FSDA-DG: Improving Cross-Domain Generalizability of Medical Image Segmentation with Few Source Domain Annotations
Zanting Ye, Ke Wang, Wenbing Lv, Qianjin Feng, Lijun Lu

TL;DR
FSDA-DG introduces a semi-supervised, semantics-guided data augmentation and multi-decoder U-Net architecture to enhance cross-domain generalization in medical image segmentation with minimal source annotations.
Contribution
It presents a novel semi-supervised, semantics-guided data augmentation method combined with a multi-decoder U-Net to improve domain-invariant features with limited annotations.
Findings
Outperforms state-of-the-art methods in SDG tasks
Effective with limited source domain annotations
Enhances domain-invariant feature learning
Abstract
Deep learning-based medical image segmentation faces significant challenges arising from limited labeled data and domain shifts. While prior approaches have primarily addressed these issues independently, their simultaneous occurrence is common in medical imaging. A method that generalizes to unseen domains using only minimal annotations offers significant practical value due to reduced data annotation and development costs. In pursuit of this goal, we propose FSDA-DG, a novel solution to improve cross-domain generalizability of medical image segmentation with few single-source domain annotations. Specifically, our approach introduces semantics-guided semi-supervised data augmentation. This method divides images into global broad regions and semantics-guided local regions, and applies distinct augmentation strategies to enrich data distribution. Within this framework, both labeled and…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · COVID-19 diagnosis using AI · Radiomics and Machine Learning in Medical Imaging
MethodsDiffusion
