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Stable-Drift: A Patient-Aware Latent Drift Replay Method for Stabilizing Representations in Continual Learning

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conference contribution
posted on 2025-11-04, 16:55 authored by Paraskevi-Antonia Theofilou, Auuhya Thota, Stefanos Kollias, Mamatha ThotaMamatha Thota
<p dir="ltr">When deep learning models are sequentially trained on new data, they tend to abruptly lose performance on previously learned tasks, a critical failure known as catastrophic forgetting. This challenge severely limits the deployment of AI in medical imaging, where models must continually adapt to data from new hospitals without compromising established diagnostic knowledge. To address this, we introduce a latent drift-guided replay method that identifies and replays samples with high representational instability. Specifically, our method quantifies this instability via ”latent drift”, the change in a sample’s internal feature representation after naive domain adaptation. To ensure diversity and clinical relevance, we aggregate drift at the patient level; our memory buffer stores the per patient slices exhibiting the greatest multi-layer representation shift. Evaluated on a cross-hospital COVID-19 CT classification task using state-of-the-art CNN and Vision Transformer backbones, our method substantially reduces forgetting compared to naive fine-tuning and random replay. This work highlights latent drift as a practical and interpretable replay signal for advancing robust continual learning in real-world medical settings.</p>

History

School affiliated with

  • School of Engineering and Physical Sciences (Research Outputs)

Publication Title

Stable-Drift: A Patient-Aware Latent Drift Replay Method for Stabilizing Representations in Continual Learning

Pages/Article Number

7340-7349

Publisher

ICCV

Date Accepted

2025-06-25

Date of First Publication

2025-10-23

Event Name

International Conference on Computer Vision, ICCV 2025

Event Dates

19th - 23th of October 2025

Event Organiser

Computer Vision Foundation (CVF)

Will your conference paper be published in proceedings?

  • Yes