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Deep-learning-based biomarker of spinal cartilage endplate health using ultra-short echo time magnetic resonance imaging

BACKGROUND: T2* relaxation times in the spinal cartilage endplate (CEP) measured using ultra-short echo time magnetic resonance imaging (UTE MRI) reflect aspects of biochemical composition that influence the CEP’s permeability to nutrients. Deficits in CEP composition measured using T2* biomarkers f...

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Autores principales: Bonnheim, Noah B., Wang, Linshanshan, Lazar, Ann A., Chachad, Ravi, Zhou, Jiamin, Guo, Xiaojie, O’Neill, Conor, Castellanos, Joel, Du, Jiang, Jang, Hyungseok, Krug, Roland, Fields, Aaron J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: AME Publishing Company 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10167428/
https://www.ncbi.nlm.nih.gov/pubmed/37179932
http://dx.doi.org/10.21037/qims-22-729
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author Bonnheim, Noah B.
Wang, Linshanshan
Lazar, Ann A.
Chachad, Ravi
Zhou, Jiamin
Guo, Xiaojie
O’Neill, Conor
Castellanos, Joel
Du, Jiang
Jang, Hyungseok
Krug, Roland
Fields, Aaron J.
author_facet Bonnheim, Noah B.
Wang, Linshanshan
Lazar, Ann A.
Chachad, Ravi
Zhou, Jiamin
Guo, Xiaojie
O’Neill, Conor
Castellanos, Joel
Du, Jiang
Jang, Hyungseok
Krug, Roland
Fields, Aaron J.
author_sort Bonnheim, Noah B.
collection PubMed
description BACKGROUND: T2* relaxation times in the spinal cartilage endplate (CEP) measured using ultra-short echo time magnetic resonance imaging (UTE MRI) reflect aspects of biochemical composition that influence the CEP’s permeability to nutrients. Deficits in CEP composition measured using T2* biomarkers from UTE MRI are associated with more severe intervertebral disc degeneration in patients with chronic low back pain (cLBP). The goal of this study was to develop an objective, accurate, and efficient deep-learning-based method for calculating biomarkers of CEP health using UTE images. METHODS: Multi-echo UTE MRI of the lumbar spine was acquired from a prospectively enrolled cross-sectional and consecutive cohort of 83 subjects spanning a wide range of ages and cLBP-related conditions. CEPs from the L4-S1 levels were manually segmented on 6,972 UTE images and used to train neural networks utilizing the u-net architecture. CEP segmentations and mean CEP T2* values derived from manually- and model-generated segmentations were compared using Dice scores, sensitivity, specificity, Bland-Altman, and receiver-operator characteristic (ROC) analysis. Signal-to-noise (SNR) and contrast-to-noise (CNR) ratios were calculated and related to model performance. RESULTS: Compared with manual CEP segmentations, model-generated segmentations achieved sensitives of 0.80–0.91, specificities of 0.99, Dice scores of 0.77–0.85, area under the receiver-operating characteristic curve values of 0.99, and precision-recall (PR) AUC values of 0.56–0.77, depending on spinal level and sagittal image position. Mean CEP T2* values and principal CEP angles derived from the model-predicted segmentations had low bias in an unseen test dataset (T2* bias =0.33±2.37 ms, angle bias =0.36±2.65°). To simulate a hypothetical clinical scenario, the predicted segmentations were used to stratify CEPs into high, medium, and low T2* groups. Group predictions had diagnostic sensitivities of 0.77–0.86 and specificities of 0.86–0.95. Model performance was positively associated with image SNR and CNR. CONCLUSIONS: The trained deep learning models enable accurate, automated CEP segmentations and T2* biomarker computations that are statistically similar to those from manual segmentations. These models address limitations with inefficiency and subjectivity associated with manual methods. Such techniques could be used to elucidate the role of CEP composition in disc degeneration etiology and guide emerging therapies for cLBP.
