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Deep Learning for Multi-Tissue Segmentation and Fully Automatic Personalized Biomechanical Models from BACPAC Clinical Lumbar Spine MRI

STUDY DESIGN: In vivo retrospective study of fully automatic quantitative imaging feature extraction from clinically acquired lumbar spine magnetic resonance imaging (MRI). OBJECTIVE: To demonstrate the feasibility of substituting automatic for human-demarcated segmentation of major anatomic structu...

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Autores principales: Hess, Madeline, Allaire, Brett, Gao, Kenneth T, Tibrewala, Radhika, Inamdar, Gaurav, Bharadwaj, Upasana, Chin, Cynthia, Pedoia, Valentina, Bouxsein, Mary, Anderson, Dennis, Majumdar, Sharmila
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10403305/
https://www.ncbi.nlm.nih.gov/pubmed/36315069
http://dx.doi.org/10.1093/pm/pnac142
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author Hess, Madeline
Allaire, Brett
Gao, Kenneth T
Tibrewala, Radhika
Inamdar, Gaurav
Bharadwaj, Upasana
Chin, Cynthia
Pedoia, Valentina
Bouxsein, Mary
Anderson, Dennis
Majumdar, Sharmila
author_facet Hess, Madeline
Allaire, Brett
Gao, Kenneth T
Tibrewala, Radhika
Inamdar, Gaurav
Bharadwaj, Upasana
Chin, Cynthia
Pedoia, Valentina
Bouxsein, Mary
Anderson, Dennis
Majumdar, Sharmila
author_sort Hess, Madeline
collection PubMed
description STUDY DESIGN: In vivo retrospective study of fully automatic quantitative imaging feature extraction from clinically acquired lumbar spine magnetic resonance imaging (MRI). OBJECTIVE: To demonstrate the feasibility of substituting automatic for human-demarcated segmentation of major anatomic structures in clinical lumbar spine MRI to generate quantitative image-based features and biomechanical models. SETTING: Previous studies have demonstrated the viability of automatic segmentation applied to medical images; however, the feasibility of these networks to segment clinically acquired images has not yet been demonstrated, as they largely rely on specialized sequences or strict quality of imaging data to achieve good performance. METHODS: Convolutional neural networks were trained to demarcate vertebral bodies, intervertebral disc, and paraspinous muscles from sagittal and axial T1-weighted MRIs. Intervertebral disc height, muscle cross-sectional area, and subject-specific musculoskeletal models of tissue loading in the lumbar spine were then computed from these segmentations and compared against those computed from human-demarcated masks. RESULTS: Segmentation masks, as well as the morphological metrics and biomechanical models computed from those masks, were highly similar between human- and computer-generated methods. Segmentations were similar, with Dice similarity coefficients of 0.77 or greater across networks, and morphological metrics and biomechanical models were similar, with Pearson R correlation coefficients of 0.69 or greater when significant. CONCLUSIONS: This study demonstrates the feasibility of substituting computer-generated for human-generated segmentations of major anatomic structures in lumbar spine MRI to compute quantitative image-based morphological metrics and subject-specific musculoskeletal models of tissue loading quickly, efficiently, and at scale without interrupting routine clinical care.
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spelling pubmed-104033052023-08-05 Deep Learning for Multi-Tissue Segmentation and Fully Automatic Personalized Biomechanical Models from BACPAC Clinical Lumbar Spine MRI Hess, Madeline Allaire, Brett Gao, Kenneth T Tibrewala, Radhika Inamdar, Gaurav Bharadwaj, Upasana Chin, Cynthia Pedoia, Valentina Bouxsein, Mary Anderson, Dennis Majumdar, Sharmila Pain Med Original Research Article STUDY DESIGN: In vivo retrospective study of fully automatic quantitative imaging feature extraction from clinically acquired lumbar spine magnetic resonance imaging (MRI). OBJECTIVE: To demonstrate the feasibility of substituting automatic for human-demarcated segmentation of major anatomic structures in clinical lumbar spine MRI to generate quantitative image-based features and biomechanical models. SETTING: Previous studies have demonstrated the viability of automatic segmentation applied to medical images; however, the feasibility of these networks to segment clinically acquired images has not yet been demonstrated, as they largely rely on specialized sequences or strict quality of imaging data to achieve good performance. METHODS: Convolutional neural networks were trained to demarcate vertebral bodies, intervertebral disc, and paraspinous muscles from sagittal and axial T1-weighted MRIs. Intervertebral disc height, muscle cross-sectional area, and subject-specific musculoskeletal models of tissue loading in the lumbar spine were then computed from these segmentations and compared against those computed from human-demarcated masks. RESULTS: Segmentation masks, as well as the morphological metrics and biomechanical models computed from those masks, were highly similar between human- and computer-generated methods. Segmentations were similar, with Dice similarity coefficients of 0.77 or greater across networks, and morphological metrics and biomechanical models were similar, with Pearson R correlation coefficients of 0.69 or greater when significant. CONCLUSIONS: This study demonstrates the feasibility of substituting computer-generated for human-generated segmentations of major anatomic structures in lumbar spine MRI to compute quantitative image-based morphological metrics and subject-specific musculoskeletal models of tissue loading quickly, efficiently, and at scale without interrupting routine clinical care. Oxford University Press 2022-10-31 /pmc/articles/PMC10403305/ /pubmed/36315069 http://dx.doi.org/10.1093/pm/pnac142 Text en © The Author(s) 2022. Published by Oxford University Press on behalf of the American Academy of Pain Medicine. https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Research Article
Hess, Madeline
Allaire, Brett
Gao, Kenneth T
Tibrewala, Radhika
Inamdar, Gaurav
Bharadwaj, Upasana
Chin, Cynthia
Pedoia, Valentina
Bouxsein, Mary
Anderson, Dennis
Majumdar, Sharmila
Deep Learning for Multi-Tissue Segmentation and Fully Automatic Personalized Biomechanical Models from BACPAC Clinical Lumbar Spine MRI
title Deep Learning for Multi-Tissue Segmentation and Fully Automatic Personalized Biomechanical Models from BACPAC Clinical Lumbar Spine MRI
title_full Deep Learning for Multi-Tissue Segmentation and Fully Automatic Personalized Biomechanical Models from BACPAC Clinical Lumbar Spine MRI
title_fullStr Deep Learning for Multi-Tissue Segmentation and Fully Automatic Personalized Biomechanical Models from BACPAC Clinical Lumbar Spine MRI
title_full_unstemmed Deep Learning for Multi-Tissue Segmentation and Fully Automatic Personalized Biomechanical Models from BACPAC Clinical Lumbar Spine MRI
title_short Deep Learning for Multi-Tissue Segmentation and Fully Automatic Personalized Biomechanical Models from BACPAC Clinical Lumbar Spine MRI
title_sort deep learning for multi-tissue segmentation and fully automatic personalized biomechanical models from bacpac clinical lumbar spine mri
topic Original Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10403305/
https://www.ncbi.nlm.nih.gov/pubmed/36315069
http://dx.doi.org/10.1093/pm/pnac142
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