Optical Myography-Based Sensing Methodology of Application of Random Loads to Muscles during Hand-Gripping Training

Hand-gripping training is important for improving the fundamental functions of human physical activity. Bernstein’s idea of “repetition without repetition” suggests that motor control function should be trained under changing states. The randomness level of load should be visualized for self-adminis...

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出版年:Sensors
主要な著者: Tamon Miyake, Tomohito Minakuchi, Suguru Sato, Chihiro Okubo, Dai Yanagihara, Emi Tamaki
フォーマット: 論文
言語:英語
出版事項: MDPI AG 2024-02-01
主題:
オンライン・アクセス:https://www.mdpi.com/1424-8220/24/4/1108
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author Tamon Miyake
Tomohito Minakuchi
Suguru Sato
Chihiro Okubo
Dai Yanagihara
Emi Tamaki
author_facet Tamon Miyake
Tomohito Minakuchi
Suguru Sato
Chihiro Okubo
Dai Yanagihara
Emi Tamaki
author_sort Tamon Miyake
collection DOAJ
container_title Sensors
description Hand-gripping training is important for improving the fundamental functions of human physical activity. Bernstein’s idea of “repetition without repetition” suggests that motor control function should be trained under changing states. The randomness level of load should be visualized for self-administered screening when repeating various training tasks under changing states. This study aims to develop a sensing methodology of random loads applied to both the agonist and antagonist skeletal muscles when performing physical tasks. We assumed that the time-variability and periodicity of the applied load appear in the time-series feature of muscle deformation data. In the experiment, 14 participants conducted the gripping tasks with a gripper, ball, balloon, Palm clenching, and paper. Crumpling pieces of paper (paper exercise) involves randomness because the resistance force of the paper changes depending on the shape and layers of the paper. Optical myography during gripping tasks was measured, and time-series features were analyzed. As a result, our system could detect the random movement of muscles during training.
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spelling doaj-art-ecca1fdd71224e7aa74c8f52abd300002025-08-19T23:48:39ZengMDPI AGSensors1424-82202024-02-01244110810.3390/s24041108Optical Myography-Based Sensing Methodology of Application of Random Loads to Muscles during Hand-Gripping TrainingTamon Miyake0Tomohito Minakuchi1Suguru Sato2Chihiro Okubo3Dai Yanagihara4Emi Tamaki5H2L Inc., Tokyo 106-0032, JapanH2L Inc., Tokyo 106-0032, JapanH2L Inc., Tokyo 106-0032, JapanH2L Inc., Tokyo 106-0032, JapanDepartment of Life Sciences, Graduate School of Arts and Sciences, The University of Tokyo, Tokyo 153-8902, JapanH2L Inc., Tokyo 106-0032, JapanHand-gripping training is important for improving the fundamental functions of human physical activity. Bernstein’s idea of “repetition without repetition” suggests that motor control function should be trained under changing states. The randomness level of load should be visualized for self-administered screening when repeating various training tasks under changing states. This study aims to develop a sensing methodology of random loads applied to both the agonist and antagonist skeletal muscles when performing physical tasks. We assumed that the time-variability and periodicity of the applied load appear in the time-series feature of muscle deformation data. In the experiment, 14 participants conducted the gripping tasks with a gripper, ball, balloon, Palm clenching, and paper. Crumpling pieces of paper (paper exercise) involves randomness because the resistance force of the paper changes depending on the shape and layers of the paper. Optical myography during gripping tasks was measured, and time-series features were analyzed. As a result, our system could detect the random movement of muscles during training.https://www.mdpi.com/1424-8220/24/4/1108optical myographymuscle deformationhand gripping
spellingShingle Tamon Miyake
Tomohito Minakuchi
Suguru Sato
Chihiro Okubo
Dai Yanagihara
Emi Tamaki
Optical Myography-Based Sensing Methodology of Application of Random Loads to Muscles during Hand-Gripping Training
optical myography
muscle deformation
hand gripping
title Optical Myography-Based Sensing Methodology of Application of Random Loads to Muscles during Hand-Gripping Training
title_full Optical Myography-Based Sensing Methodology of Application of Random Loads to Muscles during Hand-Gripping Training
title_fullStr Optical Myography-Based Sensing Methodology of Application of Random Loads to Muscles during Hand-Gripping Training
title_full_unstemmed Optical Myography-Based Sensing Methodology of Application of Random Loads to Muscles during Hand-Gripping Training
title_short Optical Myography-Based Sensing Methodology of Application of Random Loads to Muscles during Hand-Gripping Training
title_sort optical myography based sensing methodology of application of random loads to muscles during hand gripping training
topic optical myography
muscle deformation
hand gripping
url https://www.mdpi.com/1424-8220/24/4/1108
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