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Multiscale Switch for Semi-Supervised and Contrastive Learning in Medical Ultrasound Image Segmentation

About

Medical ultrasound image segmentation faces significant challenges due to limited labeled data and characteristic imaging artifacts including speckle noise and low-contrast boundaries. While semi-supervised learning (SSL) approaches have emerged to address data scarcity, existing methods suffer from suboptimal unlabeled data utilization and lack robust feature representation mechanisms. In this paper, we propose Switch, a novel SSL framework with two key innovations: (1) Multiscale Switch (MSS) strategy that employs hierarchical patch mixing to achieve uniform spatial coverage; (2) Frequency Domain Switch (FDS) with contrastive learning that performs amplitude switching in Fourier space for robust feature representations. Our framework integrates these components within a teacher-student architecture to effectively leverage both labeled and unlabeled data. Comprehensive evaluation across six diverse ultrasound datasets (lymph nodes, breast lesions, thyroid nodules, and prostate) demonstrates consistent superiority over state-of-the-art methods. At 5\% labeling ratio, Switch achieves remarkable improvements: 80.04\% Dice on LN-INT, 85.52\% Dice on DDTI, and 83.48\% Dice on Prostate datasets, with our semi-supervised approach even exceeding fully supervised baselines. The method maintains parameter efficiency (1.8M parameters) while delivering superior performance, validating its effectiveness for resource-constrained medical imaging applications. The source code is publicly available at https://github.com/jinggqu/Switch

Jingguo Qu, Xinyang Han, Yao Pu, Man-Lik Chui, Simon Takadiyi Gunda, Ziman Chen, Jing Qin, Ann Dorothy King, Winnie Chiu-Wing Chu, Jing Cai, Michael Tin-Cheung Ying• 2026

Related benchmarks

TaskDatasetResultRank
Medical Image SegmentationBUSI (test)
Dice70.24
216
Image SegmentationLN-INT (test)
Dice84.69
51
Image SegmentationLN-EXT (test)
Dice79.74
51
Prostate SegmentationProstate
DSC (Avg)84.21
46
Ultrasound Image SegmentationDDTI
Dice89.26
25
Medical Image SegmentationLN-INT 1% 10 labeled samples
Dice Score66.62
5
Medical Image SegmentationLN-EXT (1% labeled)
Dice Score60.49
5
Medical Image SegmentationProstate 19 samples (1% labeled)
Dice82.44
5
Medical Image SegmentationTN3K 23 labeled samples (1%)
Dice Score61.84
5
Ultrasound Image SegmentationTN3K
Dice Coefficient76.24
4
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