Moniri Ahmad, Terracina Dan, Rodriguez-Manzano Jesus, Strutton Paul H, Georgiou Pantelis
IEEE Trans Biomed Eng. 2021 Feb;68(2):718-727. doi: 10.1109/TBME.2020.3012783. Epub 2021 Jan 20.
Several features of the surface electromyography (sEMG) signal are related to muscle activity and fatigue. However, the time-evolution of these features are non-stationary and vary between subjects. The aim of this study is to investigate the use of adaptive algorithms to forecast sEMG feature of the trunk muscles.
Shallow models and a deep convolutional neural network (CNN) were used to simultaneously learn and forecast 5 common sEMG features in real-time to provide tailored predictions. This was investigated for: up to a 25 second horizon; for 14 different muscles in the trunk; across 13 healthy subjects; while they were performing various exercises.
The CNN was able to forecast 25 seconds ahead of time, with 6.88% mean absolute percentage error and 3.72% standard deviation of absolute percentage error, across all the features. Moreover, the CNN outperforms the best shallow model in terms of a figure of merit combining accuracy and precision by at least 30% for all the 5 features.
Even though the sEMG features are non-stationary and vary between subjects, adaptive learning and forecasting, especially using CNNs, can provide accurate and precise forecasts across a range of physical activities.
The proposed models provide the groundwork for a wearable device which can forecast muscle fatigue in the trunk, so as to potentially prevent low back pain. Additionally, the explicit real-time forecasting of sEMG features provides a general model which can be applied to many applications of muscle activity monitoring, which helps practitioners and physiotherapists improve therapy.
表面肌电图(sEMG)信号的几个特征与肌肉活动和疲劳有关。然而,这些特征随时间的变化是非平稳的,并且在个体之间存在差异。本研究的目的是探讨使用自适应算法来预测躯干肌肉的sEMG特征。
使用浅层模型和深度卷积神经网络(CNN)同时实时学习和预测5种常见的sEMG特征,以提供定制化的预测。研究内容包括:预测长达25秒的未来情况;针对躯干中的14块不同肌肉;涵盖13名健康受试者;在他们进行各种运动时。
CNN能够提前25秒进行预测,所有特征的平均绝对百分比误差为6.88%,绝对百分比误差的标准差为3.72%。此外,在结合准确性和精确性的品质因数方面,CNN在所有5个特征上均比最佳浅层模型至少高出30%。
尽管sEMG特征是非平稳的且个体之间存在差异,但自适应学习和预测,尤其是使用CNN,可以在一系列体育活动中提供准确而精确的预测。
所提出的模型为可穿戴设备奠定了基础,该设备可以预测躯干肌肉疲劳,从而有可能预防腰痛。此外,对sEMG特征的显式实时预测提供了一个通用模型,可应用于肌肉活动监测的许多应用中,这有助于从业者和物理治疗师改进治疗方法。