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SemiGDA: Generative Dual-distribution Alignment for Semi-Supervised Medical Image Segmentation

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Semi-supervised learning addresses label scarcity and high annotation costs in medical image segmentation by exploiting the latent information in unlabeled data to enhance model performance. Traditional discriminative segmentation relies on segmentation masks, neglecting feature-level distribution constraints. This limits robust semantic representation learning and adaptive modeling of unlabeled data in scenarios with few labels. To address these limitations, we propose SemiGDA, a novel Generative Dual-distribution Alignment framework for semi-supervised medical image segmentation. Our SemiGDA overcomes the reliance of discriminative methods on large labeled datasets by aligning feature and semantic distributions to boost semantic learning and scene adaptability. Specifically, we propose a Dual-distribution Alignment Module (DAM), which employs two structurally distinct encoders to model image and mask feature distributions. It enforces their alignment in the latent space via distributional constraints, establishing structured feature consistency. Moreover, we design a Consistency-Driven Skip Adapter (CDSA) strategy, which introduces dual skip adapters (Image and Mask) to fuse multi-scale features via skip connections. Using a consistency loss, CDSA enhances cross-branch semantic alignment and reinforces fine-grained semantic consistency. Experimental results on diverse medical datasets show that our method outperforms other state-of-the-art semi-supervised segmentation methods. Code is released at: https://github.com/taozh2017/SemiGDA.

Kaiwen Huang, Yi Zhou, Yizhe Zhang, Jingxiong Li, Tao Zhou• 2026

Related benchmarks

TaskDatasetResultRank
Medical Image SegmentationISIC 2018
Dice Score87.62
187
Medical Image SegmentationCVC-ClinicDB
Dice Score83.88
118
Medical Image SegmentationCVC-300
Dice (%)86.75
28
Medical Image SegmentationBCSS 10% labels
Dice Coefficient74.05
14
Medical Image SegmentationBCSS 30% labels
Dice Score (%)75.65
14
Medical Image SegmentationBUSI 10% labels
Dice75.57
14
Medical Image SegmentationBUSI 30% labels
Dice78.74
14
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