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Pairwise Similarity Regularization for Semi-supervised Graph Medical Image Segmentation

17 March 2025
Jialu Zhou
Dianxi Shi
Shaowu Yang
Chunping Qiu
Luoxi Jing
Mengzhu Wang
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Abstract

With fully leveraging the value of unlabeled data, semi-supervised medical image segmentation algorithms significantly reduces the limitation of limited labeled data, achieving a significant improvement in accuracy. However, the distributional shift between labeled and unlabeled data weakens the utilization of information from the labeled data. To alleviate the problem, we propose a graph network feature alignment method based on pairwise similarity regularization (PaSR) for semi-supervised medical image segmentation. PaSR aligns the graph structure of images in different domains by maintaining consistency in the pairwise structural similarity of feature graphs between the target domain and the source domain, reducing distribution shift issues in medical images. Meanwhile, further improving the accuracy of pseudo-labels in the teacher network by aligning graph clustering information to enhance the semi-supervised efficiency of the model. The experimental part was verified on three medical image segmentation benchmark datasets, with results showing improvements over advanced methods in various metrics. On the ACDC dataset, it achieved an average improvement of more than 10.66%.

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@article{zhou2025_2503.12800,
  title={ Pairwise Similarity Regularization for Semi-supervised Graph Medical Image Segmentation },
  author={ Jialu Zhou and Dianxi Shi and Shaowu Yang and Chunping Qiu and Luoxi Jing and Mengzhu Wang },
  journal={arXiv preprint arXiv:2503.12800},
  year={ 2025 }
}
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