A Computationally Efficient Approach to Segmentation of the Aorta and Coronary Arteries Using Deep Learning

Early detection and diagnosis of coronary artery disease could reduce the risk of developing a heart attack. The coronary arteries are optimally visualised using computed tomography coronary angiography (CTCA) imaging. These images are reviewed by specialist radiologists who evaluate the coronary ar...

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Main Authors: Wing Keung Cheung, Robert Bell, Arjun Nair, Leon J. Menezes, Riyaz Patel, Simon Wan, Kacy Chou, Jiahang Chen, Ryo Torii, Rhodri H. Davies, James C. Moon, Daniel C. Alexander, Joseph Jacob
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9492119/
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spelling doaj-697b5c730e484c3b8cc80486ea38076f2021-08-09T23:00:47ZengIEEEIEEE Access2169-35362021-01-01910887310888810.1109/ACCESS.2021.30990309492119A Computationally Efficient Approach to Segmentation of the Aorta and Coronary Arteries Using Deep LearningWing Keung Cheung0https://orcid.org/0000-0002-2647-9369Robert Bell1Arjun Nair2Leon J. Menezes3Riyaz Patel4Simon Wan5Kacy Chou6Jiahang Chen7Ryo Torii8Rhodri H. Davies9James C. Moon10Daniel C. Alexander11Joseph Jacob12Centre for Medical Image Computing, University College London, London, U.K.Hatter Cardiovascular Institute, University College London, London, U.K.Department of Radiology, University College London Hospital, London, U.K.Institute of Nuclear Medicine, University College London, London, U.K.Institute of Cardiovascular Science, University College London, London, U.K.Institute of Nuclear Medicine, University College London, London, U.K.Centre for Medical Image Computing, University College London, London, U.K.Department of Mechanical Engineering, University College London, London, U.K.Department of Mechanical Engineering, University College London, London, U.K.Institute of Cardiovascular Science, University College London, London, U.K.Institute of Cardiovascular Science, University College London, London, U.K.Centre for Medical Image Computing, University College London, London, U.K.Centre for Medical Image Computing, University College London, London, U.K.Early detection and diagnosis of coronary artery disease could reduce the risk of developing a heart attack. The coronary arteries are optimally visualised using computed tomography coronary angiography (CTCA) imaging. These images are reviewed by specialist radiologists who evaluate the coronary arteries for potential narrowing. A lack of radiologists in the UK is a constraint to timely diagnosis of coronary artery disease, particularly in the acute accident and emergency department setting. The development of automated methods by which coronary artery narrowing can be identified rapidly and accurately are therefore timely. Such complex computer based tools also need to be sufficiently computationally efficient that they can run on servers typically found in hospital settings, where graphical processing units for example are unavailable. We propose a fully automatic two-dimensional Unet model to segment the aorta and coronary arteries on CTCA images. Two models are trained to segment two regions of interest, (1) the aorta and the coronary arteries or (2) the coronary arteries alone. Our method achieves 91.20% and 88.80% dice similarity coefficient accuracy on regions of interest 1 and 2 respectively. Compared with a semi-automatic segmentation method, our model performs better when segmenting the coronary arteries alone. The performance of the proposed method is comparable to existing published two-dimensional or three-dimensional deep learning models. Importantly, the algorithmic and graphical processing unit memory efficiencies are maintained such that the model can be deployed without requiring graphical processing units, and therefore can be used in a hospital setting.https://ieeexplore.ieee.org/document/9492119/Aortacomputed tomography coronary angiographycoronary arterydeep learningsegmentation
collection DOAJ
language English
format Article
sources DOAJ
author Wing Keung Cheung
Robert Bell
Arjun Nair
Leon J. Menezes
Riyaz Patel
Simon Wan
Kacy Chou
Jiahang Chen
Ryo Torii
Rhodri H. Davies
James C. Moon
Daniel C. Alexander
Joseph Jacob
spellingShingle Wing Keung Cheung
Robert Bell
Arjun Nair
Leon J. Menezes
Riyaz Patel
Simon Wan
Kacy Chou
Jiahang Chen
Ryo Torii
Rhodri H. Davies
James C. Moon
Daniel C. Alexander
Joseph Jacob
A Computationally Efficient Approach to Segmentation of the Aorta and Coronary Arteries Using Deep Learning
IEEE Access
Aorta
computed tomography coronary angiography
coronary artery
deep learning
segmentation
author_facet Wing Keung Cheung
Robert Bell
Arjun Nair
Leon J. Menezes
Riyaz Patel
Simon Wan
Kacy Chou
Jiahang Chen
Ryo Torii
Rhodri H. Davies
James C. Moon
Daniel C. Alexander
Joseph Jacob
author_sort Wing Keung Cheung
title A Computationally Efficient Approach to Segmentation of the Aorta and Coronary Arteries Using Deep Learning
title_short A Computationally Efficient Approach to Segmentation of the Aorta and Coronary Arteries Using Deep Learning
title_full A Computationally Efficient Approach to Segmentation of the Aorta and Coronary Arteries Using Deep Learning
title_fullStr A Computationally Efficient Approach to Segmentation of the Aorta and Coronary Arteries Using Deep Learning
title_full_unstemmed A Computationally Efficient Approach to Segmentation of the Aorta and Coronary Arteries Using Deep Learning
title_sort computationally efficient approach to segmentation of the aorta and coronary arteries using deep learning
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2021-01-01
description Early detection and diagnosis of coronary artery disease could reduce the risk of developing a heart attack. The coronary arteries are optimally visualised using computed tomography coronary angiography (CTCA) imaging. These images are reviewed by specialist radiologists who evaluate the coronary arteries for potential narrowing. A lack of radiologists in the UK is a constraint to timely diagnosis of coronary artery disease, particularly in the acute accident and emergency department setting. The development of automated methods by which coronary artery narrowing can be identified rapidly and accurately are therefore timely. Such complex computer based tools also need to be sufficiently computationally efficient that they can run on servers typically found in hospital settings, where graphical processing units for example are unavailable. We propose a fully automatic two-dimensional Unet model to segment the aorta and coronary arteries on CTCA images. Two models are trained to segment two regions of interest, (1) the aorta and the coronary arteries or (2) the coronary arteries alone. Our method achieves 91.20% and 88.80% dice similarity coefficient accuracy on regions of interest 1 and 2 respectively. Compared with a semi-automatic segmentation method, our model performs better when segmenting the coronary arteries alone. The performance of the proposed method is comparable to existing published two-dimensional or three-dimensional deep learning models. Importantly, the algorithmic and graphical processing unit memory efficiencies are maintained such that the model can be deployed without requiring graphical processing units, and therefore can be used in a hospital setting.
topic Aorta
computed tomography coronary angiography
coronary artery
deep learning
segmentation
url https://ieeexplore.ieee.org/document/9492119/
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