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MTL-ABS3Net: Atlas-Based Semi-Supervised Organ Segmentation Network With Multi-Task Learning for Medical Images

分割 计算机科学 人工智能 任务(项目管理) 模式识别(心理学) 图像分割 地图集(解剖学) 医学影像学 计算机视觉 医学 工程类 解剖 系统工程
作者
Hui-Min Huang,Qingqing Chen,Lanfen Lin,Ming Cai,Qiaowei Zhang,Yutaro Iwamoto,Xian‐Hua Han,Akira Furukawa,Shuzo Kanasaki,Yen‐Wei Chen,Ruofeng Tong,Hongjie Hu
出处
期刊:IEEE Journal of Biomedical and Health Informatics [Institute of Electrical and Electronics Engineers]
卷期号:26 (8): 3988-3998 被引量:14
标识
DOI:10.1109/jbhi.2022.3153406
摘要

Organ segmentation is one of the most important step for various medical image analysis tasks. Recently, semi-supervised learning (SSL) has attracted much attentions by reducing labeling cost. However, most of the existing SSLs neglected the prior shape and position information specialized in the medical images, leading to unsatisfactory localization and non-smooth of objects. In this paper, we propose a novel atlas-based semi-supervised segmentation network with multi-task learning for medical organs, named MTL-ABS 3 Net, which incorporates the anatomical priors and makes full use of unlabeled data in a self-training and multi-task learning manner. The MTL-ABS 3 Net consists of two components: an Atlas-Based Semi-Supervised Segmentation Network (ABS 3 Net) and Reconstruction-Assisted Module (RAM). Specifically, the ABS 3 Net improves the existing SSLs by utilizing atlas prior, which generates credible pseudo labels in a self-training manner; while the RAM further assists the segmentation network by capturing the anatomical structures from the original images in a multi-task learning manner. Better reconstruction quality is achieved by using MS-SSIM loss function, which further improves the segmentation accuracy. Experimental results from the liver and spleen datasets demonstrated that the performance of our method was significantly improved compared to existing state-of-the-art methods.

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