Bayesian logistic regression for online recalibration and revision of risk prediction models with performance guarantees
Jean Feng, Alexej Gossmann, Berkman Sahiner, Romain Pirracchio

TL;DR
This paper introduces Bayesian logistic regression methods for online recalibration of clinical risk models, providing performance guarantees and demonstrating improved accuracy and calibration in simulations and real-world COPD prediction data.
Contribution
The paper proposes two novel online recalibration procedures, BLR and MarBLR, with theoretical guarantees and empirical validation for maintaining model performance over time.
Findings
Both methods outperform static models in calibration and discrimination.
BLR and MarBLR significantly improve the calibration index (aECI).
Methods maintain or improve AUC in stationary and shifting data environments.
Abstract
After deploying a clinical prediction model, subsequently collected data can be used to fine-tune its predictions and adapt to temporal shifts. Because model updating carries risks of over-updating/fitting, we study online methods with performance guarantees. We introduce two procedures for continual recalibration or revision of an underlying prediction model: Bayesian logistic regression (BLR) and a Markov variant that explicitly models distribution shifts (MarBLR). We perform empirical evaluation via simulations and a real-world study predicting COPD risk. We derive "Type I and II" regret bounds, which guarantee the procedures are non-inferior to a static model and competitive with an oracle logistic reviser in terms of the average loss. Both procedures consistently outperformed the static model and other online logistic revision methods. In simulations, the average estimated…
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Taxonomy
TopicsColorectal Cancer Screening and Detection · Machine Learning in Healthcare · Statistical Methods and Bayesian Inference
MethodsLogistic Regression
