Yang Kaiwen, Nicolini Luke, Kuang Irene, Lu Nanshu, Djurdjanovic Dragan
The University of Texas at Austin, Austin, TX,78712, USA.
Massachusetts Institute of Technology, Cambridge, MA, 02139, USA.
Int J Progn Health Manag. 2019;10(3).
This paper introduces stretchable, long-term wearable, tattoo-like dry surface electrodes for highly repeatable electromyography (EMG). The tattoo-like sensors are hair thin, skin compliant and can be laminated on human skin just like a temporary transfer tattoo, which enables multi-day noninvasive but intimate contact with the skin even under severe skin deformation. The new electrodes were used to facilitate a system-based approach to tracking of long-term fatiguing and recovery processes in a human neuromusculoskeletal (NMS) system, which was based on establishing an autoregressive moving average model with exogenous inputs (ARMAX model) relating signatures extracted from the surface electromyogram (sEMG) signals collected using the tattoo-like sensors, and the corresponding hand grip force (HGF) serving as the model output. Performance degradation of the relevant NMS system was evaluated by tracking the evolution of the errors of the ARMAX model established using the data corresponding to the rested (fresh) state of any given subject. Results from several exercise sessions clearly showed repeated patterns of fatiguing and resting, with a notable point that these patterns could now be quantified via dynamic models relating the relevant muscle signatures and NMS outputs.
本文介绍了用于高度可重复肌电图(EMG)的可拉伸、长期可穿戴、纹身样干式表面电极。这种纹身样传感器像头发一样薄,贴合皮肤,并且可以像临时转印纹身一样层压在人体皮肤上,即使在皮肤严重变形的情况下,也能实现与皮肤多日的无创但紧密接触。新电极被用于促进一种基于系统的方法,来跟踪人类神经肌肉骨骼(NMS)系统中的长期疲劳和恢复过程,该方法基于建立一个带有外生输入的自回归移动平均模型(ARMAX模型),该模型将使用纹身样传感器收集的表面肌电图(sEMG)信号中提取的特征与相应的握力(HGF)作为模型输出联系起来。通过跟踪使用任何给定受试者休息(新鲜)状态的数据建立的ARMAX模型的误差演变,评估相关NMS系统的性能退化。几次锻炼的结果清楚地显示了疲劳和休息的重复模式,值得注意的是,现在可以通过将相关肌肉特征和NMS输出联系起来的动态模型对这些模式进行量化。