Fairness Evolution in Continual Learning for Medical Imaging
Fairness Evolution in Continual Learning for Medical Imaging
Deep Learning has advanced significantly in medical applications, aiding disease diagnosis in Chest X-ray images. However, expanding model capabilities with new data remains a challenge, which Continual Learning (CL) aims to address. Previous studies have evaluated CL strategies based on classification performance; however, in sensitive domains such as healthcare, it is crucial to assess performance across socially salient groups to detect potential biases. This study examines how bias evolves across tasks using domain-specific fairness metrics and how different CL strategies impact this evolution. Our results show that Learning without Forgetting and Pseudo-Label achieve optimal classification performance, but Pseudo-Label is less biased.
Marina Ceccon、Davide Dalle Pezze、Alessandro Fabris、Gian Antonio Susto
医学现状、医学发展医学研究方法
Marina Ceccon,Davide Dalle Pezze,Alessandro Fabris,Gian Antonio Susto.Fairness Evolution in Continual Learning for Medical Imaging[EB/OL].(2025-07-07)[2025-07-16].https://arxiv.org/abs/2406.02480.点此复制
评论