Federated 3D multi-organ segmentation with partially labeled and unlabeled data

被引:0
|
作者
Zheng, Zhou [1 ]
Hayashi, Yuichiro [1 ]
Oda, Masahiro [1 ,2 ]
Kitasaka, Takayuki [3 ]
Misawa, Kazunari [4 ]
Mori, Kensaku [1 ,2 ,5 ]
机构
[1] Nagoya Univ, Grad Sch Informat, Furo Cho,Chikusa Ku, Nagoya, Aichi, Japan
[2] Nagoya Univ, Informat Strategy Off, Informat & Commun, Furo-cho,Chikusa ku, Nagoya, Aichi, Japan
[3] Aichi Inst Technol, Sch Informat Sci, Yagusa Cho,1247 Yachigusa, Toyota, Aichi, Japan
[4] Aichi Canc Ctr Hosp, 1-1 Kanokoden,Chikusa Ku, Nagoya, Aichi 4648681, Japan
[5] Natl Inst Informat, Res Ctr Med Bigdata, 2-1-2 Hitotsubashi,Chiyoda ku, Tokyo, Japan
关键词
Multi-organ segmentation; Federated learning; Semi-supervised; Partially supervised;
D O I
10.1007/s11548-024-03139-6
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Purpose This paper considers a new problem setting for multi-organ segmentation based on the following observations. In reality, (1) collecting a large-scale dataset from various institutes is usually impeded due to privacy issues; (2) many images are not labeled since the slice-by-slice annotation is costly; and (3) datasets may exhibit inconsistent, partial annotations across different institutes. Learning a federated model from these distributed, partially labeled, and unlabeled samples is an unexplored problem.Methods To simulate this multi-organ segmentation problem, several distributed clients and a central server are maintained. The central server coordinates with clients to learn a global model using distributed private datasets, which comprise a small part of partially labeled images and a large part of unlabeled images. To address this problem, a practical framework that unifies partially supervised learning (PSL), semi-supervised learning (SSL), and federated learning (FL) paradigms with PSL, SSL, and FL modules is proposed. The PSL module manages to learn from partially labeled samples. The SSL module extracts valuable information from unlabeled data. Besides, the FL module aggregates local information from distributed clients to generate a global statistical model. With the collaboration of three modules, the presented scheme could take advantage of these distributed imperfect datasets to train a generalizable model.Results The proposed method was extensively evaluated with multiple abdominal CT datasets, achieving an average result of 84.83% in Dice and 41.62 mm in 95HD for multi-organ (liver, spleen, and stomach) segmentation. Moreover, its efficacy in transfer learning further demonstrated its good generalization ability for downstream segmentation tasks.Conclusion This study considers a novel problem of multi-organ segmentation, which aims to develop a generalizable model using distributed, partially labeled, and unlabeled CT images. A practical framework is presented, which, through extensive validation, has proved to be an effective solution, demonstrating strong potential in addressing this challenging problem.
引用
收藏
页数:14
相关论文
共 50 条
  • [1] Federated learning with knowledge distillation for multi-organ segmentation with partially labeled datasets
    Kim, Soopil
    Park, Heejung
    Kang, Myeongkyun
    Jin, Kyong Hwan
    Adeli, Ehsan
    Pohl, Kilian M.
    Park, Sang Hyun
    MEDICAL IMAGE ANALYSIS, 2024, 95
  • [2] Learning From Partially Labeled Data for Multi-Organ and Tumor Segmentation
    Xie, Yutong
    Zhang, Jianpeng
    Xia, Yong
    Shen, Chunhua
    IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2023, 45 (12) : 14905 - 14919
  • [3] Labeled-to-unlabeled distribution alignment for partially-supervised multi-organ medical image segmentation
    Jiang, Xixi
    Zhang, Dong
    Li, Xiang
    Liu, Kangyi
    Cheng, Kwang-Ting
    Yang, Xin
    MEDICAL IMAGE ANALYSIS, 2025, 99
  • [4] Expert guidance and partially-labeled data collaboration for multi-organ segmentation
    Li, Li
    Liu, Jianyi
    Xiao, Hanguang
    Zhou, Guanqun
    Liu, Qiyuan
    Zhang, Zhicheng
    NEURAL NETWORKS, 2025, 187
  • [5] AdaptNet: Adaptive Learning from Partially Labeled Data for Abdomen Multi-organ and Tumor Segmentation
    Luo, JiChao
    Chen, Zhihong
    Liu, Wenbin
    Liu, Zaiyi
    Qiu, Bingjiang
    Fang, Gang
    FAST, LOW-RESOURCE, AND ACCURATE ORGAN AND PAN-CANCER SEGMENTATION IN ABDOMEN CT, FLARE 2023, 2024, 14544 : 179 - 193
  • [6] Federated Multi-Organ Segmentation With Inconsistent Labels
    Xu, Xuanang
    Deng, Hannah H.
    Gateno, Jamie
    Yan, Pingkun
    IEEE TRANSACTIONS ON MEDICAL IMAGING, 2023, 42 (10) : 2948 - 2960
  • [7] Multi-Organ Segmentation Over Partially Labeled Datasets With Multi-Scale Feature Abstraction
    Fang, Xi
    Yan, Pingkun
    IEEE TRANSACTIONS ON MEDICAL IMAGING, 2020, 39 (11) : 3619 - 3629
  • [8] Hierarchical Multi-Organ Segmentation Without Registration in 3D Abdominal CT Images
    Zografos, Vasileios
    Valentinitsch, Alexander
    Rempfler, Markus
    Tombari, Federico
    Menze, Bjoern
    Medical Computer Vision: Algorithms for Big Data, 2016, 9601 : 37 - 46
  • [9] DAUNet: A deformable aggregation UNet for multi-organ 3D medical image segmentation
    Liu, Qinghao
    Liu, Min
    Zhu, Yuehao
    Liu, Licheng
    Zhang, Zhe
    Wang, Yaonan
    PATTERN RECOGNITION LETTERS, 2025, 191 : 58 - 65
  • [10] COSST: Multi-Organ Segmentation With Partially Labeled Datasets Using Comprehensive Supervisions and Self-Training
    Liu, Han
    Xu, Zhoubing
    Gao, Riqiang
    Li, Hao
    Wang, Jianing
    Chabin, Guillaume
    Oguz, Ipek
    Grbic, Sasa
    IEEE TRANSACTIONS ON MEDICAL IMAGING, 2024, 43 (05) : 1995 - 2009