Camardella Cristian, Junata Melisa, Tse King Chun, Frisoli Antonio, Tong Raymond Kai-Yu
Perceptual Robotics (PERCRO) Laboratory, TECIP Institute, Scuola Superiore Sant'Anna, Pisa, Italy.
Biomedical Engineering (BME) Laboratory, Department of Biomedical Engineering, The Chinese University of Hong Kong, Hong Kong, Hong Kong, SAR China.
Front Comput Neurosci. 2021 Oct 7;15:668579. doi: 10.3389/fncom.2021.668579. eCollection 2021.
In myo-control, for computational and setup constraints, the measurement of a high number of muscles is not always possible: the choice of the muscle set to use in a myo-control strategy depends on the desired application scope and a search for a reduced muscle set, tailored to the application, has never been performed. The identification of such set would involve finding the minimum set of muscles whose difference in terms of intention detection performance is not statistically significant when compared to the original set. Also, given the intrinsic sensitivity of muscle synergies to variations of EMG signals matrix, the reduced set should not alter synergies that come from the initial input, since they provide physiological information on motor coordination. The advantages of such reduced set, in a rehabilitation context, would be the reduction of the inputs processing time, the reduction of the setup bulk and a higher sensitivity to synergy changes after training, which can eventually lead to modifications of the ongoing therapy. In this work, the existence of a minimum muscle set, called optimal set, for an upper-limb myoelectric application, that preserves performance of motor activity prediction and the physiological meaning of synergies, has been investigated. Analyzing isometric contractions during planar reaching tasks, two types of optimal muscle sets were examined: a subject-specific one and a global one. The former relies on the subject-specific movement strategy, the latter is composed by the most recurrent muscles among subjects specific optimal sets and shared by all the subjects. Results confirmed that the muscle set can be reduced to achieve comparable hand force estimation performances. Moreover, two types of muscle synergies namely " (extracted from a single multi-arm-poses dataset) and " (clustering pose-specific synergies), extracted from the global optimal muscle set, have shown a significant similarity with full-set related ones meaning a high consistency of the motor primitives. Pearson correlation coefficients assessed the similarity of each synergy. The discovering of dominant muscles by means of the optimization of both muscle set size and force estimation error may reveal a clue on the link between synergistic patterns and the force task.
在肌电控制中,由于计算和设置方面的限制,测量大量肌肉并不总是可行的:在肌电控制策略中选择要使用的肌肉组取决于期望的应用范围,而针对特定应用寻找精简肌肉组的工作从未开展过。确定这样一组肌肉需要找到最小肌肉组,与原始肌肉组相比,其在意图检测性能方面的差异在统计学上不显著。此外,鉴于肌肉协同作用对肌电信号矩阵变化的内在敏感性,精简后的肌肉组不应改变来自初始输入的协同作用,因为它们提供了有关运动协调的生理信息。在康复背景下,这种精简肌肉组的优点包括减少输入处理时间、减小设置体积以及对训练后协同作用变化具有更高的敏感性,最终可能导致正在进行的治疗方案的调整。在这项工作中,研究了对于上肢肌电应用而言,是否存在一个称为最优组的最小肌肉组,该组能保持运动活动预测性能以及协同作用的生理意义。通过分析平面伸展任务中的等长收缩,研究了两种类型的最优肌肉组:特定个体的最优组和通用最优组。前者依赖于特定个体的运动策略,后者由所有个体特定最优组中出现频率最高的肌肉组成且为所有个体所共有。结果证实,可以减少肌肉组数量以实现相当的手部力量估计性能。此外,从通用最优肌肉组中提取的两种类型的肌肉协同作用,即“(从单个多手臂姿势数据集中提取)和“(对特定姿势协同作用进行聚类),与全肌肉组相关的协同作用显示出显著的相似性,这意味着运动原语具有高度一致性。皮尔逊相关系数评估了每种协同作用的相似性。通过优化肌肉组大小和力估计误差来发现主导肌肉,可能揭示协同模式与力任务之间联系的线索。