Gandolla Marta, Ferrante Simona, Ferrigno Giancarlo, Baldassini Davide, Molteni Franco, Guanziroli Eleonora, Cotti Cottini Michele, Seneci Carlo, Pedrocchi Alessandra
1 Department of Electronics, Information, and Bioengineering (DEIB), Politecnico di Milano, Milano, Italy.
2 Villa Beretta Rehabilitation Centre, Valduce Hospital, Costamasnaga, Italy.
J Int Med Res. 2017 Dec;45(6):1831-1847. doi: 10.1177/0300060516656689. Epub 2016 Sep 27.
Objective To design and implement an electromyography (EMG)-based controller for a hand robotic assistive device, which is able to classify the user's motion intention before the effective kinematic movement execution. Methods Multiple degrees-of-freedom hand grasp movements (i.e. pinching, grasp an object, grasping) were predicted by means of surface EMG signals, recorded from 10 bipolar EMG electrodes arranged in a circular configuration around the forearm 2-3 cm from the elbow. Two cascaded artificial neural networks were then exploited to detect the patient's motion intention from the EMG signal window starting from the electrical activity onset to movement onset (i.e. electromechanical delay). Results The proposed approach was tested on eight healthy control subjects (4 females; age range 25-26 years) and it demonstrated a mean ± SD testing performance of 76% ± 14% for correctly predicting healthy users' motion intention. Two post-stroke patients tested the controller and obtained 79% and 100% of correctly classified movements under testing conditions. Conclusion A task-selection controller was developed to estimate the intended movement from the EMG measured during the electromechanical delay.
目的 设计并实现一种基于肌电图(EMG)的手部机器人辅助设备控制器,该控制器能够在有效的运动学运动执行之前对用户的运动意图进行分类。方法 通过表面肌电信号预测多自由度手部抓握动作(即捏、抓握物体、握持),这些信号由10个双极肌电电极记录,电极围绕前臂肘部2 - 3厘米处呈圆形排列。然后利用两个级联的人工神经网络,从肌电信号窗口(从电活动开始到运动开始,即机电延迟)检测患者的运动意图。结果 该方法在8名健康对照受试者(4名女性;年龄范围25 - 26岁)上进行了测试,结果表明,对于正确预测健康用户的运动意图,其平均测试性能为76% ± 14%。两名中风后患者测试了该控制器,在测试条件下正确分类运动的比例分别为79%和100%。结论 开发了一种任务选择控制器,用于从机电延迟期间测量的肌电信号中估计预期运动。