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DeepStrain: A Deep Learning Workflow for the Automated Characterization of Cardiac Mechanics

Myocardial strain analysis from cinematic magnetic resonance imaging (cine-MRI) data provides a more thorough characterization of cardiac mechanics than volumetric parameters such as left-ventricular ejection fraction, but sources of variation including segmentation and motion estimation have limite...

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Autores principales: Morales, Manuel A., van den Boomen, Maaike, Nguyen, Christopher, Kalpathy-Cramer, Jayashree, Rosen, Bruce R., Stultz, Collin M., Izquierdo-Garcia, David, Catana, Ciprian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8446607/
https://www.ncbi.nlm.nih.gov/pubmed/34540923
http://dx.doi.org/10.3389/fcvm.2021.730316
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author Morales, Manuel A.
van den Boomen, Maaike
Nguyen, Christopher
Kalpathy-Cramer, Jayashree
Rosen, Bruce R.
Stultz, Collin M.
Izquierdo-Garcia, David
Catana, Ciprian
author_facet Morales, Manuel A.
van den Boomen, Maaike
Nguyen, Christopher
Kalpathy-Cramer, Jayashree
Rosen, Bruce R.
Stultz, Collin M.
Izquierdo-Garcia, David
Catana, Ciprian
author_sort Morales, Manuel A.
collection PubMed
description Myocardial strain analysis from cinematic magnetic resonance imaging (cine-MRI) data provides a more thorough characterization of cardiac mechanics than volumetric parameters such as left-ventricular ejection fraction, but sources of variation including segmentation and motion estimation have limited its wider clinical use. We designed and validated a fast, fully-automatic deep learning (DL) workflow to generate both volumetric parameters and strain measures from cine-MRI data consisting of segmentation and motion estimation convolutional neural networks. The final motion network design, loss function, and associated hyperparameters are the result of a thorough ad hoc implementation that we carefully planned specific for strain quantification, tested, and compared to other potential alternatives. The optimal configuration was trained using healthy and cardiovascular disease (CVD) subjects (n = 150). DL-based volumetric parameters were correlated (>0.98) and without significant bias relative to parameters derived from manual segmentations in 50 healthy and CVD test subjects. Compared to landmarks manually-tracked on tagging-MRI images from 15 healthy subjects, landmark deformation using DL-based motion estimates from paired cine-MRI data resulted in an end-point-error of 2.9 ± 1.5 mm. Measures of end-systolic global strain from these cine-MRI data showed no significant biases relative to a tagging-MRI reference method. On 10 healthy subjects, intraclass correlation coefficient for intra-scanner repeatability was good to excellent (>0.75) for all global measures and most polar map segments. In conclusion, we developed and evaluated the first end-to-end learning-based workflow for automated strain analysis from cine-MRI data to quantitatively characterize cardiac mechanics of healthy and CVD subjects.
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spelling pubmed-84466072021-09-18 DeepStrain: A Deep Learning Workflow for the Automated Characterization of Cardiac Mechanics Morales, Manuel A. van den Boomen, Maaike Nguyen, Christopher Kalpathy-Cramer, Jayashree Rosen, Bruce R. Stultz, Collin M. Izquierdo-Garcia, David Catana, Ciprian Front Cardiovasc Med Cardiovascular Medicine Myocardial strain analysis from cinematic magnetic resonance imaging (cine-MRI) data provides a more thorough characterization of cardiac mechanics than volumetric parameters such as left-ventricular ejection fraction, but sources of variation including segmentation and motion estimation have limited its wider clinical use. We designed and validated a fast, fully-automatic deep learning (DL) workflow to generate both volumetric parameters and strain measures from cine-MRI data consisting of segmentation and motion estimation convolutional neural networks. The final motion network design, loss function, and associated hyperparameters are the result of a thorough ad hoc implementation that we carefully planned specific for strain quantification, tested, and compared to other potential alternatives. The optimal configuration was trained using healthy and cardiovascular disease (CVD) subjects (n = 150). DL-based volumetric parameters were correlated (>0.98) and without significant bias relative to parameters derived from manual segmentations in 50 healthy and CVD test subjects. Compared to landmarks manually-tracked on tagging-MRI images from 15 healthy subjects, landmark deformation using DL-based motion estimates from paired cine-MRI data resulted in an end-point-error of 2.9 ± 1.5 mm. Measures of end-systolic global strain from these cine-MRI data showed no significant biases relative to a tagging-MRI reference method. On 10 healthy subjects, intraclass correlation coefficient for intra-scanner repeatability was good to excellent (>0.75) for all global measures and most polar map segments. In conclusion, we developed and evaluated the first end-to-end learning-based workflow for automated strain analysis from cine-MRI data to quantitatively characterize cardiac mechanics of healthy and CVD subjects. Frontiers Media S.A. 2021-09-03 /pmc/articles/PMC8446607/ /pubmed/34540923 http://dx.doi.org/10.3389/fcvm.2021.730316 Text en Copyright © 2021 Morales, van den Boomen, Nguyen, Kalpathy-Cramer, Rosen, Stultz, Izquierdo-Garcia and Catana. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Cardiovascular Medicine
Morales, Manuel A.
van den Boomen, Maaike
Nguyen, Christopher
Kalpathy-Cramer, Jayashree
Rosen, Bruce R.
Stultz, Collin M.
Izquierdo-Garcia, David
Catana, Ciprian
DeepStrain: A Deep Learning Workflow for the Automated Characterization of Cardiac Mechanics
title DeepStrain: A Deep Learning Workflow for the Automated Characterization of Cardiac Mechanics
title_full DeepStrain: A Deep Learning Workflow for the Automated Characterization of Cardiac Mechanics
title_fullStr DeepStrain: A Deep Learning Workflow for the Automated Characterization of Cardiac Mechanics
title_full_unstemmed DeepStrain: A Deep Learning Workflow for the Automated Characterization of Cardiac Mechanics
title_short DeepStrain: A Deep Learning Workflow for the Automated Characterization of Cardiac Mechanics
title_sort deepstrain: a deep learning workflow for the automated characterization of cardiac mechanics
topic Cardiovascular Medicine
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8446607/
https://www.ncbi.nlm.nih.gov/pubmed/34540923
http://dx.doi.org/10.3389/fcvm.2021.730316
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