Department of Kinesiology, University of Waterloo, 200 University Avenue West, Waterloo, ON, N2L 3G1, Canada.
School of Human Kinetics, Faculty of Health Sciences, University of Ottawa, 75 Laurier Avenue East, Ottawa, ON, K1N 6N5, Canada.
J Occup Rehabil. 2021 Mar;31(1):50-62. doi: 10.1007/s10926-020-09890-2.
Purpose The Epic Lift Capacity (ELC) test is used to determine a worker's maximum lifting capacity. In the ELC test, maximum lifting capacity is often determined as the maximum weight lifted without exhibiting a visually appraised "high-risk workstyle." However, the criteria for evaluating lifting mechanics have limited justification. This study applies feature detection and biomechanical analysis to motion capture data obtained while participants performed the ELC test to objectively identify aspects of movement that may help define "high-risk workstyle". Method In this cross-sectional study, 24 participants completed the ELC test. We applied Principal Component Analysis, as a feature detection approach, and biomechanical analysis to motion capture data to objectively identify movement features related to biomechanical exposure on the low back and shoulders. Principal component scores were compared between high and low exposure trials (relative to median exposure) to determine if features of movement differed. Features were interpreted using single component reconstructions of principal components. Results Statistical testing showed that low exposure lifts and lowers maintained the body closer to the load, exhibited squat-like movement (greater knee flexion, wider base of support), and remained closer to neutral posture at the low back (less forward flexion and axial twist) and shoulder (less flexion and abduction). Conclusions Use of feature detection and biomechanical analyses revealed movement features related to biomechanical exposure at the low back and shoulders. The objectively identified criteria could augment the existing scoring criteria for ELC test technique assessment. In the future, such features can inform the design of classifiers to objectively identify "high-risk workstyle" in real-time.
目的
Epic 提升能力(ELC)测试用于确定工人的最大提升能力。在 ELC 测试中,最大提升能力通常被确定为在不表现出视觉评估的“高风险工作方式”的情况下可以举起的最大重量。然而,评估提升力学的标准的合理性有限。本研究将特征检测和生物力学分析应用于参与者进行 ELC 测试时获得的运动捕捉数据,以客观地识别可能有助于定义“高风险工作方式”的运动方面。
方法
在这项横断面研究中,24 名参与者完成了 ELC 测试。我们应用主成分分析作为特征检测方法,并对运动捕捉数据进行生物力学分析,以客观地识别与腰部和肩部生物力学暴露相关的运动特征。将主成分得分与高暴露和低暴露试验(相对于中位数暴露)进行比较,以确定运动特征是否存在差异。使用主成分的单成分重建来解释特征。
结果
统计检验表明,低暴露的提升和降低使身体更靠近负载,表现出类似深蹲的运动(更大的膝关节屈曲,更宽的支撑基础),并且腰部(更少的前屈和轴向扭转)和肩部(更少的屈曲和外展)的姿势更接近中立。
结论
使用特征检测和生物力学分析揭示了与腰部和肩部生物力学暴露相关的运动特征。客观确定的标准可以补充 ELC 测试技术评估的现有评分标准。在未来,这些特征可以为实时客观识别“高风险工作方式”的分类器的设计提供信息。