Center for Human Movement Sciences, University of Groningen, University Medical Center Groningen, Antonius Deusinglaan 1, 9713, AV, Groningen, the Netherlands.
J Neuroeng Rehabil. 2019 Jan 7;16(1):6. doi: 10.1186/s12984-018-0469-5.
Users of myoelectric controlled assistive technology (AT) for upper extremities experience difficulties in controlling this technology in daily life, partly because the control is non-intuitive. Making the control of myoelectric AT intuitive may resolve the experienced difficulties. The present paper was inspired by the suggestion that intuitive control may be achieved if the control of myoelectric AT is based on neuromotor control principles. A significant approach within neurocomputational motor control suggests that myosignals are produced via a limited number of fixed muscle synergies. To effectively employ this approach in myoelectric AT, it is required that a limited number of muscle synergies is systematically exploited, also when muscles are used differently as required in controlling myoelectric AT. Therefore, the present study examined the systematic exploitation of muscle synergies when muscles were used differently to complete point-to-point movements with and without a rod.
Healthy participants made multidirectional point-to-point movements with different end-effectors, i.e. with the index finger and with rods of different lengths. Myosignals were collected from 22 muscles in the arm, trunk, and back, and subsequently partitioned into muscle synergies per end-effector and for a pooled dataset including all end-effectors. The exploitation of these muscle synergies was assessed by evaluating the similarity of structure and explanatory ability of myosignals of per end-effector muscle synergies and the contribution of pooled muscle synergies across end-effectors.
Per end-effector, 3-5 muscle synergies could explain 73.8-81.1% of myosignal variation, whereas 6-8 muscle synergies from the pooled dataset also captured this amount of myosignal variation. Subsequent analyses showed that gradually different muscle synergies-extracted from separate end-effectors-were exploited across end-effectors. In line with this result, the order of contribution of muscle synergies extracted from the pooled dataset gradually reversed across end-effectors.
A limited number of muscle synergies was systematically exploited in the examined set of movements, indicating a potential for the fixed muscle synergy approach to improve the intuitive control of myoelectric AT. Given the gradual change in muscle synergy exploitation across end-effectors, future research should examine whether this potential can be extended to a larger range of movements and tasks.
上肢肌电控制辅助技术(AT)的使用者在日常生活中难以控制该技术,部分原因是控制方式不直观。使肌电 AT 的控制变得直观可能会解决所经历的困难。本文受以下观点的启发:如果基于神经运动控制原理来控制肌电 AT,则可以实现直观控制。神经计算运动控制中的一个重要方法表明,肌电信号是通过数量有限的固定肌肉协同作用产生的。为了在肌电 AT 中有效地利用这种方法,需要系统地利用数量有限的肌肉协同作用,即使在控制肌电 AT 时需要以不同的方式使用肌肉也是如此。因此,本研究在使用不同的肌肉进行指向性运动时,检查了肌肉协同作用的系统利用,包括有无棒。
健康参与者使用不同的末端效应器进行多向指向性运动,即使用食指和不同长度的棒。从手臂、躯干和背部的 22 块肌肉中采集肌电信号,并根据末端效应器和包括所有末端效应器的汇总数据集将肌电信号分为肌肉协同作用。通过评估每个末端效应器的肌协同作用的结构和解释能力的相似性以及跨末端效应器的汇总肌协同作用的贡献来评估这些肌协同作用的利用情况。
对于每个末端效应器,3-5 个肌肉协同作用可以解释 73.8-81.1%的肌电信号变化,而汇总数据集中的 6-8 个肌肉协同作用也可以捕获相同数量的肌电信号变化。随后的分析表明,逐渐从不同的末端效应器中提取出不同的肌肉协同作用被跨末端效应器利用。与该结果一致,从汇总数据集中提取的肌肉协同作用的贡献顺序在末端效应器之间逐渐颠倒。
在所检查的运动组合中,系统地利用了数量有限的肌肉协同作用,这表明固定肌肉协同作用方法有可能改善肌电 AT 的直观控制。鉴于末端效应器之间肌肉协同作用的利用逐渐变化,未来的研究应检查这种潜力是否可以扩展到更大范围的运动和任务。