Prediction model of subacromial pain syndrome in assembly workers using shoulder range of motion and muscle strength based on support vector machine.

IF 2 3区 工程技术 Q3 ENGINEERING, INDUSTRIAL Ergonomics Pub Date : 2024-09-01 Epub Date: 2023-12-11 DOI:10.1080/00140139.2023.2290983
Jun-Hee Kim, Oh-Yun Kwon, Ui-Jae Hwang, Sung-Hoon Jung, Gyeong-Tae Gwak
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Abstract

Subacromial pain syndrome (SAPS) is the most common upper-extremity musculoskeletal problem among workers. In this study, a machine learning model was built to predict and classify the presence or absence of SAPS in assembly workers with shoulder joint range of motion (ROM) and muscle strength data using support vector machine (SVM). Permutation importance was used to determine important variables for predicting workers with or without SAPS. The accuracy of the support vector classifier (SVC) polynomial model for classifying workers with SAPS was 82.4%. The important variables in model construction were internal rotation and abduction of shoulder ROM and internal rotation of shoulder muscle strength. It is possible to accurately perform SAPS classification of workers with relatively easy-to-obtain shoulder ROM and muscle strength data using this model. In addition, preventing SAPS in workers is possible by adjusting the factors affecting model building using exercise or rehabilitation programs.Practitioner summary: This study aimed to create a machine learning model that can predict and classify SAPS using shoulder ROM and muscle strength and identify the variables that are of high importance in model construction. This model could be used to predict or classify workers' SAPS and manage or prevent SAPS.

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基于支持向量机的装配工人肩关节活动度和肌肉力量预测肩峰下疼痛综合征模型。
肩峰下疼痛综合征(SAPS)是工人中最常见的上肢肌肉骨骼问题。在本研究中,我们建立了一个机器学习模型,利用支持向量机(SVM)的肩关节活动范围(ROM)和肌肉力量数据来预测和分类装配工人是否存在SAPS。排列重要性被用来确定预测工人是否有SAPS的重要变量。支持向量分类器(SVC)多项式模型对SAPS工人进行分类的准确率为82.4%。模型构建的重要变量是肩关节内旋外展和肩关节内旋肌力。使用该模型可以准确地对具有相对容易获得的肩部ROM和肌肉力量数据的工人进行SAPS分类。此外,通过使用锻炼或康复计划来调整影响模型构建的因素,可以预防工人的SAPS。
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来源期刊
Ergonomics
Ergonomics 工程技术-工程:工业
CiteScore
4.60
自引率
12.50%
发文量
147
审稿时长
6 months
期刊介绍: Ergonomics, also known as human factors, is the scientific discipline that seeks to understand and improve human interactions with products, equipment, environments and systems. Drawing upon human biology, psychology, engineering and design, Ergonomics aims to develop and apply knowledge and techniques to optimise system performance, whilst protecting the health, safety and well-being of individuals involved. The attention of ergonomics extends across work, leisure and other aspects of our daily lives. The journal Ergonomics is an international refereed publication, with a 60 year tradition of disseminating high quality research. Original submissions, both theoretical and applied, are invited from across the subject, including physical, cognitive, organisational and environmental ergonomics. Papers reporting the findings of research from cognate disciplines are also welcome, where these contribute to understanding equipment, tasks, jobs, systems and environments and the corresponding needs, abilities and limitations of people. All published research articles in this journal have undergone rigorous peer review, based on initial editor screening and anonymous refereeing by independent expert referees.
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