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基于高密度肌电图的运动学预测模型实现腕部和手部自由度的同步和比例控制。

Simultaneous and proportional control of wrist and hand degrees of freedom with kinematic prediction models from high-density EMG.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:764-767. doi: 10.1109/EMBC48229.2022.9871346.

Abstract

To improve intuitive control and reduce training time for active upper limb prostheses, we developed a myocontrol system for 3 degrees of freedom (DoFs) of the hand and wrist. In an offline study, we systematically investigated movement sets used to train this system, to identify the optimal compromise between training time and performance. High-density surface electromyography (HDsEMG) and optical marker motion capture were recorded concurrently from the lower arms of 8 subjects performing a series of wrist and hand movements activating DoFs individually, sequentially, and simultaneously. The root mean square (RMS) feature extracted from the EMG signal and kinematics obtained from motion capture were used to train regression and classification models to predict the kinematics of wrist movements and opening and closing of the hand, respectively. Results showed successful predictions of kinematics when training with the complete training set (r2 = 0.78 for wrist regression and recall = 0.85 for hand closing/opening classification). In further analysis, the training set was substantially reduced by removing the simultaneous movements. This led to a statistically significant, but relatively small reduction of the effectiveness of the wrist controller (r2 = 0.70, p<0.05), without changes for the hand controller (closing recall = 0.83). Reducing the training time and complexity needed to control a prosthesis with simultaneous wrist control as well as detection of intention to close the hand can lead to improved uptake of upper limb prosthetics.

摘要

为了提高主动上肢假肢的直观控制能力并减少训练时间,我们开发了一种用于手和手腕 3 个自由度(DoFs)的肌电控制(myocontrol)系统。在一项离线研究中,我们系统地研究了用于训练该系统的运动集,以确定训练时间和性能之间的最佳折衷。从 8 名受试者的下臂同时记录高密度表面肌电图(HDsEMG)和光学标记运动捕捉,这些受试者分别执行一系列单独、顺序和同时激活 DoFs 的手腕和手部运动。从肌电图信号中提取的均方根(RMS)特征和从运动捕捉中获得的运动学用于训练回归和分类模型,分别预测手腕运动和手部开合的运动学。结果表明,当使用完整的训练集进行训练时,运动学预测取得了成功(手腕回归的 r2 = 0.78,手部开合分类的召回率 = 0.85)。在进一步的分析中,通过删除同时运动,大大减少了训练集。这导致手腕控制器的有效性(r2 = 0.70,p <0.05)出现了统计学上显著但相对较小的降低,而手部控制器(关闭召回率 = 0.83)没有变化。减少控制同时具有手腕控制和检测手部闭合意图的假肢所需的训练时间和复杂性,可以提高上肢假肢的采用率。

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