From classical to deep learning: review on cartilage and bone segmentation techniques in knee osteoarthritis research

Knee osteoarthritis is a major diarthrodial joint disorder with profound global socioeconomic impact. Diagnostic imaging using magnetic resonance image can produce morphometric biomarkers to investigate the epidemiology of knee osteoarthritis in clinical trials, which is critical to attain early det...

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Main Authors: Gan, Hong Seng, Ramlee, Muhammad Hanif, Abdul Wahab, Asnida, Lee, Yeng Seng, Shimizu, Akinobu
Format: Article
Published: Springer Science and Business Media B.V. 2020
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Online Access:http://eprints.utm.my/id/eprint/90433/
http://dx.doi.org/10.1007/s10462-020-09924-4
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spelling my.utm.904332021-04-30T14:41:35Z http://eprints.utm.my/id/eprint/90433/ From classical to deep learning: review on cartilage and bone segmentation techniques in knee osteoarthritis research Gan, Hong Seng Ramlee, Muhammad Hanif Abdul Wahab, Asnida Lee, Yeng Seng Shimizu, Akinobu QM Human anatomy Knee osteoarthritis is a major diarthrodial joint disorder with profound global socioeconomic impact. Diagnostic imaging using magnetic resonance image can produce morphometric biomarkers to investigate the epidemiology of knee osteoarthritis in clinical trials, which is critical to attain early detection and develop effective regenerative treatment/therapy. With tremendous increase in image data size, manual segmentation as the standard practice becomes largely unsuitable. This review aims to provide an in-depth insight about a broad collection of classical and deep learning segmentation techniques used in knee osteoarthritis research. Specifically, this is the first review that covers both bone and cartilage segmentation models in recognition that knee osteoarthritis is a “whole joint” disease, as well as highlights on diagnostic values of deep learning in emerging knee osteoarthritis research. Besides, we have collected useful deep learning reviews to serve as source of reference to ease future development of deep learning models in this field. Lastly, we highlight on the diagnostic value of deep learning as key future computer-aided diagnosis applications to conclude this review. Springer Science and Business Media B.V. 2020 Article PeerReviewed Gan, Hong Seng and Ramlee, Muhammad Hanif and Abdul Wahab, Asnida and Lee, Yeng Seng and Shimizu, Akinobu (2020) From classical to deep learning: review on cartilage and bone segmentation techniques in knee osteoarthritis research. Artificial Intelligence Review . p. 50. ISSN 0269-2821 http://dx.doi.org/10.1007/s10462-020-09924-4
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic QM Human anatomy
spellingShingle QM Human anatomy
Gan, Hong Seng
Ramlee, Muhammad Hanif
Abdul Wahab, Asnida
Lee, Yeng Seng
Shimizu, Akinobu
From classical to deep learning: review on cartilage and bone segmentation techniques in knee osteoarthritis research
description Knee osteoarthritis is a major diarthrodial joint disorder with profound global socioeconomic impact. Diagnostic imaging using magnetic resonance image can produce morphometric biomarkers to investigate the epidemiology of knee osteoarthritis in clinical trials, which is critical to attain early detection and develop effective regenerative treatment/therapy. With tremendous increase in image data size, manual segmentation as the standard practice becomes largely unsuitable. This review aims to provide an in-depth insight about a broad collection of classical and deep learning segmentation techniques used in knee osteoarthritis research. Specifically, this is the first review that covers both bone and cartilage segmentation models in recognition that knee osteoarthritis is a “whole joint” disease, as well as highlights on diagnostic values of deep learning in emerging knee osteoarthritis research. Besides, we have collected useful deep learning reviews to serve as source of reference to ease future development of deep learning models in this field. Lastly, we highlight on the diagnostic value of deep learning as key future computer-aided diagnosis applications to conclude this review.
format Article
author Gan, Hong Seng
Ramlee, Muhammad Hanif
Abdul Wahab, Asnida
Lee, Yeng Seng
Shimizu, Akinobu
author_facet Gan, Hong Seng
Ramlee, Muhammad Hanif
Abdul Wahab, Asnida
Lee, Yeng Seng
Shimizu, Akinobu
author_sort Gan, Hong Seng
title From classical to deep learning: review on cartilage and bone segmentation techniques in knee osteoarthritis research
title_short From classical to deep learning: review on cartilage and bone segmentation techniques in knee osteoarthritis research
title_full From classical to deep learning: review on cartilage and bone segmentation techniques in knee osteoarthritis research
title_fullStr From classical to deep learning: review on cartilage and bone segmentation techniques in knee osteoarthritis research
title_full_unstemmed From classical to deep learning: review on cartilage and bone segmentation techniques in knee osteoarthritis research
title_sort from classical to deep learning: review on cartilage and bone segmentation techniques in knee osteoarthritis research
publisher Springer Science and Business Media B.V.
publishDate 2020
url http://eprints.utm.my/id/eprint/90433/
http://dx.doi.org/10.1007/s10462-020-09924-4
_version_ 1698696935400013824
score 13.159267