Robinson Mark, Lu Lei, Tan Ying, Oetomo Denny, Manzie Chris
IEEE Trans Biomed Eng. 2023 Feb;70(2):616-627. doi: 10.1109/TBME.2022.3199025. Epub 2023 Jan 19.
Lower back injuries are a serious global problem. Most of these injuries occur over time with repeated sub-acute stresses. Neuromuscular control dysfunction could predict injury, however injuries are almost never observed alongside this data. No labels are available to identify important features that may be predictive of injury. While there are many individual differences in injury development, the population trend is that each individual's injury tolerance decreases over time with exposure, indicating a monotonic process.
This paper proposes a framework for identifying key features of injury using an unsupervised technique that exploits knowledge of injury aetiology by analysing which features contribute to the popular trend using weak monotonicity from data segmented by task repetitions. The feature selection also evaluates feature redundancy. The efficacy of the framework is demonstrated through data from on-site sheep shearers over one day using 17 wearable inertial measurement units and 16 surface electromyography (sEMG) sensors.
Consistent with literature, the results demonstrate sEMG features derived from the erector spinae and multifidus muscles are the most important indicators for lower back injury. To evaluate the performance of the proposed population-trend based unsupervised feature selection technique, the self-reported fatigue information is treated as some 'ground truth' information so that this proposed technique can compare with 5 existing unsupervised feature selection techniques.
The proposed technique is shown to be the most consistent with the self-reported fatigue information, demonstrating the effectiveness of the proposed method.
下背部损伤是一个严重的全球性问题。这些损伤大多是随着时间的推移,由反复的亚急性应力造成的。神经肌肉控制功能障碍可以预测损伤,然而损伤几乎从未与这些数据同时出现。没有可用的标签来识别可能预测损伤的重要特征。虽然在损伤发展过程中有许多个体差异,但总体趋势是,随着暴露时间的增加,每个人的损伤耐受性会随着时间的推移而降低,这表明这是一个单调的过程。
本文提出了一个框架,用于使用无监督技术识别损伤的关键特征,该技术通过分析任务重复分割的数据中哪些特征导致了总体趋势,利用损伤病因学知识。特征选择还评估特征冗余。通过来自现场剪羊毛工人一天的数据,使用17个可穿戴惯性测量单元和16个表面肌电图(sEMG)传感器,证明了该框架的有效性。
与文献一致,结果表明,从竖脊肌和多裂肌得出的sEMG特征是下背部损伤最重要的指标。为了评估所提出的基于总体趋势的无监督特征选择技术的性能,将自我报告的疲劳信息视为一些“基本事实”信息,以便该技术能够与5种现有的无监督特征选择技术进行比较。
所提出的技术被证明与自我报告的疲劳信息最一致,证明了所提方法的有效性。