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Artificial Intelligence Distinguishes Pathological Gait: The Analysis of Markerless Motion Capture Gait Data   Acquired by an iOS Application (TDPT-GT)

Distinguishing pathological gait is challenging in neurology because of the difficulty of capturing total body movement and its analysis. We aimed to obtain a convenient recording with an iPhone and establish an algorithm based on deep learning. From May 2021 to November 2022 at Yamagata University...

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Autores principales: Iseki, Chifumi, Hayasaka, Tatsuya, Yanagawa, Hyota, Komoriya, Yuta, Kondo, Toshiyuki, Hoshi, Masayuki, Fukami, Tadanori, Kobayashi, Yoshiyuki, Ueda, Shigeo, Kawamae, Kaneyuki, Ishikawa, Masatsune, Yamada, Shigeki, Aoyagi, Yukihiko, Ohta, Yasuyuki
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10346151/
https://www.ncbi.nlm.nih.gov/pubmed/37448065
http://dx.doi.org/10.3390/s23136217
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author Iseki, Chifumi
Hayasaka, Tatsuya
Yanagawa, Hyota
Komoriya, Yuta
Kondo, Toshiyuki
Hoshi, Masayuki
Fukami, Tadanori
Kobayashi, Yoshiyuki
Ueda, Shigeo
Kawamae, Kaneyuki
Ishikawa, Masatsune
Yamada, Shigeki
Aoyagi, Yukihiko
Ohta, Yasuyuki
author_facet Iseki, Chifumi
Hayasaka, Tatsuya
Yanagawa, Hyota
Komoriya, Yuta
Kondo, Toshiyuki
Hoshi, Masayuki
Fukami, Tadanori
Kobayashi, Yoshiyuki
Ueda, Shigeo
Kawamae, Kaneyuki
Ishikawa, Masatsune
Yamada, Shigeki
Aoyagi, Yukihiko
Ohta, Yasuyuki
author_sort Iseki, Chifumi
collection PubMed
description Distinguishing pathological gait is challenging in neurology because of the difficulty of capturing total body movement and its analysis. We aimed to obtain a convenient recording with an iPhone and establish an algorithm based on deep learning. From May 2021 to November 2022 at Yamagata University Hospital, Shiga University, and Takahata Town, patients with idiopathic normal pressure hydrocephalus (n = 48), Parkinson’s disease (n = 21), and other neuromuscular diseases (n = 45) comprised the pathological gait group (n = 114), and the control group consisted of 160 healthy volunteers. iPhone application TDPT-GT captured the subjects walking in a circular path of about 1 meter in diameter, a markerless motion capture system, with an iPhone camera, which generated the three-axis 30 frames per second (fps) relative coordinates of 27 body points. A light gradient boosting machine (Light GBM) with stratified k-fold cross-validation (k = 5) was applied for gait collection for about 1 min per person. The median ability model tested 200 frames of each person’s data for its distinction capability, which resulted in the area under a curve of 0.719. The pathological gait captured by the iPhone could be distinguished by artificial intelligence.
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spelling pubmed-103461512023-07-15 Artificial Intelligence Distinguishes Pathological Gait: The Analysis of Markerless Motion Capture Gait Data   Acquired by an iOS Application (TDPT-GT) Iseki, Chifumi Hayasaka, Tatsuya Yanagawa, Hyota Komoriya, Yuta Kondo, Toshiyuki Hoshi, Masayuki Fukami, Tadanori Kobayashi, Yoshiyuki Ueda, Shigeo Kawamae, Kaneyuki Ishikawa, Masatsune Yamada, Shigeki Aoyagi, Yukihiko Ohta, Yasuyuki Sensors (Basel) Article Distinguishing pathological gait is challenging in neurology because of the difficulty of capturing total body movement and its analysis. We aimed to obtain a convenient recording with an iPhone and establish an algorithm based on deep learning. From May 2021 to November 2022 at Yamagata University Hospital, Shiga University, and Takahata Town, patients with idiopathic normal pressure hydrocephalus (n = 48), Parkinson’s disease (n = 21), and other neuromuscular diseases (n = 45) comprised the pathological gait group (n = 114), and the control group consisted of 160 healthy volunteers. iPhone application TDPT-GT captured the subjects walking in a circular path of about 1 meter in diameter, a markerless motion capture system, with an iPhone camera, which generated the three-axis 30 frames per second (fps) relative coordinates of 27 body points. A light gradient boosting machine (Light GBM) with stratified k-fold cross-validation (k = 5) was applied for gait collection for about 1 min per person. The median ability model tested 200 frames of each person’s data for its distinction capability, which resulted in the area under a curve of 0.719. The pathological gait captured by the iPhone could be distinguished by artificial intelligence. MDPI 2023-07-07 /pmc/articles/PMC10346151/ /pubmed/37448065 http://dx.doi.org/10.3390/s23136217 Text en © 2023 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
Iseki, Chifumi
Hayasaka, Tatsuya
Yanagawa, Hyota
Komoriya, Yuta
Kondo, Toshiyuki
Hoshi, Masayuki
Fukami, Tadanori
Kobayashi, Yoshiyuki
Ueda, Shigeo
Kawamae, Kaneyuki
Ishikawa, Masatsune
Yamada, Shigeki
Aoyagi, Yukihiko
Ohta, Yasuyuki
Artificial Intelligence Distinguishes Pathological Gait: The Analysis of Markerless Motion Capture Gait Data   Acquired by an iOS Application (TDPT-GT)
title Artificial Intelligence Distinguishes Pathological Gait: The Analysis of Markerless Motion Capture Gait Data   Acquired by an iOS Application (TDPT-GT)
title_full Artificial Intelligence Distinguishes Pathological Gait: The Analysis of Markerless Motion Capture Gait Data   Acquired by an iOS Application (TDPT-GT)
title_fullStr Artificial Intelligence Distinguishes Pathological Gait: The Analysis of Markerless Motion Capture Gait Data   Acquired by an iOS Application (TDPT-GT)
title_full_unstemmed Artificial Intelligence Distinguishes Pathological Gait: The Analysis of Markerless Motion Capture Gait Data   Acquired by an iOS Application (TDPT-GT)
title_short Artificial Intelligence Distinguishes Pathological Gait: The Analysis of Markerless Motion Capture Gait Data   Acquired by an iOS Application (TDPT-GT)
title_sort artificial intelligence distinguishes pathological gait: the analysis of markerless motion capture gait data   acquired by an ios application (tdpt-gt)
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10346151/
https://www.ncbi.nlm.nih.gov/pubmed/37448065
http://dx.doi.org/10.3390/s23136217
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