Cargando…
Machine learning derived segmentation of phase velocity encoded cardiovascular magnetic resonance for fully automated aortic flow quantification
BACKGROUND: Phase contrast (PC) cardiovascular magnetic resonance (CMR) is widely employed for flow quantification, but analysis typically requires time consuming manual segmentation which can require human correction. Advances in machine learning have markedly improved automated processing, but hav...
Autores principales: | , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
BioMed Central
2019
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6322266/ https://www.ncbi.nlm.nih.gov/pubmed/30612574 http://dx.doi.org/10.1186/s12968-018-0509-0 |
_version_ | 1783385585956683776 |
---|---|
author | Bratt, Alex Kim, Jiwon Pollie, Meridith Beecy, Ashley N. Tehrani, Nathan H. Codella, Noel Perez-Johnston, Rocio Palumbo, Maria Chiara Alakbarli, Javid Colizza, Wayne Drexler, Ian R. Azevedo, Clerio F. Kim, Raymond J. Devereux, Richard B. Weinsaft, Jonathan W. |
author_facet | Bratt, Alex Kim, Jiwon Pollie, Meridith Beecy, Ashley N. Tehrani, Nathan H. Codella, Noel Perez-Johnston, Rocio Palumbo, Maria Chiara Alakbarli, Javid Colizza, Wayne Drexler, Ian R. Azevedo, Clerio F. Kim, Raymond J. Devereux, Richard B. Weinsaft, Jonathan W. |
author_sort | Bratt, Alex |
collection | PubMed |
description | BACKGROUND: Phase contrast (PC) cardiovascular magnetic resonance (CMR) is widely employed for flow quantification, but analysis typically requires time consuming manual segmentation which can require human correction. Advances in machine learning have markedly improved automated processing, but have yet to be applied to PC-CMR. This study tested a novel machine learning model for fully automated analysis of PC-CMR aortic flow. METHODS: A machine learning model was designed to track aortic valve borders based on neural network approaches. The model was trained in a derivation cohort encompassing 150 patients who underwent clinical PC-CMR then compared to manual and commercially-available automated segmentation in a prospective validation cohort. Further validation testing was performed in an external cohort acquired from a different site/CMR vendor. RESULTS: Among 190 coronary artery disease patients prospectively undergoing CMR on commercial scanners (84% 1.5T, 16% 3T), machine learning segmentation was uniformly successful, requiring no human intervention: Segmentation time was < 0.01 min/case (1.2 min for entire dataset); manual segmentation required 3.96 ± 0.36 min/case (12.5 h for entire dataset). Correlations between machine learning and manual segmentation-derived flow approached unity (r = 0.99, p < 0.001). Machine learning yielded smaller absolute differences with manual segmentation than did commercial automation (1.85 ± 1.80 vs. 3.33 ± 3.18 mL, p < 0.01): Nearly all (98%) of cases differed by ≤5 mL between machine learning and manual methods. Among patients without advanced mitral regurgitation, machine learning correlated well (r = 0.63, p < 0.001) and yielded small differences with cine-CMR stroke volume (∆ 1.3 ± 17.7 mL, p = 0.36). Among advanced mitral regurgitation patients, machine learning yielded lower stroke volume than did volumetric cine-CMR (∆ 12.6 ± 20.9 mL, p = 0.005), further supporting validity of this method. Among the external validation cohort (n = 80) acquired using a different CMR vendor, the algorithm yielded equivalently small differences (∆ 1.39 ± 1.77 mL, p = 0.4) and high correlations (r = 0.99, p < 0.001) with manual segmentation, including similar results in 20 patients with bicuspid or stenotic aortic valve pathology (∆ 1.71 ± 2.25 mL, p = 0.25). CONCLUSION: Fully automated machine learning PC-CMR segmentation performs robustly for aortic flow quantification - yielding rapid segmentation, small differences with manual segmentation, and identification of differential forward/left ventricular volumetric stroke volume in context of concomitant mitral regurgitation. Findings support use of machine learning for analysis of large scale CMR datasets. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (10.1186/s12968-018-0509-0) contains supplementary material, which is available to authorized users. |
format | Online Article Text |
id | pubmed-6322266 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2019 |
publisher | BioMed Central |
record_format | MEDLINE/PubMed |
spelling | pubmed-63222662019-01-09 Machine learning derived segmentation of phase velocity encoded cardiovascular magnetic resonance for fully automated aortic flow quantification Bratt, Alex Kim, Jiwon Pollie, Meridith Beecy, Ashley N. Tehrani, Nathan H. Codella, Noel Perez-Johnston, Rocio Palumbo, Maria Chiara Alakbarli, Javid Colizza, Wayne Drexler, Ian R. Azevedo, Clerio F. Kim, Raymond J. Devereux, Richard B. Weinsaft, Jonathan W. J Cardiovasc Magn Reson Research BACKGROUND: Phase contrast (PC) cardiovascular magnetic resonance (CMR) is widely employed for flow quantification, but analysis typically requires time consuming manual segmentation which can require human correction. Advances in machine learning have markedly improved automated processing, but have yet to be applied to PC-CMR. This study tested a novel machine learning model for fully automated analysis of PC-CMR aortic flow. METHODS: A machine learning model was designed to track aortic valve borders based on neural network approaches. The model was trained in a derivation cohort encompassing 150 patients who underwent clinical PC-CMR then compared to manual and commercially-available automated segmentation in a prospective validation cohort. Further validation testing was performed in an external cohort acquired from a different site/CMR vendor. RESULTS: Among 190 coronary artery disease patients prospectively undergoing CMR on commercial scanners (84% 1.5T, 16% 