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Automated cardiovascular magnetic resonance image analysis with fully convolutional networks

BACKGROUND: Cardiovascular resonance (CMR) imaging is a standard imaging modality for assessing cardiovascular diseases (CVDs), the leading cause of death globally. CMR enables accurate quantification of the cardiac chamber volume, ejection fraction and myocardial mass, providing information for dia...

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Autores principales: Bai, Wenjia, Sinclair, Matthew, Tarroni, Giacomo, Oktay, Ozan, Rajchl, Martin, Vaillant, Ghislain, Lee, Aaron M., Aung, Nay, Lukaschuk, Elena, Sanghvi, Mihir M., Zemrak, Filip, Fung, Kenneth, Paiva, Jose Miguel, Carapella, Valentina, Kim, Young Jin, Suzuki, Hideaki, Kainz, Bernhard, Matthews, Paul M., Petersen, Steffen E., Piechnik, Stefan K., Neubauer, Stefan, Glocker, Ben, Rueckert, Daniel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6138894/
https://www.ncbi.nlm.nih.gov/pubmed/30217194
http://dx.doi.org/10.1186/s12968-018-0471-x
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author Bai, Wenjia
Sinclair, Matthew
Tarroni, Giacomo
Oktay, Ozan
Rajchl, Martin
Vaillant, Ghislain
Lee, Aaron M.
Aung, Nay
Lukaschuk, Elena
Sanghvi, Mihir M.
Zemrak, Filip
Fung, Kenneth
Paiva, Jose Miguel
Carapella, Valentina
Kim, Young Jin
Suzuki, Hideaki
Kainz, Bernhard
Matthews, Paul M.
Petersen, Steffen E.
Piechnik, Stefan K.
Neubauer, Stefan
Glocker, Ben
Rueckert, Daniel
author_facet Bai, Wenjia
Sinclair, Matthew
Tarroni, Giacomo
Oktay, Ozan
Rajchl, Martin
Vaillant, Ghislain
Lee, Aaron M.
Aung, Nay
Lukaschuk, Elena
Sanghvi, Mihir M.
Zemrak, Filip
Fung, Kenneth
Paiva, Jose Miguel
Carapella, Valentina
Kim, Young Jin
Suzuki, Hideaki
Kainz, Bernhard
Matthews, Paul M.
Petersen, Steffen E.
Piechnik, Stefan K.
Neubauer, Stefan
Glocker, Ben
Rueckert, Daniel
author_sort Bai, Wenjia
collection PubMed
description BACKGROUND: Cardiovascular resonance (CMR) imaging is a standard imaging modality for assessing cardiovascular diseases (CVDs), the leading cause of death globally. CMR enables accurate quantification of the cardiac chamber volume, ejection fraction and myocardial mass, providing information for diagnosis and monitoring of CVDs. However, for years, clinicians have been relying on manual approaches for CMR image analysis, which is time consuming and prone to subjective errors. It is a major clinical challenge to automatically derive quantitative and clinically relevant information from CMR images. METHODS: Deep neural networks have shown a great potential in image pattern recognition and segmentation for a variety of tasks. Here we demonstrate an automated analysis method for CMR images, which is based on a fully convolutional network (FCN). The network is trained and evaluated on a large-scale dataset from the UK Biobank, consisting of 4,875 subjects with 93,500 pixelwise annotated images. The performance of the method has been evaluated using a number of technical metrics, including the Dice metric, mean contour distance and Hausdorff distance, as well as clinically relevant measures, including left ventricle (LV) end-diastolic volume (LVEDV) and end-systolic volume (LVESV), LV mass (LVM); right ventricle (RV) end-diastolic volume (RVEDV) and end-systolic volume (RVESV). RESULTS: By combining FCN with a large-scale annotated dataset, the proposed automated method achieves a high performance in segmenting the LV and RV on short-axis CMR images and the left atrium (LA) and right atrium (RA) on long-axis CMR images. On a short-axis image test set of 600 subjects, it achieves an average Dice metric of 0.94 for the LV cavity, 0.88 for the LV myocardium and 0.90 for the RV cavity. The mean absolute difference between automated measurement and manual measurement is 6.1 mL for LVEDV, 5.3 mL for LVESV, 6.9 gram for LVM, 8.5 mL for RVEDV and 7.2 mL for RVESV. On long-axis image test sets, the average Dice metric is 0.93 for the LA cavity (2-chamber view), 0.95 for the LA cavity (4-chamber view) and 0.96 for the RA cavity (4-chamber view). The performance is comparable to human inter-observer variability. CONCLUSIONS: We show that an automated method achieves a performance on par with human experts in analysing CMR images and deriving clinically relevant measures. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (10.1186/s12968-018-0471-x) contains supplementary material, which is available to authorized users.
