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Journal of Graphics ›› 2025, Vol. 46 ›› Issue (4): 763-774.DOI: 10.11996/JG.j.2095-302X.2025040763

• Image Processing and Computer Vision • Previous Articles     Next Articles

Semi-supervised pulmonary airway segmentation based on dynamically decoupling intra-class regions

WANG Ziyu1,2,3(), CAO Weiwei1,2, CAO Yuzhu1,2, LIU Meng4, CHEN Jun5,6, LIU Zhaobang1,2, ZHENG Jian1,2,3()   

  1. 1. School of Biomedical Engineering (Suzhou), Division of Life Sciences and Medicine, University of Science and Technology of China, Hefei Anhui 230026, China
    2. Suzhou Institute of Biomedical Engineering and Technology, Chinese Academy of Sciences, Suzhou Jiangsu 215163, China
    3. Shandong Laboratory of Advanced Biomaterials and Medical Devices in Weihai, Weihai Shandong 264210, China
    4. Suzhou Bowing Medical Technologies Co., Ltd., Suzhou Jiangsu 215122, China
    5. Department of Thoracic Surgery, The First Affiliated Hospital of Soochow University, Medical College of Soochow University, Suzhou Jiangsu 215129, China
    6. Institute of Thoracic Surgery, The First Affiliated Hospital of Soochow University, Suzhou Jiangsu 215129, China
  • Received:2024-12-31 Revised:2025-02-26 Online:2025-08-30 Published:2025-08-11
  • Contact: ZHENG Jian
  • About author:First author contact:

    WANG Ziyu (2000-), master student. His main research interest covers medical image segmentation. E-mail:wangziyu_0731@mail.ustc.edu.cn

  • Supported by:
    National Natural Science Foundation of China(62371449);National Natural Science Foundation of China(U23A20483);Shandong Laboratory Project(SYS202208);Suzhou Science and Technology Plan Project(SYC2022098)

Abstract:

Accurate airway segmentation from computed tomography (CT) images served as the foundation for diagnosing and treating various pulmonary diseases. However, the complex tree-like structure rendered pixel-level annotation extremely difficult. Semi-supervised learning methods provide insights for airway segmentation with limited labeled data. However, in airway segmentation tasks, there are significant intra-class differences between the large airway (trachea and main branches) and small airway (peripheral bronchioles) regarding voxel quantity, branch count, and morphological structure. Nevertheless, in airway segmentation tasks, the severe intra-class imbalance problem causes the model being prone to overfitting toward the dominated segmentation classes in semi-supervised learning with limited annotations. This results in insufficient representation learning for peripheral bronchioles, leading to poor segmentation accuracy and limiting clinical applications. To address this issue, a novel semi-supervised pulmonary airway segmentation framework based on a single-teacher dual-student three-branch network was proposed, achieving accurate airway tree-like structure with limited labeled data. In addition, a plug-and-play dynamic threshold module was developed to guide the network in identifying sub-regions with different segmentation difficulties during network training steps. Moreover, a novel intra-class region decoupling strategy was designed, enabling representation learning for sub-regions with different segmentation difficulties through different constraint optimization methods. Experimental results on two public datasets and a real-world dataset demonstrated that the proposed method outperformed the current state-of-the-art methods for airway segmentation. The Dice coefficient achieved 91.96%, while the TD and BD metrics reached 81.88% and 78.32%, respectively, enabling fast and accurate airway segmentation from CT images.

Key words: deep learning, airway segmentation, semi-supervised learning, decoupling intra-class regions, dynamic threshold

CLC Number: