Adversarial co-training for semantic segmentation over medical images

被引:9
作者
Xie, Haoyu [1 ]
Fu, Chong [1 ,2 ,3 ]
Zheng, Xu [1 ]
Zheng, Yu [4 ]
Sham, Chiu-Wing [5 ]
Wang, Xingwei [1 ]
机构
[1] Northeastern Univ, Sch Comp Sci & Engn, Shenyang 110819, Peoples R China
[2] Northeastern Univ, Key Lab Intelligent Comp Med Image, Minist Educ, Shenyang 110819, Peoples R China
[3] Minist Educ, Engn Res Ctr Secur Technol Complex Network Syst, Shenyang, Peoples R China
[4] Chinese Univ Hong Kong, Dept Informat Engn, Hong Kong, Peoples R China
[5] Univ Auckland, Sch Comp Sci, Auckland, New Zealand
关键词
Deep learning; Semi-supervised learning; Co-training; Adversarial example; Medical image segmentation;
D O I
10.1016/j.compbiomed.2023.106736
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Background and objective: Abundant labeled data drives the model training for better performance, but collecting sufficient labels is still challenging. To alleviate the pressure of label collection, semi-supervised learning merges unlabeled data into training process. However, the joining of unlabeled data (e.g., data from different hospitals with different acquisition parameters) will change the original distribution. Such a distribution shift leads to a perturbation in the training process, potentially leading to a confirmation bias. In this paper, we investigate distribution shift and develop methods to increase the robustness of our models, with the goal of improving performance in semi-supervised semantic segmentation of medical images. We study distribution shift and increase model robustness to it, for improving practical performance in semi-supervised segmentation over medical images. Methods: To alleviate the issue of distribution shift, we introduce adversarial training into the co-training process. We simulate perturbations caused by the distribution shift via adversarial perturbations and introduce the adversarial perturbation to attack the supervised training to improve the robustness against the distribution shift. Benefiting from label guidance, supervised training does not collapse under adversarial attacks. For co-training, two sub-models are trained from two views (over two disjoint subsets of the dataset) to extract different kinds of knowledge independently. Co-training outperforms single-model by integrating both views of knowledge to avoid confirmation bias. Results: For practicality, we conduct extensive experiments on challenging medical datasets. Experimental results show desirable improvements to state-of-the-art counterparts (Yu and Wang, 2019; Peng et al., 2020; Perone et al., 2019). We achieve a DSC score of 87.37% with only 20% of labels on the ACDC dataset, almost same to using 100% of labels. On the SCGM dataset with more distribution shift, we achieve a DSC score of 78.65% with 6.5% of labels, surpassing 10.30% over Peng et al. (2020). Our evaluative results show superior robustness against distribution shifts in medical scenarios. Conclusion: Empirical results show the effectiveness of our work for handling distribution shift in medical scenarios.
引用
收藏
页数:10
相关论文
共 42 条
  • [41] Medical images edge detection based on mathematical morphology
    Zhao Yu-qian
    Gui Wei-hua
    Chen Zhen-cheng
    Tang Jing-tian
    Li Ling-yun
    [J]. 2005 27TH ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY, VOLS 1-7, 2005, : 6492 - 6495
  • [42] Semi-Supervised 3D Abdominal Multi-Organ Segmentation via Deep Multi-Planar Co-Training
    Zhou, Yuyin
    Wang, Yan
    Tang, Peng
    Bai, Song
    Shen, Wei
    Fishman, Elliot K.
    Yuille, Alan
    [J]. 2019 IEEE WINTER CONFERENCE ON APPLICATIONS OF COMPUTER VISION (WACV), 2019, : 121 - 140