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Combining Postural Sway Parameters and Machine Learning to Assess Biomechanical Risk Associated with Load-Lifting Activities

DIAGNOSTICS(2025)

Univ Molise | Univ Campania Luigi Vanvitelli | Univ Sannio | Reykjavik Univ | Univ Naples Federico II

Cited 0|Views1
Abstract
Background/Objectives: Long-term work-related musculoskeletal disorders are predominantly influenced by factors such as the duration, intensity, and repetitive nature of load lifting. Although traditional ergonomic assessment tools can be effective, they are often challenging and complex to apply due to the absence of a streamlined, standardized framework. Recently, integrating wearable sensors with artificial intelligence has emerged as a promising approach to effectively monitor and mitigate biomechanical risks. This study aimed to evaluate the potential of machine learning models, trained on postural sway metrics derived from an inertial measurement unit (IMU) placed at the lumbar region, to classify risk levels associated with load lifting based on the Revised NIOSH Lifting Equation. Methods: To compute postural sway parameters, the IMU captured acceleration data in both anteroposterior and mediolateral directions, aligning closely with the body’s center of mass. Eight participants undertook two scenarios, each involving twenty consecutive lifting tasks. Eight machine learning classifiers were tested utilizing two validation strategies, with the Gradient Boost Tree algorithm achieving the highest accuracy and an Area under the ROC Curve of 91.2% and 94.5%, respectively. Additionally, feature importance analysis was conducted to identify the most influential sway parameters and directions. Results: The results indicate that the combination of sway metrics and the Gradient Boost model offers a feasible approach for predicting biomechanical risks in load lifting. Conclusions: Further studies with a broader participant pool and varied lifting conditions could enhance the applicability of this method in occupational ergonomics.
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Key words
biomechanical risk assessment,machine learning,physical ergonomics,postural sway,Revised NIOSH Lifting Equation,wearable inertial sensors,weight lifting
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要点】:研究运用机器学习模型和腰部佩戴的惯性测量单元(IMU)收集的姿势摆动参数来评估负重活动中的生物力学风险,实现风险级别的有效分类。

方法】:通过IMU获取参与者腰部加速度数据,计算姿势摆动参数,并使用八种机器学习分类器进行模型训练和验证。

实验】:八名参与者完成两种场景下的二十次连续提举任务,使用交叉验证策略,梯度提升树算法达到最高准确率,分别为91.2%和94.5%,同时进行了特征重要性分析。