IEEE Trans Neural Syst Rehabil Eng. 2018 Apr;26(4):807-816. doi: 10.1109/TNSRE.2018.2805472.
An accurate model for ElectroMyoGram (EMG)-torque dynamics has many uses. One of its applications which has gained high attention among researchers is its use, in estimating the muscle contraction level for the efficient control of prosthesis. In this paper, the dynamic relationship between the surface EMG and torque during isometric contractions at the human ankle was studied using system identification techniques. Subjects voluntarily modulated their ankle torque in dorsiflexion direction, by activating their tibialis anterior muscle, while tracking a pseudo-random binary sequence in a torque matching task. The effects of contraction bandwidth, described by torque spectrum, on EMG-torque dynamics were evaluated by varying the visual command switching time. Nonparametric impulse response functions (IRF) were estimated between the processed surface EMG and torque. It was demonstrated that: 1) at low contraction bandwidths, the identified IRFs had unphysiological anticipatory (i.e., non-causal) components, whose amplitude decreased as the contraction bandwidth increased. We hypothesized that this non-causal behavior arose, because the EMG input contained a component due to feedback from the output torque, i.e., it was recorded from within a closed-loop. Vision was not the feedback source since the non-causal behavior persisted when visual feedback was removed. Repeating the identification using a nonparametric closed-loop identification algorithm yielded causal IRFs at all bandwidths, supporting this hypothesis. 2) EMG-torque dynamics became faster and the bandwidth of system increased as contraction modulation rate increased. Thus, accurate prediction of torque from EMG signals must take into account the contraction bandwidth sensitivity of this system.
一个精确的肌电图(EMG)-扭矩动力学模型有许多用途。它的一个应用在研究人员中引起了高度关注,即用于估计肌肉收缩水平,以实现假肢的有效控制。在本文中,使用系统识别技术研究了人体踝关节等长收缩时表面 EMG 与扭矩之间的动态关系。被试者通过激活胫骨前肌自愿调节其踝关节背屈方向的扭矩,同时在扭矩匹配任务中跟踪伪随机二进制序列。通过改变视觉命令切换时间来评估由扭矩谱描述的收缩带宽对 EMG-扭矩动力学的影响。在处理后的表面 EMG 和扭矩之间估计了非参数脉冲响应函数(IRF)。结果表明:1)在低收缩带宽下,识别出的 IRF 具有非生理的预期(即非因果)分量,其幅度随着收缩带宽的增加而减小。我们假设这种非因果行为是由于 EMG 输入中包含了来自输出扭矩的反馈分量,即它是在闭环中记录的。由于当去除视觉反馈时非因果行为仍然存在,因此视觉不是反馈源。使用非参数闭环识别算法重复识别产生了所有带宽的因果 IRF,支持了这一假设。2)随着收缩调制率的增加,EMG-扭矩动力学变得更快,系统带宽增加。因此,从 EMG 信号准确预测扭矩必须考虑到该系统对收缩带宽的敏感性。