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Improved Quantification of Myocardium Scar in Late Gadolinium Enhancement Images: Deep Learning Based Image Fusion Approach

BACKGROUND: Quantification of myocardium scarring in late gadolinium enhanced (LGE) cardiac magnetic resonance imaging can be challenging due to low scar‐to‐background contrast and low image quality. To resolve ambiguous LGE regions, experienced readers often use conventional cine sequences to accur...

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Autores principales: Fahmy, Ahmed S., Rowin, Ethan J., Chan, Raymond H., Manning, Warren J., Maron, Martin S., Nezafat, Reza
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley & Sons, Inc. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8359184/
https://www.ncbi.nlm.nih.gov/pubmed/33599043
http://dx.doi.org/10.1002/jmri.27555
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author Fahmy, Ahmed S.
Rowin, Ethan J.
Chan, Raymond H.
Manning, Warren J.
Maron, Martin S.
Nezafat, Reza
author_facet Fahmy, Ahmed S.
Rowin, Ethan J.
Chan, Raymond H.
Manning, Warren J.
Maron, Martin S.
Nezafat, Reza
author_sort Fahmy, Ahmed S.
collection PubMed
description BACKGROUND: Quantification of myocardium scarring in late gadolinium enhanced (LGE) cardiac magnetic resonance imaging can be challenging due to low scar‐to‐background contrast and low image quality. To resolve ambiguous LGE regions, experienced readers often use conventional cine sequences to accurately identify the myocardium borders. PURPOSE: To develop a deep learning model for combining LGE and cine images to improve the robustness and accuracy of LGE scar quantification. STUDY TYPE: Retrospective. POPULATION: A total of 191 hypertrophic cardiomyopathy patients: 1) 162 patients from two sites randomly split into training (50%; 81 patients), validation (25%, 40 patients), and testing (25%; 41 patients); and 2) an external testing dataset (29 patients) from a third site. FIELD STRENGTH/SEQUENCE: 1.5T, inversion‐recovery segmented gradient‐echo LGE and balanced steady‐state free‐precession cine sequences ASSESSMENT: Two convolutional neural networks (CNN) were trained for myocardium and scar segmentation, one with and one without LGE‐Cine fusion. For CNN with fusion, the input was two aligned LGE and cine images at matched cardiac phase and anatomical location. For CNN without fusion, only LGE images were used as input. Manual segmentation of the datasets was used as reference standard. STATISTICAL TESTS: Manual and CNN‐based quantifications of LGE scar burden and of myocardial volume were assessed using Pearson linear correlation coefficients (r) and Bland–Altman analysis. RESULTS: Both CNN models showed strong agreement with manual quantification of LGE scar burden and myocardium volume. CNN with LGE‐Cine fusion was more robust than CNN without LGE‐Cine fusion, allowing for successful segmentation of significantly more slices (603 [95%] vs. 562 (89%) of 635 slices; P < 0.001). Also, CNN with LGE‐Cine fusion showed better agreement with manual quantification of LGE scar burden than CNN without LGE‐Cine fusion (%Scar(LGE‐cine) = 0.82 × %Scar(manual), r = 0.84 vs. %Scar(LGE) = 0.47 × %Scar(manual), r = 0.81) and myocardium volume (Volume(LGE‐cine) = 1.03 × Volume(manual), r = 0.96 vs. Volume(LGE) = 0.91 × Volume(manual), r = 0.91). DATA CONCLUSION: CNN based LGE‐Cine fusion can improve the robustness and accuracy of automated scar quantification. LEVEL OF EVIDENCE: 3 TECHNICAL EFFICACY: 1
