TL;DR
This paper demonstrates that class-balanced episodic sampling improves segmentation performance in class-imbalanced CT body composition tasks, especially under limited data and training budgets, by acting as an implicit regularizer.
Contribution
It introduces the use of episodic sampling from few-shot learning into fully supervised medical image segmentation to explicitly control class exposure within batches.
Findings
Episodic sampling outperforms random and weighted sampling in low-data regimes.
Training iteration budget significantly influences sampling strategy effectiveness.
Episodic sampling acts as an implicit regularizer, delaying overfitting.
Abstract
Class imbalance is a fundamental challenge in medical image segmentation, where frequent classes typically dominate training at the expense of rare classes. Loss-based approaches mitigate imbalance by reweighting the per-pixel loss within the batch, while sampling strategies control which images enter the batch. Yet neither explicitly controls which classes appear within the batch, leaving rare-class exposure only partially rebalanced. In this work, we adopt episodic sampling from few-shot learning to promote class-balanced batch construction in a fully supervised setting. We decouple episodic sampling from its conventional metric-learning context and evaluate it in body composition segmentation in CT. We compare episodic sampling against random and weighted sampling on nine muscle and adipose tissues, derived from 210 scans of the public SAROS dataset. Training is performed under full-…
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