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Measuring Biomechanical Risk in Lifting Load Tasks Through Wearable System and Machine-Learning Approach

Ergonomics evaluation through measurements of biomechanical parameters in real time has a great potential in reducing non-fatal occupational injuries, such as work-related musculoskeletal disorders. Assuming a correct posture guarantees the avoidance of high stress on the back and on the lower extre...

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Autores principales: Conforti, Ilaria, Mileti, Ilaria, Del Prete, Zaccaria, Palermo, Eduardo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7146543/
https://www.ncbi.nlm.nih.gov/pubmed/32168844
http://dx.doi.org/10.3390/s20061557
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author Conforti, Ilaria
Mileti, Ilaria
Del Prete, Zaccaria
Palermo, Eduardo
author_facet Conforti, Ilaria
Mileti, Ilaria
Del Prete, Zaccaria
Palermo, Eduardo
author_sort Conforti, Ilaria
collection PubMed
description Ergonomics evaluation through measurements of biomechanical parameters in real time has a great potential in reducing non-fatal occupational injuries, such as work-related musculoskeletal disorders. Assuming a correct posture guarantees the avoidance of high stress on the back and on the lower extremities, while an incorrect posture increases spinal stress. Here, we propose a solution for the recognition of postural patterns through wearable sensors and machine-learning algorithms fed with kinematic data. Twenty-six healthy subjects equipped with eight wireless inertial measurement units (IMUs) performed manual material handling tasks, such as lifting and releasing small loads, with two postural patterns: correctly and incorrectly. Measurements of kinematic parameters, such as the range of motion of lower limb and lumbosacral joints, along with the displacement of the trunk with respect to the pelvis, were estimated from IMU measurements through a biomechanical model. Statistical differences were found for all kinematic parameters between the correct and the incorrect postures (p < 0.01). Moreover, with the weight increase of load in the lifting task, changes in hip and trunk kinematics were observed (p < 0.01). To automatically identify the two postures, a supervised machine-learning algorithm, a support vector machine, was trained, and an accuracy of 99.4% (specificity of 100%) was reached by using the measurements of all kinematic parameters as features. Meanwhile, an accuracy of 76.9% (specificity of 76.9%) was reached by using the measurements of kinematic parameters related to the trunk body segment.
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spelling pubmed-71465432020-04-20 Measuring Biomechanical Risk in Lifting Load Tasks Through Wearable System and Machine-Learning Approach Conforti, Ilaria Mileti, Ilaria Del Prete, Zaccaria Palermo, Eduardo Sensors (Basel) Article Ergonomics evaluation through measurements of biomechanical parameters in real time has a great potential in reducing non-fatal occupational injuries, such as work-related musculoskeletal disorders. Assuming a correct posture guarantees the avoidance of high stress on the back and on the lower extremities, while an incorrect posture increases spinal stress. Here, we propose a solution for the recognition of postural patterns through wearable sensors and machine-learning algorithms fed with kinematic data. Twenty-six healthy subjects equipped with eight wireless inertial measurement units (IMUs) performed manual material handling tasks, such as lifting and releasing small loads, with two postural patterns: correctly and incorrectly. Measurements of kinematic parameters, such as the range of motion of lower limb and lumbosacral joints, along with the displacement of the trunk with respect to the pelvis, were estimated from IMU measurements through a biomechanical model. Statistical differences were found for all kinematic parameters between the correct and the incorrect postures (p < 0.01). Moreover, with the weight increase of load in the lifting task, changes in hip and trunk kinematics were observed (p < 0.01). To automatically identify the two postures, a supervised machine-learning algorithm, a support vector machine, was trained, and an accuracy of 99.4% (specificity of 100%) was reached by using the measurements of all kinematic parameters as features. Meanwhile, an accuracy of 76.9% (specificity of 76.9%) was reached by using the measurements of kinematic parameters related to the trunk body segment. MDPI 2020-03-11 /pmc/articles/PMC7146543/ /pubmed/32168844 http://dx.doi.org/10.3390/s20061557 Text en © 2020 by the authors. 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 (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Conforti, Ilaria
Mileti, Ilaria
Del Prete, Zaccaria
Palermo, Eduardo
Measuring Biomechanical Risk in Lifting Load Tasks Through Wearable System and Machine-Learning Approach
title Measuring Biomechanical Risk in Lifting Load Tasks Through Wearable System and Machine-Learning Approach
title_full Measuring Biomechanical Risk in Lifting Load Tasks Through Wearable System and Machine-Learning Approach
title_fullStr Measuring Biomechanical Risk in Lifting Load Tasks Through Wearable System and Machine-Learning Approach
title_full_unstemmed Measuring Biomechanical Risk in Lifting Load Tasks Through Wearable System and Machine-Learning Approach
title_short Measuring Biomechanical Risk in Lifting Load Tasks Through Wearable System and Machine-Learning Approach
title_sort measuring biomechanical risk in lifting load tasks through wearable system and machine-learning approach
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7146543/
https://www.ncbi.nlm.nih.gov/pubmed/32168844
http://dx.doi.org/10.3390/s20061557
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