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Deep‐Learning‐Based Preprocessing for Quantitative Myocardial Perfusion MRI

BACKGROUND: Quantitative myocardial perfusion cardiac MRI can provide a fast and robust assessment of myocardial perfusion status for the noninvasive diagnosis of myocardial ischemia while being more objective than visual assessment. However, it currently has limited use in clinical practice due to...

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Autores principales: Scannell, Cian M., Veta, Mitko, Villa, Adriana D.M., Sammut, Eva C., Lee, Jack, Breeuwer, Marcel, Chiribiri, Amedeo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley & Sons, Inc. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7317373/
https://www.ncbi.nlm.nih.gov/pubmed/31710769
http://dx.doi.org/10.1002/jmri.26983
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author Scannell, Cian M.
Veta, Mitko
Villa, Adriana D.M.
Sammut, Eva C.
Lee, Jack
Breeuwer, Marcel
Chiribiri, Amedeo
author_facet Scannell, Cian M.
Veta, Mitko
Villa, Adriana D.M.
Sammut, Eva C.
Lee, Jack
Breeuwer, Marcel
Chiribiri, Amedeo
author_sort Scannell, Cian M.
collection PubMed
description BACKGROUND: Quantitative myocardial perfusion cardiac MRI can provide a fast and robust assessment of myocardial perfusion status for the noninvasive diagnosis of myocardial ischemia while being more objective than visual assessment. However, it currently has limited use in clinical practice due to the challenging postprocessing required, particularly the segmentation. PURPOSE: To evaluate the efficacy of an automated deep learning (DL) pipeline for image processing prior to quantitative analysis. STUDY TYPE: Retrospective. POPULATION: In all, 175 (350 MRI scans; 1050 image series) clinical patients under both rest and stress conditions (135/10/30 training/validation/test). FIELD STRENGTH/SEQUENCE: 3.0T/2D multislice saturation recovery T(1)‐weighted gradient echo sequence. ASSESSMENT: Accuracy was assessed, as compared to the manual operator, through the mean square error of the distance between landmarks and the Dice similarity coefficient of the segmentation and bounding box detection. Quantitative perfusion maps obtained using the automated DL‐based processing were compared to the results obtained with the manually processed images. STATISTICAL TESTS: Bland–Altman plots and intraclass correlation coefficient (ICC) were used to assess the myocardial blood flow (MBF) obtained using the automated DL pipeline, as compared to values obtained by a manual operator. RESULTS: The mean (SD) error in the detection of the time of peak signal enhancement in the left ventricle was 1.49 (1.4) timeframes. The mean (SD) Dice similarity coefficients for the bounding box and myocardial segmentation were 0.93 (0.03) and 0.80 (0.06), respectively. The mean (SD) error in the RV insertion point was 2.8 (1.8) mm. The Bland–Altman plots showed a bias of 2.6% of the mean MBF between the automated and manually processed MBF values on a per‐myocardial segment basis. The ICC was 0.89, 95% confidence interval = [0.87, 0.90]. DATA CONCLUSION: We showed high accuracy, compared to manual processing, for the DL‐based processing of myocardial perfusion data leading to quantitative values that are similar to those achieved with manual processing. Level of Evidence: 3 Technical Efficacy Stage: 1 J. Magn. Reson. Imaging 2020;51:1689–1696.
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spelling pubmed-73173732020-06-30 Deep‐Learning‐Based Preprocessing for Quantitative Myocardial Perfusion MRI Scannell, Cian M. Veta, Mitko Villa, Adriana D.M. Sammut, Eva C. Lee, Jack Breeuwer, Marcel Chiribiri, Amedeo J Magn Reson Imaging Original Research BACKGROUND: Quantitative myocardial perfusion cardiac MRI can provide a fast and robust assessment of myocardial perfusion status for the noninvasive diagnosis of myocardial ischemia while being more objective than visual assessment. However, it currently has limited use in clinical practice due to the challenging postprocessing required, particularly the segmentation. PURPOSE: To evaluate the efficacy of an automated deep learning (DL) pipeline for image processing prior to quantitative analysis. STUDY TYPE: Retrospective. POPULATION: In all, 175 (350 MRI scans; 1050 image series) clinical patients under both rest and stress conditions (135/10/30 training/validation/test). FIELD STRENGTH/SEQUENCE: 3.0T/2D multislice saturation recovery T(1)‐weighted gradient echo sequence. ASSESSMENT: Accuracy was assessed, as compared to the manual operator, through the mean square error of the distance between landmarks and the Dice similarity coefficient of the segmentation and bounding box detection. Quantitative perfusion maps obtained using the automated DL‐based processing were compared to the results obtained with the manually processed images. STATISTICAL TESTS: Bland–Altman plots and intraclass correlation coefficient (ICC) were used to assess the myocardial blood flow (MBF) obtained using the automated DL pipeline, as compared to values obtained by a manual operator. RESULTS: The mean (SD) error in the detection of the time of peak signal enhancement in the left ventricle was 1.49 (1.4) timeframes. The mean (SD) Dice similarity coefficients for the bounding box and myocardial segmentation were 0.93 (0.03) and 0.80 (0.06), respectively. The mean (SD) error in the RV insertion point was 2.8 (1.8) mm. The Bland–Altman plots showed a bias of 2.6% of the mean MBF between the automated and manually processed MBF values on a per‐myocardial segment basis. The ICC was 0.89, 95% confidence interval = [0.87, 0.90]. DATA CONCLUSION: We showed high accuracy, compared to manual processing, for the DL‐based processing of myocardial perfusion data leading to quantitative values that are similar to those achieved with manual processing. Level of Evidence: 3 Technical Efficacy Stage: 1 J. Magn. Reson. Imaging 2020;51:1689–1696. John Wiley & Sons, Inc. 2019-11-11 2020-06 /pmc/articles/PMC7317373/ /pubmed/31710769 http://dx.doi.org/10.1002/jmri.26983 Text en © 2019 The Authors. Journal of Magnetic Resonance Imaging published by Wiley Periodicals, Inc. on behalf of International Society for Magnetic Resonance in Medicine. This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Research
Scannell, Cian M.
Veta, Mitko
Villa, Adriana D.M.
Sammut, Eva C.
Lee, Jack
Breeuwer, Marcel
Chiribiri, Amedeo
Deep‐Learning‐Based Preprocessing for Quantitative Myocardial Perfusion MRI
title Deep‐Learning‐Based Preprocessing for Quantitative Myocardial Perfusion MRI
title_full Deep‐Learning‐Based Preprocessing for Quantitative Myocardial Perfusion MRI
title_fullStr Deep‐Learning‐Based Preprocessing for Quantitative Myocardial Perfusion MRI
title_full_unstemmed Deep‐Learning‐Based Preprocessing for Quantitative Myocardial Perfusion MRI
title_short Deep‐Learning‐Based Preprocessing for Quantitative Myocardial Perfusion MRI
title_sort deep‐learning‐based preprocessing for quantitative myocardial perfusion mri
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7317373/
https://www.ncbi.nlm.nih.gov/pubmed/31710769
http://dx.doi.org/10.1002/jmri.26983
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