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Dynamic memory to alleviate catastrophic forgetting in continual learning with medical imaging

Medicine and Health

Dynamic memory to alleviate catastrophic forgetting in continual learning with medical imaging

M. Perkonigg, J. Hofmanninger, et al.

Discover how Matthias Perkonigg, Johannes Hofmanninger, Christian J. Herold, James A. Brink, Oleg Pianykh, Helmut Prosch, and Georg Lang are revolutionizing medical imaging with a dynamic memory approach to continual learning, maintaining performance despite evolving technologies. This paper sheds light on overcoming domain shifts and improving cardiac segmentation and lung nodule detection. Don't miss out on these advancements!

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Playback language: English
Abstract
Deep learning (DL) models in medical imaging are susceptible to performance degradation due to domain shifts from evolving technology and protocols. This paper proposes a dynamic memory (DM) approach for continual learning to address this issue. DM uses a rehearsal method, retaining a diverse subset of training data to mitigate catastrophic forgetting while adapting to new domains. A pseudo-domain (PD) model enhances DM by detecting style clusters and balancing memory. Experiments on cardiac segmentation in MRI and lung nodule detection in CT demonstrate DM's advantage over baseline methods, showing consistent performance improvement and reduced forgetting.
Publisher
Nature Communications
Published On
Sep 28, 2021
Authors
Matthias Perkonigg, Johannes Hofmanninger, Christian J. Herold, James A. Brink, Oleg Pianykh, Helmut Prosch, Georg Lang
Tags
deep learning
medical imaging
continual learning
catastrophic forgetting
cardiac segmentation
lung nodule detection
domain shifts
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