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sEMG Spectral Analysis and Machine Learning Algorithms Are Able to Discriminate Biomechanical Risk Classes Associated with Manual Material Liftings

sEMG Spectral Analysis and Machine Learning Algorithms Are Able to Discriminate Biomechanical Risk Classes Associated with Manual Material Liftings


Titill: sEMG Spectral Analysis and Machine Learning Algorithms Are Able to Discriminate Biomechanical Risk Classes Associated with Manual Material Liftings
Höfundur: Donisi, Leandro
Jacob, Deborah
Guerrini, Lorena
Prisco, Giuseppe
Esposito, Fabrizio
Cesarelli, Mario
Amato, Francesco
Gargiulo, Paolo   orcid.org/0000-0002-5049-4817
Útgáfa: 2023-09-20
Tungumál: Enska
Umfang: 3716596
Deild: Department of Engineering
Other departments
Birtist í: Bioengineering; 10(9)
ISSN: 2306-5354
DOI: 10.3390/bioengineering10091103
Efnisorð: Vísindadeild; Verkfræðingar; biomechanical risk assessment; load lifting; machine learning; physical ergonomics; Revised NIOSH Lifting Equation; surface electromyography; wearable devices; work-related musculoskeletal disorders; Bioengineering
URI: https://hdl.handle.net/20.500.11815/4499

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Tilvitnun:

Donisi , L , Jacob , D , Guerrini , L , Prisco , G , Esposito , F , Cesarelli , M , Amato , F & Gargiulo , P 2023 , ' sEMG Spectral Analysis and Machine Learning Algorithms Are Able to Discriminate Biomechanical Risk Classes Associated with Manual Material Liftings ' , Bioengineering , vol. 10 , no. 9 , 1103 . https://doi.org/10.3390/bioengineering10091103

Útdráttur:

Manual material handling and load lifting are activities that can cause work-related musculoskeletal disorders. For this reason, the National Institute for Occupational Safety and Health proposed an equation depending on the following parameters: intensity, duration, frequency, and geometric characteristics associated with the load lifting. In this paper, we explore the feasibility of several Machine Learning (ML) algorithms, fed with frequency-domain features extracted from electromyographic (EMG) signals of back muscles, to discriminate biomechanical risk classes defined by the Revised NIOSH Lifting Equation. The EMG signals of the multifidus and erector spinae muscles were acquired by means of a wearable device for surface EMG and then segmented to extract several frequency-domain features relating to the Total Power Spectrum of the EMG signal. These features were fed to several ML algorithms to assess their prediction power. The ML algorithms produced interesting results in the classification task, with the Support Vector Machine algorithm outperforming the others with accuracy and Area under the Receiver Operating Characteristic Curve values of up to 0.985. Moreover, a correlation between muscular fatigue and risky lifting activities was found. These results showed the feasibility of the proposed methodology—based on wearable sensors and artificial intelligence—to predict the biomechanical risk associated with load lifting. A future investigation on an enriched study population and additional lifting scenarios could confirm the potential of the proposed methodology and its applicability in the field of occupational ergonomics.

Athugasemdir:

Funding Information: The authors thank the researchers of the Motion Sickness Laboratory of the Reykjavik University (Iceland) and Engg. Teresa Pirozzi and Federica Cirillo for their technical support. Work by LD and FE in part supported by #NEXTGENERATIONEU (NGEU) and funded by the Ministry of University and Research (MUR), National Recovery and Resilience Plan (NRRP), project MNESYS (PE0000006)—A Multiscale integrated approach to the study of the nervous system in health and disease (DN. 1553 11.10.2022). Publisher Copyright: © 2023 by the authors.

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