Mitigating catastrophic forgetting in Multiple sclerosis lesion segmentation using elastic weight consolidation
Date
2025Permanent link
http://hdl.handle.net/11351/13400DOI
10.1016/j.nicl.2025.103795
ISSN
2213-1582
PMID
40403421
Abstract
Multiple sclerosis (MS) lesion segmentation is crucial for monitoring disease progression. Deep learning methods have shown promising results but suffer from domain shift problems when evaluated in data from different protocols or scanners. Transfer learning (TL) achieves successful domain adaptation, but can lead to catastrophic forgetting, resulting in a significant performance drop on the source domain. Continuous learning aims to address this issue by retaining knowledge from previous domains while adapting to new ones. This work applies Elastic Weight Consolidation (EWC) for the first time in the context of domain-incremental learning for MS lesion segmentation. The approach was evaluated using a 3D U-Net trained on public datasets (WMH2017 and Shifts) and fine-tuned on an in-house dataset using both TL and EWC, in both full training and few-shot scenarios. Results show that with only 3 training images from the target domain, EWC leads to a 10% improvement in F-score, while using 5 images achieves similar results to using all available training images. Catastrophic forgetting was reduced by 8%–19% compared to standard TL, where performance drops ranged from 20 to 37%. This work demonstrates that EWC enables models to adapt to new domains while preserving previous knowledge, with minimal data requirements, advancing towards more generalizable deep learning models for clinical MS applications.
Keywords
Catastrophic forgetting; Lesion segmentation; Multiple sclerosisBibliographic citation
Álvarez L, Valverde S, Rovira À, Lladó X. Mitigating catastrophic forgetting in Multiple sclerosis lesion segmentation using elastic weight consolidation. NeuroImage Clin. 2025;46:103795.
Audience
Professionals
This item appears in following collections
- HVH - Articles científics [4476]
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