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Diagnosis of Cubital Tunnel Syndrome Using Deep Learning on Ultrasonographic Images

Although electromyography is the routine diagnostic method for cubital tunnel syndrome (CuTS), imaging diagnosis by measuring cross-sectional area (CSA) with ultrasonography (US) has also been attempted in recent years. In this study, deep learning (DL), an artificial intelligence (AI) method, was u...

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Autores principales: Shinohara, Issei, Inui, Atsuyuki, Mifune, Yutaka, Nishimoto, Hanako, Yamaura, Kohei, Mukohara, Shintaro, Yoshikawa, Tomoya, Kato, Tatsuo, Furukawa, Takahiro, Hoshino, Yuichi, Matsushita, Takehiko, Kuroda, Ryosuke
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8947597/
https://www.ncbi.nlm.nih.gov/pubmed/35328185
http://dx.doi.org/10.3390/diagnostics12030632
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author Shinohara, Issei
Inui, Atsuyuki
Mifune, Yutaka
Nishimoto, Hanako
Yamaura, Kohei
Mukohara, Shintaro
Yoshikawa, Tomoya
Kato, Tatsuo
Furukawa, Takahiro
Hoshino, Yuichi
Matsushita, Takehiko
Kuroda, Ryosuke
author_facet Shinohara, Issei
Inui, Atsuyuki
Mifune, Yutaka
Nishimoto, Hanako
Yamaura, Kohei
Mukohara, Shintaro
Yoshikawa, Tomoya
Kato, Tatsuo
Furukawa, Takahiro
Hoshino, Yuichi
Matsushita, Takehiko
Kuroda, Ryosuke
author_sort Shinohara, Issei
collection PubMed
description Although electromyography is the routine diagnostic method for cubital tunnel syndrome (CuTS), imaging diagnosis by measuring cross-sectional area (CSA) with ultrasonography (US) has also been attempted in recent years. In this study, deep learning (DL), an artificial intelligence (AI) method, was used on US images, and its diagnostic performance for detecting CuTS was investigated. Elbow images of 30 healthy volunteers and 30 patients diagnosed with CuTS were used. Three thousand US images were prepared per each group to visualize the short axis of the ulnar nerve. Transfer learning was performed on 5000 randomly selected training images using three pre-trained models, and the remaining images were used for testing. The model was evaluated by analyzing a confusion matrix and the area under the receiver operating characteristic curve. Occlusion sensitivity and locally interpretable model-agnostic explanations were used to visualize the features deemed important by the AI. The highest score had an accuracy of 0.90, a precision of 0.86, a recall of 1.00, and an F-measure of 0.92. Visualization results show that the DL models focused on the epineurium of the ulnar nerve and the surrounding soft tissue. The proposed technique enables the accurate prediction of CuTS without the need to measure CSA.
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spelling pubmed-89475972022-03-25 Diagnosis of Cubital Tunnel Syndrome Using Deep Learning on Ultrasonographic Images Shinohara, Issei Inui, Atsuyuki Mifune, Yutaka Nishimoto, Hanako Yamaura, Kohei Mukohara, Shintaro Yoshikawa, Tomoya Kato, Tatsuo Furukawa, Takahiro Hoshino, Yuichi Matsushita, Takehiko Kuroda, Ryosuke Diagnostics (Basel) Article Although electromyography is the routine diagnostic method for cubital tunnel syndrome (CuTS), imaging diagnosis by measuring cross-sectional area (CSA) with ultrasonography (US) has also been attempted in recent years. In this study, deep learning (DL), an artificial intelligence (AI) method, was used on US images, and its diagnostic performance for detecting CuTS was investigated. Elbow images of 30 healthy volunteers and 30 patients diagnosed with CuTS were used. Three thousand US images were prepared per each group to visualize the short axis of the ulnar nerve. Transfer learning was performed on 5000 randomly selected training images using three pre-trained models, and the remaining images were used for testing. The model was evaluated by analyzing a confusion matrix and the area under the receiver operating characteristic curve. Occlusion sensitivity and locally interpretable model-agnostic explanations were used to visualize the features deemed important by the AI. The highest score had an accuracy of 0.90, a precision of 0.86, a recall of 1.00, and an F-measure of 0.92. Visualization results show that the DL models focused on the epineurium of the ulnar nerve and the surrounding soft tissue. The proposed technique enables the accurate prediction of CuTS without the need to measure CSA. MDPI 2022-03-04 /pmc/articles/PMC8947597/ /pubmed/35328185 http://dx.doi.org/10.3390/diagnostics12030632 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Shinohara, Issei
Inui, Atsuyuki
Mifune, Yutaka
Nishimoto, Hanako
Yamaura, Kohei
Mukohara, Shintaro
Yoshikawa, Tomoya
Kato, Tatsuo
Furukawa, Takahiro
Hoshino, Yuichi
Matsushita, Takehiko
Kuroda, Ryosuke
Diagnosis of Cubital Tunnel Syndrome Using Deep Learning on Ultrasonographic Images
title Diagnosis of Cubital Tunnel Syndrome Using Deep Learning on Ultrasonographic Images
title_full Diagnosis of Cubital Tunnel Syndrome Using Deep Learning on Ultrasonographic Images
title_fullStr Diagnosis of Cubital Tunnel Syndrome Using Deep Learning on Ultrasonographic Images
title_full_unstemmed Diagnosis of Cubital Tunnel Syndrome Using Deep Learning on Ultrasonographic Images
title_short Diagnosis of Cubital Tunnel Syndrome Using Deep Learning on Ultrasonographic Images
title_sort diagnosis of cubital tunnel syndrome using deep learning on ultrasonographic images
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8947597/
https://www.ncbi.nlm.nih.gov/pubmed/35328185
http://dx.doi.org/10.3390/diagnostics12030632
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