Title
Semi-supervised Segmentation of Liver Using Adversarial Learning with Deep Atlas Prior
Abstract
Medical image segmentation is one of the most important steps in computer-aided intervention and diagnosis. Although deep learning-based segmentation methods have achieved great success in computer vision domain, there are still several challenges in medical image domain. In comparison with natural images, medical image databases are usually small because the annotation is extremely time-consuming and requires expert knowledge. Thus, effective use of unannotated data is essential for medical image segmentation. On the other hand, medical images have many anatomical priors in comparison to non-medical images such as the shape and position of organs. Incorporating the anatomical prior knowledge in deep learning is a vital issue for accurate medical image segmentation. To address these two problems, in this paper we proposed a semi-supervised adversarial learning model with Deep Atlas Prior (DAP) to improve the accuracy of liver segmentation in CT images. We trained the semi-supervised adversarial learning model using both annotated and unannotated images. The DAP, which is based on the probability atlas of organ (liver) and contains prior information such as the shape and position, is combined with the conventional focal loss to aid segmentation. We call the combined loss as Bayesian loss and the conventional focal loss that utilizes the predicted probabilities of training data in the previous learning epoch as a likelihood loss. Experiments on ISBI LiTS 2017 challenge dataset showed that the performance of the semi-supervised network was significantly improved by incorporating with DAP.
Year
DOI
Venue
2019
10.1007/978-3-030-32226-7_17
Lecture Notes in Computer Science
Keywords
DocType
Volume
Liver segmentation,Semi-supervised,Deep Atlas Prior,Adversarial learning
Conference
11769
ISSN
Citations 
PageRank 
0302-9743
2
0.37
References 
Authors
0
10
Name
Order
Citations
PageRank
Han Zheng120.37
Lanfen Lin27824.70
Hongjie Hu3119.50
Qiaowei Zhang462.85
Qingqing Chen563.86
Yutaro Iwamoto61317.95
Xian-Hua Han71410.19
Yen-Wei Chen8720155.73
Ruofeng Tong946649.69
Jian Wu1020.71