利用脑电-脑机接口系统研究机器人手部运动中意图检测的电极位置

Maryam Butt, G. Naghdy, F. Naghdy, Geoffrey Murray, H. Du
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引用次数: 3

摘要

结合机器人辅助技术从大脑信号中检测运动意图有可能被用作中风后患者的有效康复过程。通过部署AMADEO手部康复机器人装置和基于脑电图的脑机干扰(EEG-BCI)系统,探讨该方法在脑卒中后患者手部运动恢复中的技术可行性。两种不同的方案,包括简单的视觉线索和一个2D互动游戏呈现给健康的受试者进行手部运动。利用支持向量机(SVM)算法检测各协议过程中产生的电机意图信号。此外,分析了不同单电极产生的信号,以识别对意图信号贡献最大的电极和支持向量机相对于每个协议的性能。总体而言,视觉提示方案的平均真阳性率(TPR)为71.72%,真阴性率(TNR)为63.33%,游戏方案的平均真阳性率(TPR)为88.56%,真阴性率(TNR)为70.81%。
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Investigating Electrode Sites for Intention Detection During Robot Based Hand Movement Using EEG-BCI System
Detection of motor intention from brain signals combined with robot assistive technologies has potential to be used as an effective rehabilitation process for post-stroke patients. The work conducted on the deployment of AMADEO hand rehabilitation robotic device and Electroencephalogram based Brain Computer Interference (EEG-BCI) system to explore the technical feasibility of the approach in hand motor recovery of post-stroke patients is presented. Two different protocols consisting of simple visual cues and a 2D interactive game are presented to healthy subjects when performing hand movement. The motor intent signals produced during each protocol are detected using Support Vector Machine (SVM) algorithm. Moreover, the signals produced by different single electrodes are analyzed to identify the electrode making the highest contribution to the intent signal and the performance of SVM with respect to each protocol. Overall, an average True Positive Rate (TPR) of 71.72% and True Negative Rate (TNR) of 63.33% for visual cue protocol and an average TPR of 88.56% and TNR of 70.81% for game protocol are obtained.
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