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spelling pubmed-101674282023-05-10 Deep-learning-based biomarker of spinal cartilage endplate health using ultra-short echo time magnetic resonance imaging Bonnheim, Noah B. Wang, Linshanshan Lazar, Ann A. Chachad, Ravi Zhou, Jiamin Guo, Xiaojie O’Neill, Conor Castellanos, Joel Du, Jiang Jang, Hyungseok Krug, Roland Fields, Aaron J. Quant Imaging Med Surg Original Article BACKGROUND: T2* relaxation times in the spinal cartilage endplate (CEP) measured using ultra-short echo time magnetic resonance imaging (UTE MRI) reflect aspects of biochemical composition that influence the CEP’s permeability to nutrients. Deficits in CEP composition measured using T2* biomarkers from UTE MRI are associated with more severe intervertebral disc degeneration in patients with chronic low back pain (cLBP). The goal of this study was to develop an objective, accurate, and efficient deep-learning-based method for calculating biomarkers of CEP health using UTE images. METHODS: Multi-echo UTE MRI of the lumbar spine was acquired from a prospectively enrolled cross-sectional and consecutive cohort of 83 subjects spanning a wide range of ages and cLBP-related conditions. CEPs from the L4-S1 levels were manually segmented on 6,972 UTE images and used to train neural networks utilizing the u-net architecture. CEP segmentations and mean CEP T2* values derived from manually- and model-generated segmentations were compared using Dice scores, sensitivity, specificity, Bland-Altman, and receiver-operator characteristic (ROC) analysis. Signal-to-noise (SNR) and contrast-to-noise (CNR) ratios were calculated and related to model performance. RESULTS: Compared with manual CEP segmentations, model-generated segmentations achieved sensitives of 0.80–0.91, specificities of 0.99, Dice scores of 0.77–0.85, area under the receiver-operating characteristic curve values of 0.99, and precision-recall (PR) AUC values of 0.56–0.77, depending on spinal level and sagittal image position. Mean CEP T2* values and principal CEP angles derived from the model-predicted segmentations had low bias in an unseen test dataset (T2* bias =0.33±2.37 ms, angle bias =0.36±2.65°). To simulate a hypothetical clinical scenario, the predicted segmentations were used to stratify CEPs into high, medium, and low T2* groups. Group predictions had diagnostic sensitivities of 0.77–0.86 and specificities of 0.86–0.95. Model performance was positively associated with image SNR and CNR. CONCLUSIONS: The trained deep learning models enable accurate, automated CEP segmentations and T2* biomarker computations that are statistically similar to those from manual segmentations. These models address limitations with inefficiency and subjectivity associated with manual methods. Such techniques could be used to elucidate the role of CEP composition in disc degeneration etiology and guide emerging therapies for cLBP. AME Publishing Company 2023-03-10 2023-05-01 /pmc/articles/PMC10167428/ /pubmed/37179932 http://dx.doi.org/10.21037/qims-22-729 Text en 2023 Quantitative Imaging in Medicine and Surgery. All rights reserved. https://creativecommons.org/licenses/by-nc-nd/4.0/Open Access Statement: This is an Open Access article distributed in accordance with the Creative Commons Attribution-NonCommercial-NoDerivs 4.0 International License (CC BY-NC-ND 4.0), which permits the non-commercial replication and distribution of the article with the strict proviso that no changes or edits are made and the original work is properly cited (including links to both the formal publication through the relevant DOI and the license). See: https://creativecommons.org/licenses/by-nc-nd/4.0 (https://creativecommons.org/licenses/by-nc-nd/4.0/) .
spellingShingle Original Article
Bonnheim, Noah B.
Wang, Linshanshan
Lazar, Ann A.
Chachad, Ravi
Zhou, Jiamin
Guo, Xiaojie
O’Neill, Conor
Castellanos, Joel
Du, Jiang
Jang, Hyungseok
Krug, Roland
Fields, Aaron J.
Deep-learning-based biomarker of spinal cartilage endplate health using ultra-short echo time magnetic resonance imaging
title Deep-learning-based biomarker of spinal cartilage endplate health using ultra-short echo time magnetic resonance imaging
title_full Deep-learning-based biomarker of spinal cartilage endplate health using ultra-short echo time magnetic resonance imaging
title_fullStr Deep-learning-based biomarker of spinal cartilage endplate health using ultra-short echo time magnetic resonance imaging
title_full_unstemmed Deep-learning-based biomarker of spinal cartilage endplate health using ultra-short echo time magnetic resonance imaging
title_short Deep-learning-based biomarker of spinal cartilage endplate health using ultra-short echo time magnetic resonance imaging
title_sort deep-learning-based biomarker of spinal cartilage endplate health using ultra-short echo time magnetic resonance imaging
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10167428/
https://www.ncbi.nlm.nih.gov/pubmed/37179932
http://dx.doi.org/10.21037/qims-22-729
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