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FAMNet: Frequency-aware Matching Network for Cross-domain Few-shot Medical Image Segmentation

About

Existing few-shot medical image segmentation (FSMIS) models fail to address a practical issue in medical imaging: the domain shift caused by different imaging techniques, which limits the applicability to current FSMIS tasks. To overcome this limitation, we focus on the cross-domain few-shot medical image segmentation (CD-FSMIS) task, aiming to develop a generalized model capable of adapting to a broader range of medical image segmentation scenarios with limited labeled data from the novel target domain. Inspired by the characteristics of frequency domain similarity across different domains, we propose a Frequency-aware Matching Network (FAMNet), which includes two key components: a Frequency-aware Matching (FAM) module and a Multi-Spectral Fusion (MSF) module. The FAM module tackles two problems during the meta-learning phase: 1) intra-domain variance caused by the inherent support-query bias, due to the different appearances of organs and lesions, and 2) inter-domain variance caused by different medical imaging techniques. Additionally, we design an MSF module to integrate the different frequency features decoupled by the FAM module, and further mitigate the impact of inter-domain variance on the model's segmentation performance. Combining these two modules, our FAMNet surpasses existing FSMIS models and Cross-domain Few-shot Semantic Segmentation models on three cross-domain datasets, achieving state-of-the-art performance in the CD-FSMIS task.

Yuntian Bo, Yazhou Zhu, Lunbo Li, Haofeng Zhang• 2024

Related benchmarks

TaskDatasetResultRank
Medical Image SegmentationAbdominal MRI-CT
Dice64.75
20
Medical Image SegmentationAbdominal CT-MRI
Dice Score0.6579
20
Abdomen organ segmentationAbd-MR (20% test)
Dice (Liver)73.01
16
Abdomen organ segmentationAbd-CT (20% test)
Dice (Liver)73.57
16
Medical Image SegmentationCHAOS-MRI
Spleen Score58.21
15
Medical Image SegmentationCardiac bSSFP-LGE
DSC (LV-BP)77.37
12
Medical Image SegmentationCardiac LGE-bSSFP
Dice Score (LV-BP)86.64
12
Cardiac SegmentationCardiac b-SSFP MRI
DSC (LV-BP)58.44
12
Lung SegmentationChest X-ray
Lung DSC67.02
12
Lesion SegmentationSkin Dermoscopy
DSC36.45
12
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