Conference Paper/Proceeding/Abstract 1140 views 256 downloads
3D interactive coronary artery segmentation using random forests and Markov random field optimization
2014 IEEE International Conference on Image Processing (ICIP), Pages: 942 - 946
Swansea University Authors: Jingjing Deng, Xianghua Xie
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DOI (Published version): 10.1109/ICIP.2014.7025189
Abstract
Coronary artery segmentation plays a vital important role in coronary disease diagnosis and treatment. In this paper, we present a machine learning based interactive coronary artery segmentation method for 3D computed tomography angiography images. We first apply vessel diffusion to reduce noise int...
Published in: | 2014 IEEE International Conference on Image Processing (ICIP) |
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ISBN: | 978-1-4799-5751-4 |
ISSN: | 1522-4880 2381-8549 |
Published: |
Paris, France
2015
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Online Access: |
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URI: | https://cronfa.swan.ac.uk/Record/cronfa49670 |
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2019-04-08T10:35:57.0913595 v2 49670 2019-03-20 3D interactive coronary artery segmentation using random forests and Markov random field optimization 6f6d01d585363d6dc1622640bb4fcb3f Jingjing Deng Jingjing Deng true false b334d40963c7a2f435f06d2c26c74e11 0000-0002-2701-8660 Xianghua Xie Xianghua Xie true false 2019-03-20 MACS Coronary artery segmentation plays a vital important role in coronary disease diagnosis and treatment. In this paper, we present a machine learning based interactive coronary artery segmentation method for 3D computed tomography angiography images. We first apply vessel diffusion to reduce noise interference and enhance the tubular structures in the images. A few user strokes are required to specify region of interest and background. Various image features for detecting the coronary arteries are then extracted in a multi-scale fashion, and are fed into a random forests classifier, which assigns each voxel with probability values of being coronary artery and background. The final segmentation is carried through an MRF based optimization using primal dual algorithm. A connectivity component analysis is carried out as post processing to remove isolated, small regions to produce the segmented coronary arterial vessels. The proposed method requires limited user interference and achieves robust segmentation results. Conference Paper/Proceeding/Abstract 2014 IEEE International Conference on Image Processing (ICIP) 942 946 Paris, France 978-1-4799-5751-4 1522-4880 2381-8549 Coronary artery, interactive segmentation, random forests, Markov random field, primal dual algorithm 31 12 2015 2015-12-31 10.1109/ICIP.2014.7025189 COLLEGE NANME Mathematics and Computer Science School COLLEGE CODE MACS Swansea University 2019-04-08T10:35:57.0913595 2019-03-20T20:51:24.7444285 Faculty of Science and Engineering School of Mathematics and Computer Science - Computer Science Jingjing Deng 1 Xianghua Xie 0000-0002-2701-8660 2 Rob Alcock 3 Carl Roobottom 4 0049670-01042019172102.pdf icip_v3.0_JD.pdf 2019-04-01T17:21:02.2500000 Output 1706074 application/pdf Accepted Manuscript true 2019-04-01T00:00:00.0000000 true eng |
title |
3D interactive coronary artery segmentation using random forests and Markov random field optimization |
spellingShingle |
3D interactive coronary artery segmentation using random forests and Markov random field optimization Jingjing Deng Xianghua Xie |
title_short |
3D interactive coronary artery segmentation using random forests and Markov random field optimization |
title_full |
3D interactive coronary artery segmentation using random forests and Markov random field optimization |
title_fullStr |
3D interactive coronary artery segmentation using random forests and Markov random field optimization |
title_full_unstemmed |
3D interactive coronary artery segmentation using random forests and Markov random field optimization |
title_sort |
3D interactive coronary artery segmentation using random forests and Markov random field optimization |
author_id_str_mv |
6f6d01d585363d6dc1622640bb4fcb3f b334d40963c7a2f435f06d2c26c74e11 |
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6f6d01d585363d6dc1622640bb4fcb3f_***_Jingjing Deng b334d40963c7a2f435f06d2c26c74e11_***_Xianghua Xie |
author |
Jingjing Deng Xianghua Xie |
author2 |
Jingjing Deng Xianghua Xie Rob Alcock Carl Roobottom |
format |
Conference Paper/Proceeding/Abstract |
container_title |
2014 IEEE International Conference on Image Processing (ICIP) |
container_start_page |
942 |
publishDate |
2015 |
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Swansea University |
isbn |
978-1-4799-5751-4 |
issn |
1522-4880 2381-8549 |
doi_str_mv |
10.1109/ICIP.2014.7025189 |
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Faculty of Science and Engineering |
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facultyofscienceandengineering |
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Faculty of Science and Engineering |
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facultyofscienceandengineering |
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Faculty of Science and Engineering |
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School of Mathematics and Computer Science - Computer Science{{{_:::_}}}Faculty of Science and Engineering{{{_:::_}}}School of Mathematics and Computer Science - Computer Science |
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description |
Coronary artery segmentation plays a vital important role in coronary disease diagnosis and treatment. In this paper, we present a machine learning based interactive coronary artery segmentation method for 3D computed tomography angiography images. We first apply vessel diffusion to reduce noise interference and enhance the tubular structures in the images. A few user strokes are required to specify region of interest and background. Various image features for detecting the coronary arteries are then extracted in a multi-scale fashion, and are fed into a random forests classifier, which assigns each voxel with probability values of being coronary artery and background. The final segmentation is carried through an MRF based optimization using primal dual algorithm. A connectivity component analysis is carried out as post processing to remove isolated, small regions to produce the segmented coronary arterial vessels. The proposed method requires limited user interference and achieves robust segmentation results. |
published_date |
2015-12-31T01:56:19Z |
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1821368730777550848 |
score |
11.04748 |