Coronary vessel segmentation using multiresolution and multiscale deep learning

We present a coronary vessel segmentation method for X-Ray coronary angiography images using multiresolution and multiscale deep learning. Our segmentation method constructs a set of multiresolution images from an input image via bilinear interpolation, which can handle coronary vessels with uneven...

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Main Authors: Zhengqiang Jiang, Chubin Ou, Yi Qian, Rajan Rehan, Andy Yong
Format: Article
Language:English
Published: Elsevier 2021-01-01
Series:Informatics in Medicine Unlocked
Online Access:http://www.sciencedirect.com/science/article/pii/S2352914821000927
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spelling doaj-d0665c8527f346e78c60ba8694335ecf2021-06-19T04:55:12ZengElsevierInformatics in Medicine Unlocked2352-91482021-01-0124100602Coronary vessel segmentation using multiresolution and multiscale deep learningZhengqiang Jiang0Chubin Ou1Yi Qian2Rajan Rehan3Andy Yong4Department of Biomedical Sciences, Macquarie University, NSW, 2109, Australia; Corresponding author.Department of Biomedical Sciences, Macquarie University, NSW, 2109, AustraliaDepartment of Biomedical Sciences, Macquarie University, NSW, 2109, Australia; Corresponding author.Royal Prince Alfred Hospital, NSW, 2050, AustraliaDepartment of Clinical Medicine, Faculty of Medicine and Health Sciences, Macquarie University, NSW, 2109, Australia; Department of Cardiology, Concord Repatriation General Hospital, NSW, 2139, AustraliaWe present a coronary vessel segmentation method for X-Ray coronary angiography images using multiresolution and multiscale deep learning. Our segmentation method constructs a set of multiresolution images from an input image via bilinear interpolation, which can handle coronary vessels with uneven distribution of contrast. We incorporate Multiresolution and Multiscale Convolution Filtering into an U-Net Network, which can help to improve accuracy of segmentation results by dealing with various thickness of coronary vessels in different positions. We investigate two types of experiments of multiresolution strategy with U-Net and multiscale strategy with U-Net, respectively. Our method has been evaluated and compared both qualitatively with networks such as single U-Net, Attention U-Net, R2U-Net and R2AttU-Net, and quantitatively with 20 state-of-the-art visual segmentation methods using a benchmark X-Ray coronary angiography database. The experiments demonstrate that our segmentation method outperforms methods using each of these networks alone and these 20 methods significantly in terms of Dice Coefficient metric, which is considered as a major evaluation criteria of segmentation results.http://www.sciencedirect.com/science/article/pii/S2352914821000927
collection DOAJ
language English
format Article
sources DOAJ
author Zhengqiang Jiang
Chubin Ou
Yi Qian
Rajan Rehan
Andy Yong
spellingShingle Zhengqiang Jiang
Chubin Ou
Yi Qian
Rajan Rehan
Andy Yong
Coronary vessel segmentation using multiresolution and multiscale deep learning
Informatics in Medicine Unlocked
author_facet Zhengqiang Jiang
Chubin Ou
Yi Qian
Rajan Rehan
Andy Yong
author_sort Zhengqiang Jiang
title Coronary vessel segmentation using multiresolution and multiscale deep learning
title_short Coronary vessel segmentation using multiresolution and multiscale deep learning
title_full Coronary vessel segmentation using multiresolution and multiscale deep learning
title_fullStr Coronary vessel segmentation using multiresolution and multiscale deep learning
title_full_unstemmed Coronary vessel segmentation using multiresolution and multiscale deep learning
title_sort coronary vessel segmentation using multiresolution and multiscale deep learning
publisher Elsevier
series Informatics in Medicine Unlocked
issn 2352-9148
publishDate 2021-01-01
description We present a coronary vessel segmentation method for X-Ray coronary angiography images using multiresolution and multiscale deep learning. Our segmentation method constructs a set of multiresolution images from an input image via bilinear interpolation, which can handle coronary vessels with uneven distribution of contrast. We incorporate Multiresolution and Multiscale Convolution Filtering into an U-Net Network, which can help to improve accuracy of segmentation results by dealing with various thickness of coronary vessels in different positions. We investigate two types of experiments of multiresolution strategy with U-Net and multiscale strategy with U-Net, respectively. Our method has been evaluated and compared both qualitatively with networks such as single U-Net, Attention U-Net, R2U-Net and R2AttU-Net, and quantitatively with 20 state-of-the-art visual segmentation methods using a benchmark X-Ray coronary angiography database. The experiments demonstrate that our segmentation method outperforms methods using each of these networks alone and these 20 methods significantly in terms of Dice Coefficient metric, which is considered as a major evaluation criteria of segmentation results.
url http://www.sciencedirect.com/science/article/pii/S2352914821000927
work_keys_str_mv AT zhengqiangjiang coronaryvesselsegmentationusingmultiresolutionandmultiscaledeeplearning
AT chubinou coronaryvesselsegmentationusingmultiresolutionandmultiscaledeeplearning
AT yiqian coronaryvesselsegmentationusingmultiresolutionandmultiscaledeeplearning
AT rajanrehan coronaryvesselsegmentationusingmultiresolutionandmultiscaledeeplearning
AT andyyong coronaryvesselsegmentationusingmultiresolutionandmultiscaledeeplearning
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