Quantitative 3D imaging parameters improve prediction of hip osteoarthritis outcome

Abstract: Osteoarthritis is an increasingly important health problem for which the main treatment remains joint replacement. Therapy developments have been hampered by a lack of biomarkers that can reliably predict disease, while 2D radiographs interpreted by human observers are still the gold stand...

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Main Authors: Turmezei, T. D., Treece, G. M., Gee, A. H., Sigurdsson, S., Jonsson, H., Aspelund, T., Gudnason, V., Poole, K. E. S.
Format: Article in Journal/Newspaper
Language:English
Published: Nature Publishing Group UK 2021
Subjects:
Online Access:https://doi.org/10.17863/CAM.65553
https://www.repository.cam.ac.uk/handle/1810/318439
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spelling ftunivcam:oai:www.repository.cam.ac.uk:1810/318439 2023-07-30T04:06:33+02:00 Quantitative 3D imaging parameters improve prediction of hip osteoarthritis outcome Turmezei, T. D. Treece, G. M. Gee, A. H. Sigurdsson, S. Jonsson, H. Aspelund, T. Gudnason, V. Poole, K. E. S. 2021-03-05T16:25:18Z application/zip application/pdf text/xml https://doi.org/10.17863/CAM.65553 https://www.repository.cam.ac.uk/handle/1810/318439 en eng Nature Publishing Group UK Scientific Reports doi:10.17863/CAM.65553 https://www.repository.cam.ac.uk/handle/1810/318439 Attribution 4.0 International (CC BY 4.0) https://creativecommons.org/licenses/by/4.0/ Article /692/53/2423 /692/4023/1670/407 /639/166/985 /639/705/531 /123 /141 /139 Article 2021 ftunivcam https://doi.org/10.17863/CAM.65553 2023-07-10T21:50:38Z Abstract: Osteoarthritis is an increasingly important health problem for which the main treatment remains joint replacement. Therapy developments have been hampered by a lack of biomarkers that can reliably predict disease, while 2D radiographs interpreted by human observers are still the gold standard for clinical trial imaging assessment. We propose a 3D approach using computed tomography—a fast, readily available clinical technique—that can be applied in the assessment of osteoarthritis using a new quantitative 3D analysis technique called joint space mapping (JSM). We demonstrate the application of JSM at the hip in 263 healthy older adults from the AGES-Reykjavík cohort, examining relationships between 3D joint space width, 3D joint shape, and future joint replacement. Using JSM, statistical shape modelling, and statistical parametric mapping, we show an 18% improvement in prediction of joint replacement using 3D metrics combined with radiographic Kellgren & Lawrence grade (AUC 0.86) over the existing 2D FDA-approved gold standard of minimum 2D joint space width (AUC 0.73). We also show that assessment of joint asymmetry can reveal significant differences between individuals destined for joint replacement versus controls at regions of the joint that are not captured by radiographs. This technique is immediately implementable with standard imaging technologies. Article in Journal/Newspaper Reykjavík Reykjavík Apollo - University of Cambridge Repository Reykjavík
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Turmezei, T. D.
Treece, G. M.
Gee, A. H.
Sigurdsson, S.
Jonsson, H.
Aspelund, T.
Gudnason, V.
Poole, K. E. S.
Quantitative 3D imaging parameters improve prediction of hip osteoarthritis outcome
topic_facet Article
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/692/4023/1670/407
/639/166/985
/639/705/531
/123
/141
/139
description Abstract: Osteoarthritis is an increasingly important health problem for which the main treatment remains joint replacement. Therapy developments have been hampered by a lack of biomarkers that can reliably predict disease, while 2D radiographs interpreted by human observers are still the gold standard for clinical trial imaging assessment. We propose a 3D approach using computed tomography—a fast, readily available clinical technique—that can be applied in the assessment of osteoarthritis using a new quantitative 3D analysis technique called joint space mapping (JSM). We demonstrate the application of JSM at the hip in 263 healthy older adults from the AGES-Reykjavík cohort, examining relationships between 3D joint space width, 3D joint shape, and future joint replacement. Using JSM, statistical shape modelling, and statistical parametric mapping, we show an 18% improvement in prediction of joint replacement using 3D metrics combined with radiographic Kellgren & Lawrence grade (AUC 0.86) over the existing 2D FDA-approved gold standard of minimum 2D joint space width (AUC 0.73). We also show that assessment of joint asymmetry can reveal significant differences between individuals destined for joint replacement versus controls at regions of the joint that are not captured by radiographs. This technique is immediately implementable with standard imaging technologies.
format Article in Journal/Newspaper
author Turmezei, T. D.
Treece, G. M.
Gee, A. H.
Sigurdsson, S.
Jonsson, H.
Aspelund, T.
Gudnason, V.
Poole, K. E. S.
author_facet Turmezei, T. D.
Treece, G. M.
Gee, A. H.
Sigurdsson, S.
Jonsson, H.
Aspelund, T.
Gudnason, V.
Poole, K. E. S.
author_sort Turmezei, T. D.
title Quantitative 3D imaging parameters improve prediction of hip osteoarthritis outcome
title_short Quantitative 3D imaging parameters improve prediction of hip osteoarthritis outcome
title_full Quantitative 3D imaging parameters improve prediction of hip osteoarthritis outcome
title_fullStr Quantitative 3D imaging parameters improve prediction of hip osteoarthritis outcome
title_full_unstemmed Quantitative 3D imaging parameters improve prediction of hip osteoarthritis outcome
title_sort quantitative 3d imaging parameters improve prediction of hip osteoarthritis outcome
publisher Nature Publishing Group UK
publishDate 2021
url https://doi.org/10.17863/CAM.65553
https://www.repository.cam.ac.uk/handle/1810/318439
geographic Reykjavík
geographic_facet Reykjavík
genre Reykjavík
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op_relation doi:10.17863/CAM.65553
https://www.repository.cam.ac.uk/handle/1810/318439
op_rights Attribution 4.0 International (CC BY 4.0)
https://creativecommons.org/licenses/by/4.0/
op_doi https://doi.org/10.17863/CAM.65553
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