segmentation in computed tomography images *
- Authors
- Xu, Xuanang; Lian, Chunfeng; Wang, Shuai; Zhu, Tong; Chen, Ronald C.; Wang, Andrew Z.; Royce, Trevor J.; Yap, Pew-Thian; Shen, Dinggang; Lian, Jun
- Issue Date
- 8월-2021
- Publisher
- ELSEVIER
- Keywords
- Attention mechanism; Computed tomography; Deep learning; Multi-task; Prostate bed; Segmentation
- Citation
- MEDICAL IMAGE ANALYSIS, v.72, pp.102116
- Indexed
- SCIE
SCOPUS
- Journal Title
- MEDICAL IMAGE ANALYSIS
- Volume
- 72
- Start Page
- 102116
- URI
- https://scholar.korea.ac.kr/handle/2021.sw.korea/137071
- DOI
- 10.1016/j.media.2021.102116
- ISSN
- 1361-8415
- Abstract
- Post-prostatectomy radiotherapy requires accurate annotation of the prostate bed (PB), i.e., the residual tissue after the operative removal of the prostate gland, to minimize side effects on surrounding organs -at-risk (OARs). However, PB segmentation in computed tomography (CT) images is a challenging task, even for experienced physicians. This is because PB is almost a "virtual" target with non-contrast bound-aries and highly variable shapes depending on neighboring OARs. In this work, we propose an asym-metric multi-task attention network (AMTA-Net) for the concurrent segmentation of PB and surround-ing OARs. Our AMTA-Net mimics experts in delineating the non-contrast PB by explicitly leveraging its critical dependency on the neighboring OARs (i.e., the bladder and rectum), which are relatively easy to distinguish in CT images. Specifically, we first adopt a U-Net as the backbone network for the low-level (or prerequisite) task of the OAR segmentation. Then, we build an attention sub-network upon the backbone U-Net with a series of cascaded attention modules, which can hierarchically transfer the OAR features and adaptively learn discriminative representations for the high-level (or primary) task of the PB segmentation. We comprehensively evaluate the proposed AMTA-Net on a clinical dataset composed of 186 CT images. According to the experimental results, our AMTA-Net significantly outperforms current clinical state-of-the-arts (i.e., atlas-based segmentation methods), indicating the value of our method in reducing time and labor in the clinical workflow. Our AMTA-Net also presents better performance than the technical state-of-the-arts (i.e., the deep learning-based segmentation methods), especially for the most indistinguishable and clinically critical part of the PB boundaries. Source code is released at https://github.com/superxuang/amta-net. Published by Elsevier B.V.
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Collections - Graduate School > Department of Artificial Intelligence > 1. Journal Articles
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