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sEMG-Based Trunk Compensation Detection in Rehabilitation Training

Stroke patients often use trunk to compensate for impaired upper limb motor function during upper limb rehabilitation training, which results in a reduced rehabilitation training effect. Detecting trunk compensations can improve the effect of rehabilitation training. This study investigates the feas...

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Autores principales: Ma, Ke, Chen, Yan, Zhang, Xiaoya, Zheng, Haiqing, Yu, Song, Cai, Siqi, Xie, Longhan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6881307/
https://www.ncbi.nlm.nih.gov/pubmed/31824250
http://dx.doi.org/10.3389/fnins.2019.01250
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author Ma, Ke
Chen, Yan
Zhang, Xiaoya
Zheng, Haiqing
Yu, Song
Cai, Siqi
Xie, Longhan
author_facet Ma, Ke
Chen, Yan
Zhang, Xiaoya
Zheng, Haiqing
Yu, Song
Cai, Siqi
Xie, Longhan
author_sort Ma, Ke
collection PubMed
description Stroke patients often use trunk to compensate for impaired upper limb motor function during upper limb rehabilitation training, which results in a reduced rehabilitation training effect. Detecting trunk compensations can improve the effect of rehabilitation training. This study investigates the feasibility of a surface electromyography-based trunk compensation detection (sEMG-bTCD) method. Five healthy subjects and nine stroke subjects with cognitive and comprehension skills were recruited to participate in the experiments. The sEMG signals from nine superficial trunk muscles were collected during three rehabilitation training tasks (reach-forward-back, reach-side-to-side, and reach-up-to-down motions) without compensation and with three common trunk compensations [lean-forward (LF), trunk rotation (TR), and shoulder elevation (SE)]. Preprocessing like filtering, active segment detection was performed and five time domain features (root mean square, variance, mean absolute value (MAV), waveform length, and the fourth order autoregressive model coefficient) were extracted from the collected sEMG signals. Excellent TCD performance was achieved in healthy participants by using support vector machine (SVM) classifier (LF: accuracy = 94.0%, AUC = 0.97, F1 = 0.94; TR: accuracy = 95.8%, AUC = 0.99, F1 = 0.96; SE: accuracy = 100.0%, AUC = 1.00, F1 = 1.00). By using SVM classifier, TCD performance in stroke participants was also obtained (LF: accuracy = 74.8%, AUC = 0.90, F1 = 0.73; TR: accuracy = 67.1%, AUC = 0.85, F1 = 0.71; SE: accuracy = 91.3%, AUC = 0.98, F1 = 0.90). Compared with the methods based on cameras or inertial sensors, better detection performance was obtained in both healthy and stroke participants. The results demonstrated the feasibility of the sEMG-bTCD method, and it helps to prompt the stroke patients to correct their incorrect posture, thereby improving the effectiveness of rehabilitation training.
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spelling pubmed-68813072019-12-10 sEMG-Based Trunk Compensation Detection in Rehabilitation Training Ma, Ke Chen, Yan Zhang, Xiaoya Zheng, Haiqing Yu, Song Cai, Siqi Xie, Longhan Front Neurosci Neuroscience Stroke patients often use trunk to compensate for impaired upper limb motor function during upper limb rehabilitation training, which results in a reduced rehabilitation training effect. Detecting trunk compensations can improve the effect of rehabilitation training. This study investigates the feasibility of a surface electromyography-based trunk compensation detection (sEMG-bTCD) method. Five healthy subjects and nine stroke subjects with cognitive and comprehension skills were recruited to participate in the experiments. The sEMG signals from nine superficial trunk muscles were collected during three rehabilitation training tasks (reach-forward-back, reach-side-to-side, and reach-up-to-down motions) without compensation and with three common trunk compensations [lean-forward (LF), trunk rotation (TR), and shoulder elevation (SE)]. Preprocessing like filtering, active segment detection was performed and five time domain features (root mean square, variance, mean absolute value (MAV), waveform length, and the fourth order autoregressive model coefficient) were extracted from the collected sEMG signals. Excellent TCD performance was achieved in healthy participants by using support vector machine (SVM) classifier (LF: accuracy = 94.0%, AUC = 0.97, F1 = 0.94; TR: accuracy = 95.8%, AUC = 0.99, F1 = 0.96; SE: accuracy = 100.0%, AUC = 1.00, F1 = 1.00). By using SVM classifier, TCD performance in stroke participants was also obtained (LF: accuracy = 74.8%, AUC = 0.90, F1 = 0.73; TR: accuracy = 67.1%, AUC = 0.85, F1 = 0.71; SE: accuracy = 91.3%, AUC = 0.98, F1 = 0.90). Compared with the methods based on cameras or inertial sensors, better detection performance was obtained in both healthy and stroke participants. The results demonstrated the feasibility of the sEMG-bTCD method, and it helps to prompt the stroke patients to correct their incorrect posture, thereby improving the effectiveness of rehabilitation training. Frontiers Media S.A. 2019-11-21 /pmc/articles/PMC6881307/ /pubmed/31824250 http://dx.doi.org/10.3389/fnins.2019.01250 Text en Copyright © 2019 Ma, Chen, Zhang, Zheng, Yu, Cai and Xie. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neuroscience
Ma, Ke
Chen, Yan
Zhang, Xiaoya
Zheng, Haiqing
Yu, Song
Cai, Siqi
Xie, Longhan
sEMG-Based Trunk Compensation Detection in Rehabilitation Training
title sEMG-Based Trunk Compensation Detection in Rehabilitation Training
title_full sEMG-Based Trunk Compensation Detection in Rehabilitation Training
title_fullStr sEMG-Based Trunk Compensation Detection in Rehabilitation Training
title_full_unstemmed sEMG-Based Trunk Compensation Detection in Rehabilitation Training
title_short sEMG-Based Trunk Compensation Detection in Rehabilitation Training
title_sort semg-based trunk compensation detection in rehabilitation training
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6881307/
https://www.ncbi.nlm.nih.gov/pubmed/31824250
http://dx.doi.org/10.3389/fnins.2019.01250
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