Breast Cancer Patient Auto-Setup Using Residual Neural Network for CT-Guided Therapy

Patient setup will influence the treatment of the breast cancer in radiation therapy. Improving the accuracy of the tumor target localization is vital for the cancer treatment. In this study, we focus on the breast patient setup and develop an accurate tumor localization method based on the deep lea...

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Main Authors: Chenning Liu, Chenan Liu, Fengquan Lv, Kaibang Zhong, Hongjin Yu
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9247991/
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spelling doaj-791364d4044d4e4b9595f5c1f75b85d02021-03-30T04:11:48ZengIEEEIEEE Access2169-35362020-01-01820166620167410.1109/ACCESS.2020.30358099247991Breast Cancer Patient Auto-Setup Using Residual Neural Network for CT-Guided TherapyChenning Liu0https://orcid.org/0000-0002-8409-378XChenan Liu1Fengquan Lv2Kaibang Zhong3Hongjin Yu4Department of Gynaecology and Obstetrics, Affiliated Dongguan Maternal and Child Health Care Hospital, Southern Medical University, Dongguan, ChinaShanxi Medical University, Taiyuan, ChinaDepartment of Radiation Oncology, Guangdong Provincial People’s Hospital, Guangdong Academy of Medical Sciences, Guangzhou, ChinaDepartment of Otorhinolaryngology, Tungwah Hospital of Sun Yat-sen University, Dongguan, ChinaDepartment of Gynaecology and Obstetrics, Affiliated Dongguan Maternal and Child Health Care Hospital, Southern Medical University, Dongguan, ChinaPatient setup will influence the treatment of the breast cancer in radiation therapy. Improving the accuracy of the tumor target localization is vital for the cancer treatment. In this study, we focus on the breast patient setup and develop an accurate tumor localization method based on the deep learning in radiation therapy. The proposed method used a double residual neural network model to achieve the high precision and efficiency patient tumor localization. In the network training, the model attempt to localize the breast and then detect the landmarks inside the localized region. After the model training, we used an iterative filter scheme for calculating a transformation to the daily CT. Therefore, the gray value distribution can match well with the training image. The final landmark positions were obtained after the iteration. The translation errors in the daily CT were determined using the detected landmarks. We used the digital CT phantom images and the real patient CT images to evaluate the proposed method. Then result of the breast patient setup was shown to be clinically acceptable. The mean and standard deviation setup errors were 0.64 ± 1.40 mm, 0.15 ± 1.28 mm, -0.46±1.17 mm in the anterior-posterior, left-right, and superior-inferior, respectively. In conclusion, we proposed an accurate patient setup method, which shown a very promising alternative for marker-free breast auto-setup.https://ieeexplore.ieee.org/document/9247991/Breast setupdaily computed tomographyresidual networkimage-guided radiation therapy
collection DOAJ
language English
format Article
sources DOAJ
author Chenning Liu
Chenan Liu
Fengquan Lv
Kaibang Zhong
Hongjin Yu
spellingShingle Chenning Liu
Chenan Liu
Fengquan Lv
Kaibang Zhong
Hongjin Yu
Breast Cancer Patient Auto-Setup Using Residual Neural Network for CT-Guided Therapy
IEEE Access
Breast setup
daily computed tomography
residual network
image-guided radiation therapy
author_facet Chenning Liu
Chenan Liu
Fengquan Lv
Kaibang Zhong
Hongjin Yu
author_sort Chenning Liu
title Breast Cancer Patient Auto-Setup Using Residual Neural Network for CT-Guided Therapy
title_short Breast Cancer Patient Auto-Setup Using Residual Neural Network for CT-Guided Therapy
title_full Breast Cancer Patient Auto-Setup Using Residual Neural Network for CT-Guided Therapy
title_fullStr Breast Cancer Patient Auto-Setup Using Residual Neural Network for CT-Guided Therapy
title_full_unstemmed Breast Cancer Patient Auto-Setup Using Residual Neural Network for CT-Guided Therapy
title_sort breast cancer patient auto-setup using residual neural network for ct-guided therapy
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Patient setup will influence the treatment of the breast cancer in radiation therapy. Improving the accuracy of the tumor target localization is vital for the cancer treatment. In this study, we focus on the breast patient setup and develop an accurate tumor localization method based on the deep learning in radiation therapy. The proposed method used a double residual neural network model to achieve the high precision and efficiency patient tumor localization. In the network training, the model attempt to localize the breast and then detect the landmarks inside the localized region. After the model training, we used an iterative filter scheme for calculating a transformation to the daily CT. Therefore, the gray value distribution can match well with the training image. The final landmark positions were obtained after the iteration. The translation errors in the daily CT were determined using the detected landmarks. We used the digital CT phantom images and the real patient CT images to evaluate the proposed method. Then result of the breast patient setup was shown to be clinically acceptable. The mean and standard deviation setup errors were 0.64 ± 1.40 mm, 0.15 ± 1.28 mm, -0.46±1.17 mm in the anterior-posterior, left-right, and superior-inferior, respectively. In conclusion, we proposed an accurate patient setup method, which shown a very promising alternative for marker-free breast auto-setup.
topic Breast setup
daily computed tomography
residual network
image-guided radiation therapy
url https://ieeexplore.ieee.org/document/9247991/
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AT fengquanlv breastcancerpatientautosetupusingresidualneuralnetworkforctguidedtherapy
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