal markers, improving accuracy and computational efficiency in personalized medicine.
Contribution
It proposes a novel strategy to combine predictions from various joint models with different numbers of longitudinal markers, addressing computational challenges.
Findings
The method improves prediction accuracy in simulation studies.
It effectively combines multiple models for reliable individual risk prediction.
Application to real datasets demonstrates practical utility.
Abstract
Dynamic event prediction, using joint modeling of survival time and longitudinal variables, is extremely useful in personalized medicine. However, the estimation of joint models including many longitudinal markers is still a computational challenge because of the high number of random effects and parameters to be estimated. In this paper, we propose a model averaging strategy to combine predictions from several joint models for the event, including one longitudinal marker only or pairwise longitudinal markers. The prediction is computed as the weighted mean of the predictions from the one-marker or two-marker models, with the time-dependent weights estimated by minimizing the time-dependent Brier score. This method enables us to combine a large number of predictions issued from joint models to achieve a reliable and accurate individual prediction. Advantages and limits of the proposed…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Neural Networks and Applications · Forecasting Techniques and Applications
