Mechanomyography-based muscle fatigue detection during electrically elicited cycling in patients with spinal cord injury

Patients with spinal cord injury (SCI) benefit from muscle training with functional electrical stimulation (FES). For safety reasons and to optimize training outcome, the fatigue state of the target muscle must be monitored. Detection of muscle fatigue from mel frequency cepstral coefficient (MFCC)...

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Main Authors: Naeem, Jannatul, Hamzaid, Nur Azah, Islam, Md Anamul, Azman, Amelia Wong, Bijak, Manfred
Format: Article
Published: Springer Verlag 2019
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Online Access:http://eprints.um.edu.my/23904/
https://doi.org/10.1007/s11517-019-01949-4
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spelling my.um.eprints.239042020-02-28T02:44:16Z http://eprints.um.edu.my/23904/ Mechanomyography-based muscle fatigue detection during electrically elicited cycling in patients with spinal cord injury Naeem, Jannatul Hamzaid, Nur Azah Islam, Md Anamul Azman, Amelia Wong Bijak, Manfred R Medicine Patients with spinal cord injury (SCI) benefit from muscle training with functional electrical stimulation (FES). For safety reasons and to optimize training outcome, the fatigue state of the target muscle must be monitored. Detection of muscle fatigue from mel frequency cepstral coefficient (MFCC) feature of mechanomyographic (MMG) signal using support vector machine (SVM) classifier is a promising new approach. Five individuals with SCI performed FES cycling exercises for 30 min. MMG signals were recorded on the quadriceps muscle group (rectus femoris (RF), vastus lateralis (VL), vastus medialis (VM)) and categorized into non-fatigued and fatigued muscle contractions for the first and last 10 min of the cycling session. For each subject, a total of 1800 contraction-related MMG signals were used to train the SVM classifier and another 300 signals were used for testing. The average classification accuracy (4-fold) of non-fatigued and fatigued state was 90.7% using MFCC feature, 74.5% using root mean square (RMS), and 88.8% with combined MFCC and RMS features. Inter-subject prediction accuracy suggested training and testing data to be based on a particular subject or large collection of subjects to improve fatigue prediction capacity. [Figure not available: see fulltext.]. © 2019, International Federation for Medical and Biological Engineering. Springer Verlag 2019 Article PeerReviewed Naeem, Jannatul and Hamzaid, Nur Azah and Islam, Md Anamul and Azman, Amelia Wong and Bijak, Manfred (2019) Mechanomyography-based muscle fatigue detection during electrically elicited cycling in patients with spinal cord injury. Medical & Biological Engineering & Computing, 57 (6). pp. 1199-1211. ISSN 0140-0118 https://doi.org/10.1007/s11517-019-01949-4 doi:10.1007/s11517-019-01949-4
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic R Medicine
spellingShingle R Medicine
Naeem, Jannatul
Hamzaid, Nur Azah
Islam, Md Anamul
Azman, Amelia Wong
Bijak, Manfred
Mechanomyography-based muscle fatigue detection during electrically elicited cycling in patients with spinal cord injury
description Patients with spinal cord injury (SCI) benefit from muscle training with functional electrical stimulation (FES). For safety reasons and to optimize training outcome, the fatigue state of the target muscle must be monitored. Detection of muscle fatigue from mel frequency cepstral coefficient (MFCC) feature of mechanomyographic (MMG) signal using support vector machine (SVM) classifier is a promising new approach. Five individuals with SCI performed FES cycling exercises for 30 min. MMG signals were recorded on the quadriceps muscle group (rectus femoris (RF), vastus lateralis (VL), vastus medialis (VM)) and categorized into non-fatigued and fatigued muscle contractions for the first and last 10 min of the cycling session. For each subject, a total of 1800 contraction-related MMG signals were used to train the SVM classifier and another 300 signals were used for testing. The average classification accuracy (4-fold) of non-fatigued and fatigued state was 90.7% using MFCC feature, 74.5% using root mean square (RMS), and 88.8% with combined MFCC and RMS features. Inter-subject prediction accuracy suggested training and testing data to be based on a particular subject or large collection of subjects to improve fatigue prediction capacity. [Figure not available: see fulltext.]. © 2019, International Federation for Medical and Biological Engineering.
format Article
author Naeem, Jannatul
Hamzaid, Nur Azah
Islam, Md Anamul
Azman, Amelia Wong
Bijak, Manfred
author_facet Naeem, Jannatul
Hamzaid, Nur Azah
Islam, Md Anamul
Azman, Amelia Wong
Bijak, Manfred
author_sort Naeem, Jannatul
title Mechanomyography-based muscle fatigue detection during electrically elicited cycling in patients with spinal cord injury
title_short Mechanomyography-based muscle fatigue detection during electrically elicited cycling in patients with spinal cord injury
title_full Mechanomyography-based muscle fatigue detection during electrically elicited cycling in patients with spinal cord injury
title_fullStr Mechanomyography-based muscle fatigue detection during electrically elicited cycling in patients with spinal cord injury
title_full_unstemmed Mechanomyography-based muscle fatigue detection during electrically elicited cycling in patients with spinal cord injury
title_sort mechanomyography-based muscle fatigue detection during electrically elicited cycling in patients with spinal cord injury
publisher Springer Verlag
publishDate 2019
url http://eprints.um.edu.my/23904/
https://doi.org/10.1007/s11517-019-01949-4
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score 13.18916