Literature DB >> 32991916

Clinical evaluation of atlas- and deep learning-based automatic segmentation of multiple organs and clinical target volumes for breast cancer.

Min Seo Choi1, Byeong Su Choi1, Seung Yeun Chung2, Nalee Kim3, Jaehee Chun1, Yong Bae Kim1, Jee Suk Chang4, Jin Sung Kim5.   

Abstract

Manual segmentation is the gold standard method for radiation therapy planning; however, it is time-consuming and prone to inter- and intra-observer variation, giving rise to interests in auto-segmentation methods. We evaluated the feasibility of deep learning-based auto-segmentation (DLBAS) in comparison to commercially available atlas-based segmentation solutions (ABAS) for breast cancer radiation therapy. This study used contrast-enhanced planning computed tomography scans from 62 patients with breast cancer who underwent breast-conservation surgery. Contours of target volumes (CTVs), organs, and heart substructures were generated using two commercial ABAS solutions and DLBAS using fully convolutional DenseNet. The accuracy of the segmentation was assessed using 14 test patients using the Dice Similarity Coefficient and Hausdorff Distance referencing the expert contours. A sensitivity analysis was performed using non-contrast planning CT from 14 additional patients. Compared to ABAS, the proposed DLBAS model yielded more consistent results and the highest average Dice Similarity Coefficient values and lowest Hausdorff Distances, especially for CTVs and the substructures of the heart. ABAS showed limited performance in soft-tissue-based regions, such as the esophagus, cardiac arteries, and smaller CTVs. The results of sensitivity analysis between contrast and non-contrast CT test sets showed little difference in the performance of DLBAS and conversely, a large discrepancy for ABAS. The proposed DLBAS algorithm was more consistent and robust in its performance than ABAS across the majority of structures when examining both CTVs and normal organs. DLBAS has great potential to aid a key process in the radiation therapy workflow, helping optimise and reduce the clinical workload.
Copyright © 2020 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Artificial intelligence; Breast cancer; CTV segmentation; Commercial atlas-based autosegmentation; Deep learning-based autosegmentation; Radiation therapy

Mesh:

Year:  2020        PMID: 32991916     DOI: 10.1016/j.radonc.2020.09.045

Source DB:  PubMed          Journal:  Radiother Oncol        ISSN: 0167-8140            Impact factor:   6.280


  13 in total

1.  Association of Sinoatrial Node Radiation Dose With Atrial Fibrillation and Mortality in Patients With Lung Cancer.

Authors:  Kyung Hwan Kim; Jaewon Oh; Gowoon Yang; Joongyo Lee; Jihun Kim; Seo-Yeon Gwak; Iksung Cho; Seung Hyun Lee; Hwa Kyung Byun; Hyo-Kyoung Choi; Jinsung Kim; Jee Suk Chang; Seok-Min Kang; Hong In Yoon
Journal:  JAMA Oncol       Date:  2022-09-22       Impact factor: 33.006

2.  Application of Multi-Scale Fusion Attention U-Net to Segment the Thyroid Gland on Localized Computed Tomography Images for Radiotherapy.

Authors:  Xiaobo Wen; Biao Zhao; Meifang Yuan; Jinzhi Li; Mengzhen Sun; Lishuang Ma; Chaoxi Sun; Yi Yang
Journal:  Front Oncol       Date:  2022-05-26       Impact factor: 5.738

3.  Feasibility of using a novel automatic cardiac segmentation algorithm in the clinical routine of lung cancer patients.

Authors:  Robert Neil Finnegan; Lucia Orlandini; Xiongfei Liao; Jun Yin; Jinyi Lang; Jason Dowling; Davide Fontanarosa
Journal:  PLoS One       Date:  2021-01-14       Impact factor: 3.240

4.  Feasibility of Continual Deep Learning-Based Segmentation for Personalized Adaptive Radiation Therapy in Head and Neck Area.

Authors:  Nalee Kim; Jaehee Chun; Jee Suk Chang; Chang Geol Lee; Ki Chang Keum; Jin Sung Kim
Journal:  Cancers (Basel)       Date:  2021-02-09       Impact factor: 6.639

5.  A 2D-3D hybrid convolutional neural network for lung lobe auto-segmentation on standard slice thickness computed tomography of patients receiving radiotherapy.

Authors:  Hengle Gu; Wutian Gan; Chenchen Zhang; Aihui Feng; Hao Wang; Ying Huang; Hua Chen; Yan Shao; Yanhua Duan; Zhiyong Xu
Journal:  Biomed Eng Online       Date:  2021-09-23       Impact factor: 2.819

6.  Evaluation of deep learning-based autosegmentation in breast cancer radiotherapy.

Authors:  Hwa Kyung Byun; Jee Suk Chang; Min Seo Choi; Jaehee Chun; Jinhong Jung; Chiyoung Jeong; Jin Sung Kim; Yongjin Chang; Seung Yeun Chung; Seungryul Lee; Yong Bae Kim
Journal:  Radiat Oncol       Date:  2021-10-14       Impact factor: 3.481

Review 7.  Review of Deep Learning Based Automatic Segmentation for Lung Cancer Radiotherapy.

Authors:  Xi Liu; Kai-Wen Li; Ruijie Yang; Li-Sheng Geng
Journal:  Front Oncol       Date:  2021-07-08       Impact factor: 6.244

8.  Implementation of deep learning-based auto-segmentation for radiotherapy planning structures: a workflow study at two cancer centers.

Authors:  Jordan Wong; Vicky Huang; Derek Wells; Joshua Giambattista; Jonathan Giambattista; Carter Kolbeck; Karl Otto; Elantholi P Saibishkumar; Abraham Alexander
Journal:  Radiat Oncol       Date:  2021-06-08       Impact factor: 3.481

9.  Automatic Cardiac Structure Contouring for Small Datasets with Cascaded Deep Learning Models.

Authors:  L B van den Oever; D S Spoor; A P G Crijns; R Vliegenthart; M Oudkerk; R N J Veldhuis; G H de Bock; P M A van Ooijen
Journal:  J Med Syst       Date:  2022-03-25       Impact factor: 4.920

10.  The dosimetric impact of deep learning-based auto-segmentation of organs at risk on nasopharyngeal and rectal cancer.

Authors:  Hongbo Guo; Jiazhou Wang; Xiang Xia; Yang Zhong; Jiayuan Peng; Zhen Zhang; Weigang Hu
Journal:  Radiat Oncol       Date:  2021-06-23       Impact factor: 3.481

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