Publication: Personalized federated learning for predicting disability progression in multiple sclerosis using real-world routine clinical data
Program
KU-Authors
KU Authors
Co-Authors
Pirmani, Ashkan
De Brouwer, Edward
Arany, Adam
Oldenhof, Martijn
Passemiers, Antoine
Faes, Axel
Kalincik, Tomas
Ozakbas, Serkan
Gouider, Riadh
Willekens, Barbara
Publication Date
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Type
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No
Journal Title
Journal ISSN
Volume Title
Alternative Title
Abstract
Early prediction of disability progression in multiple sclerosis (MS) remains challenging despite its critical importance for therapeutic decision-making. We present the first systematic evaluation of personalized federated learning (PFL) for 2-year MS disability progression prediction, leveraging multi-center real-world data from over 26,000 patients. While conventional federated learning (FL) enables privacy-aware collaborative modeling, it remains vulnerable to institutional data heterogeneity. PFL overcomes this challenge by adapting shared models to local data distributions without compromising privacy. We evaluated two personalization strategies: a novel AdaptiveDualBranchNet architecture with selective parameter sharing, and personalized fine-tuning of global models, benchmarked against centralized and client-specific approaches. Baseline FL underperformed relative to personalized methods, whereas personalization significantly improved performance, with personalized FedProx and FedAVG achieving ROC-AUC scores of 0.8398 +/- 0.0019 and 0.8384 +/- 0.0014, respectively. These findings establish personalization as critical for scalable, privacy-aware clinical prediction models and highlight its potential to inform earlier intervention strategies in MS and beyond.
Source
Publisher
Nature Portfolio
Subject
Health Care Sciences & Services, Medical Informatics
Citation
Has Part
Source
Npj digital medicine
Book Series Title
Edition
DOI
10.1038/s41746-025-01788-8
