Institute of Biomedical Engineering, University of Science and Technology of China, Hefei, People's Republic of China.
J Neural Eng. 2013 Aug;10(4):046015. doi: 10.1088/1741-2560/10/4/046015. Epub 2013 Jul 17.
This study investigates the effect of the involuntary motor activity of paretic-spastic muscles on the classification of surface electromyography (EMG) signals.
Two data collection sessions were designed for 8 stroke subjects to voluntarily perform 11 functional movements using their affected forearm and hand at relatively slow and fast speeds. For each stroke subject, the degree of involuntary motor activity present in the voluntary surface EMG recordings was qualitatively described from such slow and fast experimental protocols. Myoelectric pattern recognition analysis was performed using different combinations of voluntary surface EMG data recorded from the slow and fast sessions.
Across all tested stroke subjects, our results revealed that when involuntary surface EMG is absent or present in both the training and testing datasets, high accuracies (>96%, >98%, respectively, averaged over all the subjects) can be achieved in the classification of different movements using surface EMG signals from paretic muscles. When involuntary surface EMG was solely involved in either the training or testing datasets, the classification accuracies were dramatically reduced (<89%, <85%, respectively). However, if both the training and testing datasets contained EMG signals with the presence and absence of involuntary EMG interference, high accuracies were still achieved (>97%).
The findings of this study can be used to guide the appropriate design and implementation of myoelectric pattern recognition based systems or devices toward promoting robot-aided therapy for stroke rehabilitation.
本研究旨在探讨失神经痉挛肌肉的不自主运动对表面肌电(EMG)信号分类的影响。
设计了两个数据采集阶段,共有 8 名中风患者参与,以相对较慢和较快的速度使用受影响的前臂和手部进行 11 项功能性运动。对于每个中风患者,从这些缓慢和快速的实验方案中定性描述自愿表面 EMG 记录中存在的不自主运动程度。使用从缓慢和快速会话记录的自愿表面 EMG 数据的不同组合来进行肌电模式识别分析。
在所有测试的中风患者中,我们的结果表明,当自愿表面 EMG 在训练和测试数据集中均不存在或均存在时,使用来自瘫痪肌肉的表面 EMG 信号对不同运动的分类可以达到很高的准确性(>96%,>98%,分别平均所有患者)。当自愿表面 EMG 仅存在于训练或测试数据集中时,分类准确性显著降低(<89%,<85%,分别)。然而,如果训练和测试数据集都包含存在和不存在不自主 EMG 干扰的 EMG 信号,则仍然可以实现很高的准确性(>97%)。
本研究的发现可用于指导基于肌电模式识别的系统或设备的适当设计和实施,以促进中风康复的机器人辅助治疗。