3T), machine learning segmentation was uniformly successful, requiring no human intervention: Segmentation time was < 0.01 min/case (1.2 min for entire dataset); manual segmentation required 3.96 ± 0.36 min/case (12.5 h for entire dataset). Correlations between machine learning and manual segmentation-derived flow approached unity (r = 0.99, p < 0.001). Machine learning yielded smaller absolute differences with manual segmentation than did commercial automation (1.85 ± 1.80 vs. 3.33 ± 3.18 mL, p < 0.01): Nearly all (98%) of cases differed by ≤5 mL between machine learning and manual methods. Among patients without advanced mitral regurgitation, machine learning correlated well (r = 0.63, p < 0.001) and yielded small differences with cine-CMR stroke volume (∆ 1.3 ± 17.7 mL, p = 0.36). Among advanced mitral regurgitation patients, machine learning yielded lower stroke volume than did volumetric cine-CMR (∆ 12.6 ± 20.9 mL, p = 0.005), further supporting validity of this method. Among the external validation cohort (n = 80) acquired using a different CMR vendor, the algorithm yielded equivalently small differences (∆ 1.39 ± 1.77 mL, p = 0.4) and high correlations (r = 0.99, p < 0.001) with manual segmentation, including similar results in 20 patients with bicuspid or stenotic aortic valve pathology (∆ 1.71 ± 2.25 mL, p = 0.25). CONCLUSION: Fully automated machine learning PC-CMR segmentation performs robustly for aortic flow quantification - yielding rapid segmentation, small differences with manual segmentation, and identification of differential forward/left ventricular volumetric stroke volume in context of concomitant mitral regurgitation. Findings support use of machine learning for analysis of large scale CMR datasets. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (10.1186/s12968-018-0509-0) contains supplementary material, which is available to authorized users. BioMed Central 2019-01-07 /pmc/articles/PMC6322266/ /pubmed/30612574 http://dx.doi.org/10.1186/s12968-018-0509-0 Text en © The Author(s). 2019 Open AccessThis 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 Bratt, Alex Kim, Jiwon Pollie, Meridith Beecy, Ashley N. Tehrani, Nathan H. Codella, Noel Perez-Johnston, Rocio Palumbo, Maria Chiara Alakbarli, Javid Colizza, Wayne Drexler, Ian R. Azevedo, Clerio F. Kim, Raymond J. Devereux, Richard B. Weinsaft, Jonathan W. Machine learning derived segmentation of phase velocity encoded cardiovascular magnetic resonance for fully automated aortic flow quantification |
title | Machine learning derived segmentation of phase velocity encoded cardiovascular magnetic resonance for fully automated aortic flow quantification |
title_full | Machine learning derived segmentation of phase velocity encoded cardiovascular magnetic resonance for fully automated aortic flow quantification |
title_fullStr | Machine learning derived segmentation of phase velocity encoded cardiovascular magnetic resonance for fully automated aortic flow quantification |
title_full_unstemmed | Machine learning derived segmentation of phase velocity encoded cardiovascular magnetic resonance for fully automated aortic flow quantification |
title_short | Machine learning derived segmentation of phase velocity encoded cardiovascular magnetic resonance for fully automated aortic flow quantification |
title_sort | machine learning derived segmentation of phase velocity encoded cardiovascular magnetic resonance for fully automated aortic flow quantification |
topic | Research |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6322266/ https://www.ncbi.nlm.nih.gov/pubmed/30612574 http://dx.doi.org/10.1186/s12968-018-0509-0 |
work_keys_str_mv | AT brattalex machinelearningderivedsegmentationofphasevelocityencodedcardiovascularmagneticresonanceforfullyautomatedaorticflowquantification AT kimjiwon machinelearningderivedsegmentationofphasevelocityencodedcardiovascularmagneticresonanceforfullyautomatedaorticflowquantification AT polliemeridith machinelearningderivedsegmentationofphasevelocityencodedcardiovascularmagneticresonanceforfullyautomatedaorticflowquantification AT beecyashleyn machinelearningderivedsegmentationofphasevelocityencodedcardiovascularmagneticresonanceforfullyautomatedaorticflowquantification AT tehraninathanh machinelearningderivedsegmentationofphasevelocityencodedcardiovascularmagneticresonanceforfullyautomatedaorticflowquantification AT codellanoel machinelearningderivedsegmentationofphasevelocityencodedcardiovascularmagneticresonanceforfullyautomatedaorticflowquantification AT perezjohnstonrocio machinelearningderivedsegmentationofphasevelocityencodedcardiovascularmagneticresonanceforfullyautomatedaorticflowquantification AT palumbomariachiara machinelearningderivedsegmentationofphasevelocityencodedcardiovascularmagneticresonanceforfullyautomatedaorticflowquantification AT alakbarlijavid machinelearningderivedsegmentationofphasevelocityencodedcardiovascularmagneticresonanceforfullyautomatedaorticflowquantification AT colizzawayne machinelearningderivedsegmentationofphasevelocityencodedcardiovascularmagneticresonanceforfullyautomatedaorticflowquantification AT drexlerianr machinelearningderivedsegmentationofphasevelocityencodedcardiovascularmagneticresonanceforfullyautomatedaorticflowquantification AT azevedocleriof machinelearningderivedsegmentationofphasevelocityencodedcardiovascularmagneticresonanceforfullyautomatedaorticflowquantification AT kimraymondj machinelearningderivedsegmentationofphasevelocityencodedcardiovascularmagneticresonanceforfullyautomatedaorticflowquantification AT devereuxrichardb machinelearningderivedsegmentationofphasevelocityencodedcardiovascularmagneticresonanceforfullyautomatedaorticflowquantification AT weinsaftjonathanw machinelearningderivedsegmentationofphasevelocityencodedcardiovascularmagneticresonanceforfullyautomatedaorticflowquantification |