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Muscle Mass Measurement Using Machine Learning Algorithms with Electrical Impedance Myography

Sarcopenia is a wild chronic disease among elderly people. Although it does not entail a life-threatening risk, it will increase the adverse risk due to the associated unsteady gait, fall, fractures, and functional disability. The import factors in diagnosing sarcopenia are muscle mass and strength....

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Autores principales: Cheng, Kuo-Sheng, Su, Ya-Ling, Kuo, Li-Chieh, Yang, Tai-Hua, Lee, Chia-Lin, Chen, Wenxi, Liu, Shing-Hong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9031580/
https://www.ncbi.nlm.nih.gov/pubmed/35459072
http://dx.doi.org/10.3390/s22083087
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author Cheng, Kuo-Sheng
Su, Ya-Ling
Kuo, Li-Chieh
Yang, Tai-Hua
Lee, Chia-Lin
Chen, Wenxi
Liu, Shing-Hong
author_facet Cheng, Kuo-Sheng
Su, Ya-Ling
Kuo, Li-Chieh
Yang, Tai-Hua
Lee, Chia-Lin
Chen, Wenxi
Liu, Shing-Hong
author_sort Cheng, Kuo-Sheng
collection PubMed
description Sarcopenia is a wild chronic disease among elderly people. Although it does not entail a life-threatening risk, it will increase the adverse risk due to the associated unsteady gait, fall, fractures, and functional disability. The import factors in diagnosing sarcopenia are muscle mass and strength. The examination of muscle mass must be carried in the clinic. However, the loss of muscle mass can be improved by rehabilitation that can be performed in non-medical environments. Electronic impedance myography (EIM) can measure some parameters of muscles that have the correlations with muscle mass and strength. The goal of this study is to use machine learning algorithms to estimate the total mass of thigh muscles (MoTM) with the parameters of EIM and body information. We explored the seven major muscles of lower limbs. The feature selection methods, including recursive feature elimination (RFE) and feature combination, were used to select the optimal features based on the ridge regression (RR) and support vector regression (SVR) models. The optimal features were the resistance of rectus femoris normalized by the thigh circumference, phase of tibialis anterior combined with the gender, and body information, height, and weight. There were 96 subjects involved in this study. The performances of estimating the MoTM used the regression coefficient (r(2)) and root-mean-square error (RMSE), which were 0.800 and 0.929, and 1.432 kg and 0.980 kg for RR and SVR models, respectively. Thus, the proposed method could have the potential to support people examining their muscle mass in non-medical environments.
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spelling pubmed-90315802022-04-23 Muscle Mass Measurement Using Machine Learning Algorithms with Electrical Impedance Myography Cheng, Kuo-Sheng Su, Ya-Ling Kuo, Li-Chieh Yang, Tai-Hua Lee, Chia-Lin Chen, Wenxi Liu, Shing-Hong Sensors (Basel) Article Sarcopenia is a wild chronic disease among elderly people. Although it does not entail a life-threatening risk, it will increase the adverse risk due to the associated unsteady gait, fall, fractures, and functional disability. The import factors in diagnosing sarcopenia are muscle mass and strength. The examination of muscle mass must be carried in the clinic. However, the loss of muscle mass can be improved by rehabilitation that can be performed in non-medical environments. Electronic impedance myography (EIM) can measure some parameters of muscles that have the correlations with muscle mass and strength. The goal of this study is to use machine learning algorithms to estimate the total mass of thigh muscles (MoTM) with the parameters of EIM and body information. We explored the seven major muscles of lower limbs. The feature selection methods, including recursive feature elimination (RFE) and feature combination, were used to select the optimal features based on the ridge regression (RR) and support vector regression (SVR) models. The optimal features were the resistance of rectus femoris normalized by the thigh circumference, phase of tibialis anterior combined with the gender, and body information, height, and weight. There were 96 subjects involved in this study. The performances of estimating the MoTM used the regression coefficient (r(2)) and root-mean-square error (RMSE), which were 0.800 and 0.929, and 1.432 kg and 0.980 kg for RR and SVR models, respectively. Thus, the proposed method could have the potential to support people examining their muscle mass in non-medical environments. MDPI 2022-04-18 /pmc/articles/PMC9031580/ /pubmed/35459072 http://dx.doi.org/10.3390/s22083087 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
Cheng, Kuo-Sheng
Su, Ya-Ling
Kuo, Li-Chieh
Yang, Tai-Hua
Lee, Chia-Lin
Chen, Wenxi
Liu, Shing-Hong
Muscle Mass Measurement Using Machine Learning Algorithms with Electrical Impedance Myography
title Muscle Mass Measurement Using Machine Learning Algorithms with Electrical Impedance Myography
title_full Muscle Mass Measurement Using Machine Learning Algorithms with Electrical Impedance Myography
title_fullStr Muscle Mass Measurement Using Machine Learning Algorithms with Electrical Impedance Myography
title_full_unstemmed Muscle Mass Measurement Using Machine Learning Algorithms with Electrical Impedance Myography
title_short Muscle Mass Measurement Using Machine Learning Algorithms with Electrical Impedance Myography
title_sort muscle mass measurement using machine learning algorithms with electrical impedance myography
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9031580/
https://www.ncbi.nlm.nih.gov/pubmed/35459072
http://dx.doi.org/10.3390/s22083087
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