Armstrong Daniel P, Ross Gwyneth B, Graham Ryan B, Fischer Steven L
Department of Kinesiology, University of Waterloo, Waterloo, Canada.
School of Human Kinetics, University of Ottawa, Ottawa, Ontario, Canada.
Work. 2019;63(4):603-613. doi: 10.3233/WOR-192955.
Physical employment standards (PES) ensure that candidates can demonstrate the physical capacity required to perform duties of work. However, movement competency, or an individual's movement strategy, can relate to injury risk and safety, and therefore should be considered in PES.
Demonstrate the utility of using artificial intelligence (AI) to detect risk-potential of different movement strategies within PES.
Biomechanical analysis was used to calculate peak flexion angles and peak extensor moment about the lumbar spine during participants' performance of a backboard lifting task. Lifts performed with relatively lower and higher exposure to postural and moment loading on the spine were characterized as "low" or "high" exposure, respectively. An AI model including principal component and linear discriminant analyses was then trained to detect and classify backboard lifts as "low" or "high".
The AI model accurately classified over 85% of lifts as "low" or "high" exposure using only motion data as an input.
This proof-of-principle demonstrates that movement competency can be assessed in PES using AI. Similar classification approaches could be used to improve the utility of PES as a musculoskeletal disorders (MSD) prevention tool by proactively identifying candidates at higher risk of MSD based on movement competency.
体力工作标准(PES)确保求职者能够展示履行工作职责所需的身体能力。然而,运动能力,即个人的运动策略,可能与受伤风险和安全性相关,因此在体力工作标准中应予以考虑。
证明使用人工智能(AI)检测体力工作标准中不同运动策略的潜在风险的效用。
在参与者执行篮板提升任务期间,使用生物力学分析来计算腰椎的峰值屈曲角度和峰值伸肌力矩。脊柱承受相对较低和较高姿势及力矩负荷的提升分别被表征为“低”或“高”暴露。然后训练一个包括主成分分析和线性判别分析的人工智能模型,以将篮板提升检测并分类为“低”或“高”。
仅使用运动数据作为输入,人工智能模型就能准确地将超过85%的提升分类为“低”或“高”暴露。
这一原理验证表明,可以在体力工作标准中使用人工智能评估运动能力。类似的分类方法可用于通过根据运动能力主动识别肌肉骨骼疾病(MSD)风险较高的求职者,提高体力工作标准作为MSD预防工具的效用。