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spelling pubmed-83591842021-08-17 Improved Quantification of Myocardium Scar in Late Gadolinium Enhancement Images: Deep Learning Based Image Fusion Approach Fahmy, Ahmed S. Rowin, Ethan J. Chan, Raymond H. Manning, Warren J. Maron, Martin S. Nezafat, Reza J Magn Reson Imaging Original Research BACKGROUND: Quantification of myocardium scarring in late gadolinium enhanced (LGE) cardiac magnetic resonance imaging can be challenging due to low scar‐to‐background contrast and low image quality. To resolve ambiguous LGE regions, experienced readers often use conventional cine sequences to accurately identify the myocardium borders. PURPOSE: To develop a deep learning model for combining LGE and cine images to improve the robustness and accuracy of LGE scar quantification. STUDY TYPE: Retrospective. POPULATION: A total of 191 hypertrophic cardiomyopathy patients: 1) 162 patients from two sites randomly split into training (50%; 81 patients), validation (25%, 40 patients), and testing (25%; 41 patients); and 2) an external testing dataset (29 patients) from a third site. FIELD STRENGTH/SEQUENCE: 1.5T, inversion‐recovery segmented gradient‐echo LGE and balanced steady‐state free‐precession cine sequences ASSESSMENT: Two convolutional neural networks (CNN) were trained for myocardium and scar segmentation, one with and one without LGE‐Cine fusion. For CNN with fusion, the input was two aligned LGE and cine images at matched cardiac phase and anatomical location. For CNN without fusion, only LGE images were used as input. Manual segmentation of the datasets was used as reference standard. STATISTICAL TESTS: Manual and CNN‐based quantifications of LGE scar burden and of myocardial volume were assessed using Pearson linear correlation coefficients (r) and Bland–Altman analysis. RESULTS: Both CNN models showed strong agreement with manual quantification of LGE scar burden and myocardium volume. CNN with LGE‐Cine fusion was more robust than CNN without LGE‐Cine fusion, allowing for successful segmentation of significantly more slices (603 [95%] vs. 562 (89%) of 635 slices; P < 0.001). Also, CNN with LGE‐Cine fusion showed better agreement with manual quantification of LGE scar burden than CNN without LGE‐Cine fusion (%Scar(LGE‐cine) = 0.82 × %Scar(manual), r = 0.84 vs. %Scar(LGE) = 0.47 × %Scar(manual), r = 0.81) and myocardium volume (Volume(LGE‐cine) = 1.03 × Volume(manual), r = 0.96 vs. Volume(LGE) = 0.91 × Volume(manual), r = 0.91). DATA CONCLUSION: CNN based LGE‐Cine fusion can improve the robustness and accuracy of automated scar quantification. LEVEL OF EVIDENCE: 3 TECHNICAL EFFICACY: 1 John Wiley & Sons, Inc. 2021-02-17 2021-07 /pmc/articles/PMC8359184/ /pubmed/33599043 http://dx.doi.org/10.1002/jmri.27555 Text en © 2021 The Authors. Journal of Magnetic Resonance Imaging published by Wiley Periodicals LLC. on behalf of International Society for Magnetic Resonance in Medicine. https://creativecommons.org/licenses/by-nc/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc/4.0/ (https://creativecommons.org/licenses/by-nc/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited and is not used for commercial purposes.
spellingShingle Original Research
Fahmy, Ahmed S.
Rowin, Ethan J.
Chan, Raymond H.
Manning, Warren J.
Maron, Martin S.
Nezafat, Reza
Improved Quantification of Myocardium Scar in Late Gadolinium Enhancement Images: Deep Learning Based Image Fusion Approach
title Improved Quantification of Myocardium Scar in Late Gadolinium Enhancement Images: Deep Learning Based Image Fusion Approach
title_full Improved Quantification of Myocardium Scar in Late Gadolinium Enhancement Images: Deep Learning Based Image Fusion Approach
title_fullStr Improved Quantification of Myocardium Scar in Late Gadolinium Enhancement Images: Deep Learning Based Image Fusion Approach
title_full_unstemmed Improved Quantification of Myocardium Scar in Late Gadolinium Enhancement Images: Deep Learning Based Image Fusion Approach
title_short Improved Quantification of Myocardium Scar in Late Gadolinium Enhancement Images: Deep Learning Based Image Fusion Approach
title_sort improved quantification of myocardium scar in late gadolinium enhancement images: deep learning based image fusion approach
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8359184/
https://www.ncbi.nlm.nih.gov/pubmed/33599043
http://dx.doi.org/10.1002/jmri.27555
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