MTAN: A semi-supervised learning model for kidney tumor segmentation

被引:1
|
作者
Sun, Peng [1 ]
Yang, Sijing [2 ]
Guan, Haolin [1 ]
Mo, Taiping [1 ]
Yu, Bonan [3 ]
Chen, Zhencheng [1 ,2 ,4 ,5 ]
机构
[1] Guilin Univ Elect Technol, Sch Elect Engn & Automat, Guilin 541004, Guangxi, Peoples R China
[2] Guilin Univ Elect Technol, Sch Life & Environm Sci, Guilin, Guangxi, Peoples R China
[3] Guilin Univ Elect Technol, Sch Architecture & Transportat Engn, Guilin 541004, Guangxi, Peoples R China
[4] Guangxi Coll & Univ Key Lab Biomed Sensors & Inte, Guilin, Guangxi, Peoples R China
[5] Guangxi Engn Technol Res Ctr Human Physiol Infor, Guilin, Guangxi, Peoples R China
基金
中国国家自然科学基金;
关键词
Medical image segmentation; kidney tumor segmentation; KiTS; AN-Net; MTAN; semi-supervised learning; SEMANTIC SEGMENTATION; U-NET;
D O I
10.3233/XST-230133
中图分类号
TH7 [仪器、仪表];
学科分类号
0804 ; 080401 ; 081102 ;
摘要
BACKGROUND: Medical image segmentation is crucial in disease diagnosis and treatment planning. Deep learning (DL) techniques have shown promise. However, optimizing DL models requires setting numerous parameters, and demands substantial labeled datasets, which are labor-intensive to create. OBJECTIVE: This study proposes a semi-supervised model that can utilize labeled and unlabeled data to accurately segment kidneys, tumors, and cysts on CT images, even with limited labeled samples. METHODS: An end-to-end semi-supervised learning model named MTAN (Mean Teacher Attention N-Net) is designed to segment kidneys, tumors, and cysts on CT images. The MTAN model is built on the foundation of the AN-Net architecture, functioning dually as teachers and students. In its student role, AN-Net learns conventionally. In its teacher role, it generates objects and instructs the student model on their utilization to enhance learning quality. The semi-supervised nature of MTAN allows it to effectively utilize unlabeled data for training, thus improving performance and reducing overfitting. RESULTS: We evaluate the proposed model using two CT image datasets (KiTS19 and KiTS21). In the KiTS19 dataset, MTAN achieved segmentation results with an average Dice score of 0.975 for kidneys and 0.869 for tumors, respectively. Moreover, on the KiTS21 dataset, MTAN demonstrates its robustness, yielding average Dice scores of 0.977 for kidneys, 0.886 for masses, 0.861 for tumors, and 0.759 for cysts, respectively. CONCLUSION: The proposed MTAN model presents a compelling solution for accurate medical image segmentation, particularly in scenarios where the labeled data is scarce. By effectively utilizing the unlabeled data through a semi-supervised learning approach, MTAN mitigates overfitting concerns and achieves high-quality segmentation results. The consistent performance across two distinct datasets, KiTS19 and KiTS21, underscores model's reliability and potential for clinical reference.
引用
收藏
页码:1295 / 1313
页数:19
相关论文
共 50 条
  • [21] Fuzzy Positive Learning for Semi-supervised Semantic Segmentation
    Qiao, Pengchong
    Wei, Zhidan
    Wang, Yu
    Wang, Zhennan
    Song, Guoli
    Xu, Fan
    Ji, Xiangyang
    Liu, Chang
    Chen, Jie
    2023 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2023, : 15465 - 15474
  • [22] Semi-supervised learning of probabilistic models for ECG segmentation
    Hughes, NP
    Roberts, SJ
    Tarassenko, L
    PROCEEDINGS OF THE 26TH ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY, VOLS 1-7, 2004, 26 : 434 - 437
  • [23] Model-Heterogeneous Semi-Supervised Federated Learning for Medical Image Segmentation
    Ma, Yuxi
    Wang, Jiacheng
    Yang, Jing
    Wang, Liansheng
    IEEE TRANSACTIONS ON MEDICAL IMAGING, 2024, 43 (05) : 1804 - 1815
  • [24] Apple Leaf Spot Segmentation Model Based on Consistency Semi-supervised Learning
    Ding, Yongjun
    Yang, Wentao
    Zhao, Yilong
    Nongye Jixie Xuebao/Transactions of the Chinese Society for Agricultural Machinery, 2024, 55 (12): : 314 - 321
  • [25] Interactive Dual-model Learning for Semi-supervised Medical Image Segmentation
    Fang C.-W.
    Li X.
    Li Z.-Y.
    Jiao L.-C.
    Zhang D.-W.
    Zidonghua Xuebao/Acta Automatica Sinica, 2023, 49 (04): : 805 - 819
  • [26] Semi-supervised Image Segmentation
    Lazarova, Gergana Angelova
    ARTIFICIAL INTELLIGENCE: METHODOLOGY, SYSTEMS, AND APPLICATIONS, 2014, 8722 : 59 - 68
  • [27] SEMI-SUPERVISED SUBSPACE SEGMENTATION
    Wang, Dong
    Yin, Qiyue
    He, Ran
    Wang, Liang
    Tan, Tieniu
    2014 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING (ICIP), 2014, : 2854 - 2858
  • [28] Curriculum Semi-supervised Segmentation
    Kervadec, Hoel
    Dolz, Jose
    Granger, Eric
    Ben Ayed, Ismail
    MEDICAL IMAGE COMPUTING AND COMPUTER ASSISTED INTERVENTION - MICCAI 2019, PT II, 2019, 11765 : 568 - 576
  • [29] Tumor volume measurements using supervised and semi-supervised MRI segmentation methods
    Vaidyanathan, M.
    Velthuizen, R.P.
    Venugopal, P.
    Clarke, L.P.
    Hall, L.O.
    Artificial Neural Networks in Engineering - Proceedings (ANNIE'94), 1994, 4 : 629 - 637
  • [30] Semi-supervised Brain Tumor Segmentation Using Diffusion Models
    Alshenoudy, Ahmed
    Sabrowsky-Hirsch, Bertram
    Thumfart, Stefan
    Giretzlehner, Michael
    Kobler, Erich
    ARTIFICIAL INTELLIGENCE APPLICATIONS AND INNOVATIONS, AIAI 2023, PT I, 2023, 675 : 314 - 325