Simonetti Donatella, Koopman Bart, Sartori Massimo
Department of Biomechanical Engineering, University of Twente, Enschede, the Netherlands.
Department of Biomechanical Engineering, University of Twente, Enschede, the Netherlands.
J Electromyogr Kinesiol. 2022 Dec;67:102701. doi: 10.1016/j.jelekin.2022.102701. Epub 2022 Sep 7.
The design of personalized movement training and rehabilitation pipelines relies on the ability of assessing the activation of individual muscles concurrently with the resulting joint torques exerted during functional movements. Despite advances in motion capturing, force sensing and bio-electrical recording technologies, the estimation of muscle activation and resulting force still relies on lengthy experimental and computational procedures that are not clinically viable. This work proposes a wearable technology for the rapid, yet quantitative, assessment of musculoskeletal function. It comprises of (1) a soft leg garment sensorized with 64 uniformly distributed electromyography (EMG) electrodes, (2) an algorithm that automatically groups electrodes into seven muscle-specific clusters, and (3) a EMG-driven musculoskeletal model that estimates the resulting force and torque produced about the ankle joint sagittal plane. Our results show the ability of the proposed technology to automatically select a sub-set of muscle-specific electrodes that enabled accurate estimation of muscle excitations and resulting joint torques across a large range of biomechanically diverse movements, underlying different excitation patterns, in a group of eight healthy individuals. This may substantially decrease time needed for localization of muscle sites and electrode placement procedures, thereby facilitating applicability of EMG-driven modelling pipelines in standard clinical protocols.
个性化运动训练与康复流程的设计依赖于在功能运动过程中,同时评估单个肌肉的激活情况以及由此产生的关节扭矩的能力。尽管运动捕捉、力传感和生物电记录技术取得了进展,但肌肉激活和产生的力的估计仍依赖于冗长的实验和计算程序,这些程序在临床上并不可行。这项工作提出了一种用于快速、定量评估肌肉骨骼功能的可穿戴技术。它包括:(1)一个由64个均匀分布的肌电图(EMG)电极传感的软腿套;(2)一种将电极自动分组为七个特定肌肉群的算法;(3)一个由EMG驱动的肌肉骨骼模型,该模型估计踝关节矢状面产生的力和扭矩。我们的结果表明,所提出的技术能够自动选择一组特定肌肉的电极,从而在一组八名健康个体中,在广泛的生物力学不同运动中,准确估计肌肉兴奋和由此产生的关节扭矩,这些运动具有不同的兴奋模式。这可能会大幅减少肌肉部位定位和电极放置程序所需的时间,从而促进基于EMG的建模流程在标准临床方案中的应用。