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spelling pubmed-61388942018-09-15 Automated cardiovascular magnetic resonance image analysis with fully convolutional networks Bai, Wenjia Sinclair, Matthew Tarroni, Giacomo Oktay, Ozan Rajchl, Martin Vaillant, Ghislain Lee, Aaron M. Aung, Nay Lukaschuk, Elena Sanghvi, Mihir M. Zemrak, Filip Fung, Kenneth Paiva, Jose Miguel Carapella, Valentina Kim, Young Jin Suzuki, Hideaki Kainz, Bernhard Matthews, Paul M. Petersen, Steffen E. Piechnik, Stefan K. Neubauer, Stefan Glocker, Ben Rueckert, Daniel J Cardiovasc Magn Reson Research BACKGROUND: Cardiovascular resonance (CMR) imaging is a standard imaging modality for assessing cardiovascular diseases (CVDs), the leading cause of death globally. CMR enables accurate quantification of the cardiac chamber volume, ejection fraction and myocardial mass, providing information for diagnosis and monitoring of CVDs. However, for years, clinicians have been relying on manual approaches for CMR image analysis, which is time consuming and prone to subjective errors. It is a major clinical challenge to automatically derive quantitative and clinically relevant information from CMR images. METHODS: Deep neural networks have shown a great potential in image pattern recognition and segmentation for a variety of tasks. Here we demonstrate an automated analysis method for CMR images, which is based on a fully convolutional network (FCN). The network is trained and evaluated on a large-scale dataset from the UK Biobank, consisting of 4,875 subjects with 93,500 pixelwise annotated images. The performance of the method has been evaluated using a number of technical metrics, including the Dice metric, mean contour distance and Hausdorff distance, as well as clinically relevant measures, including left ventricle (LV) end-diastolic volume (LVEDV) and end-systolic volume (LVESV), LV mass (LVM); right ventricle (RV) end-diastolic volume (RVEDV) and end-systolic volume (RVESV). RESULTS: By combining FCN with a large-scale annotated dataset, the proposed automated method achieves a high performance in segmenting the LV and RV on short-axis CMR images and the left atrium (LA) and right atrium (RA) on long-axis CMR images. On a short-axis image test set of 600 subjects, it achieves an average Dice metric of 0.94 for the LV cavity, 0.88 for the LV myocardium and 0.90 for the RV cavity. The mean absolute difference between automated measurement and manual measurement is 6.1 mL for LVEDV, 5.3 mL for LVESV, 6.9 gram for LVM, 8.5 mL for RVEDV and 7.2 mL for RVESV. On long-axis image test sets, the average Dice metric is 0.93 for the LA cavity (2-chamber view), 0.95 for the LA cavity (4-chamber view) and 0.96 for the RA cavity (4-chamber view). The performance is comparable to human inter-observer variability. CONCLUSIONS: We show that an automated method achieves a performance on par with human experts in analysing CMR images and deriving clinically relevant measures. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (10.1186/s12968-018-0471-x) contains supplementary material, which is available to authorized users. BioMed Central 2018-09-14 /pmc/articles/PMC6138894/ /pubmed/30217194 http://dx.doi.org/10.1186/s12968-018-0471-x Text en © The Author(s) 2018 Open Access This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver(http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.
spellingShingle Research
Bai, Wenjia
Sinclair, Matthew
Tarroni, Giacomo
Oktay, Ozan
Rajchl, Martin
Vaillant, Ghislain
Lee, Aaron M.
Aung, Nay
Lukaschuk, Elena
Sanghvi, Mihir M.
Zemrak, Filip
Fung, Kenneth
Paiva, Jose Miguel
Carapella, Valentina
Kim, Young Jin
Suzuki, Hideaki
Kainz, Bernhard
Matthews, Paul M.
Petersen, Steffen E.
Piechnik, Stefan K.
Neubauer, Stefan
Glocker, Ben
Rueckert, Daniel
Automated cardiovascular magnetic resonance image analysis with fully convolutional networks
title Automated cardiovascular magnetic resonance image analysis with fully convolutional networks
title_full Automated cardiovascular magnetic resonance image analysis with fully convolutional networks
title_fullStr Automated cardiovascular magnetic resonance image analysis with fully convolutional networks
title_full_unstemmed Automated cardiovascular magnetic resonance image analysis with fully convolutional networks
title_short Automated cardiovascular magnetic resonance image analysis with fully convolutional networks
title_sort automated cardiovascular magnetic resonance image analysis with fully convolutional networks
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6138894/
https://www.ncbi.nlm.nih.gov/pubmed/30217194
http://dx.doi.org/10.1186/s12968-018-0471-x
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