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Applying Deep Learning to Accelerated Clinical Brain Magnetic Resonance Imaging for Multiple Sclerosis

Background: Magnetic resonance (MR) scans are routine clinical procedures for monitoring people with multiple sclerosis (PwMS). Patient discomfort, timely scheduling, and financial burden motivate the need to accelerate MR scan time. We examined the clinical application of a deep learning (DL) model...

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Autores principales: Mani, Ashika, Santini, Tales, Puppala, Radhika, Dahl, Megan, Venkatesh, Shruthi, Walker, Elizabeth, DeHaven, Megan, Isitan, Cigdem, Ibrahim, Tamer S., Wang, Long, Zhang, Tao, Gong, Enhao, Barrios-Martinez, Jessica, Yeh, Fang-Cheng, Krafty, Robert, Mettenburg, Joseph M., Xia, Zongqi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8504490/
https://www.ncbi.nlm.nih.gov/pubmed/34646227
http://dx.doi.org/10.3389/fneur.2021.685276
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author Mani, Ashika
Santini, Tales
Puppala, Radhika
Dahl, Megan
Venkatesh, Shruthi
Walker, Elizabeth
DeHaven, Megan
Isitan, Cigdem
Ibrahim, Tamer S.
Wang, Long
Zhang, Tao
Gong, Enhao
Barrios-Martinez, Jessica
Yeh, Fang-Cheng
Krafty, Robert
Mettenburg, Joseph M.
Xia, Zongqi
author_facet Mani, Ashika
Santini, Tales
Puppala, Radhika
Dahl, Megan
Venkatesh, Shruthi
Walker, Elizabeth
DeHaven, Megan
Isitan, Cigdem
Ibrahim, Tamer S.
Wang, Long
Zhang, Tao
Gong, Enhao
Barrios-Martinez, Jessica
Yeh, Fang-Cheng
Krafty, Robert
Mettenburg, Joseph M.
Xia, Zongqi
author_sort Mani, Ashika
collection PubMed
description Background: Magnetic resonance (MR) scans are routine clinical procedures for monitoring people with multiple sclerosis (PwMS). Patient discomfort, timely scheduling, and financial burden motivate the need to accelerate MR scan time. We examined the clinical application of a deep learning (DL) model in restoring the image quality of accelerated routine clinical brain MR scans for PwMS. Methods: We acquired fast 3D T1w BRAVO and fast 3D T2w FLAIR MRI sequences (half the phase encodes and half the number of slices) in parallel to conventional parameters. Using a subset of the scans, we trained a DL model to generate images from fast scans with quality similar to the conventional scans and then applied the model to the remaining scans. We calculated clinically relevant T1w volumetrics (normalized whole brain, thalamic, gray matter, and white matter volume) for all scans and T2 lesion volume in a sub-analysis. We performed paired t-tests comparing conventional, fast, and fast with DL for these volumetrics, and fit repeated measures mixed-effects models to test for differences in correlations between volumetrics and clinically relevant patient-reported outcomes (PRO). Results: We found statistically significant but small differences between conventional and fast scans with DL for all T1w volumetrics. There was no difference in the extent to which the key T1w volumetrics correlated with clinically relevant PROs of MS symptom burden and neurological disability. Conclusion: A deep learning model that improves the image quality of the accelerated routine clinical brain MR scans has the potential to inform clinically relevant outcomes in MS.
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spelling pubmed-85044902021-10-12 Applying Deep Learning to Accelerated Clinical Brain Magnetic Resonance Imaging for Multiple Sclerosis Mani, Ashika Santini, Tales Puppala, Radhika Dahl, Megan Venkatesh, Shruthi Walker, Elizabeth DeHaven, Megan Isitan, Cigdem Ibrahim, Tamer S. Wang, Long Zhang, Tao Gong, Enhao Barrios-Martinez, Jessica Yeh, Fang-Cheng Krafty, Robert Mettenburg, Joseph M. Xia, Zongqi Front Neurol Neurology Background: Magnetic resonance (MR) scans are routine clinical procedures for monitoring people with multiple sclerosis (PwMS). Patient discomfort, timely scheduling, and financial burden motivate the need to accelerate MR scan time. We examined the clinical application of a deep learning (DL) model in restoring the image quality of accelerated routine clinical brain MR scans for PwMS. Methods: We acquired fast 3D T1w BRAVO and fast 3D T2w FLAIR MRI sequences (half the phase encodes and half the number of slices) in parallel to conventional parameters. Using a subset of the scans, we trained a DL model to generate images from fast scans with quality similar to the conventional scans and then applied the model to the remaining scans. We calculated clinically relevant T1w volumetrics (normalized whole brain, thalamic, gray matter, and white matter volume) for all scans and T2 lesion volume in a sub-analysis. We performed paired t-tests comparing conventional, fast, and fast with DL for these volumetrics, and fit repeated measures mixed-effects models to test for differences in correlations between volumetrics and clinically relevant patient-reported outcomes (PRO). Results: We found statistically significant but small differences between conventional and fast scans with DL for all T1w volumetrics. There was no difference in the extent to which the key T1w volumetrics correlated with clinically relevant PROs of MS symptom burden and neurological disability. Conclusion: A deep learning model that improves the image quality of the accelerated routine clinical brain MR scans has the potential to inform clinically relevant outcomes in MS. Frontiers Media S.A. 2021-09-27 /pmc/articles/PMC8504490/ /pubmed/34646227 http://dx.doi.org/10.3389/fneur.2021.685276 Text en Copyright © 2021 Mani, Santini, Puppala, Dahl, Venkatesh, Walker, DeHaven, Isitan, Ibrahim, Wang, Zhang, Gong, Barrios-Martinez, Yeh, Krafty, Mettenburg and Xia. 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 Neurology
Mani, Ashika
Santini, Tales
Puppala, Radhika
Dahl, Megan
Venkatesh, Shruthi
Walker, Elizabeth
DeHaven, Megan
Isitan, Cigdem
Ibrahim, Tamer S.
Wang, Long
Zhang, Tao
Gong, Enhao
Barrios-Martinez, Jessica
Yeh, Fang-Cheng
Krafty, Robert
Mettenburg, Joseph M.
Xia, Zongqi
Applying Deep Learning to Accelerated Clinical Brain Magnetic Resonance Imaging for Multiple Sclerosis
title Applying Deep Learning to Accelerated Clinical Brain Magnetic Resonance Imaging for Multiple Sclerosis
title_full Applying Deep Learning to Accelerated Clinical Brain Magnetic Resonance Imaging for Multiple Sclerosis
title_fullStr Applying Deep Learning to Accelerated Clinical Brain Magnetic Resonance Imaging for Multiple Sclerosis
title_full_unstemmed Applying Deep Learning to Accelerated Clinical Brain Magnetic Resonance Imaging for Multiple Sclerosis
title_short Applying Deep Learning to Accelerated Clinical Brain Magnetic Resonance Imaging for Multiple Sclerosis
title_sort applying deep learning to accelerated clinical brain magnetic resonance imaging for multiple sclerosis
topic Neurology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8504490/
https://www.ncbi.nlm.nih.gov/pubmed/34646227
http://dx.doi.org/10.3389/fneur.2021.685276
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