Xu Ren, Jiang Ning, Mrachacz-Kersting Natalie, Dremstrup Kim, Farina Dario
Department of Neurorehabilitation Engineering, Bernstein Center for Computational Neuroscience, University Medical CenterGöttingen, Germany; Institute of Computer Science, Faculty of Mathematics and Computer Secience, Georg-August UniversityGöttingen, Germany.
Department of Systems Design Engineering, University of Waterloo Waterloo, ON, Canada.
Front Neurosci. 2016 Jan 21;9:527. doi: 10.3389/fnins.2015.00527. eCollection 2015.
Brain-computer interfacing (BCI) has recently been applied as a rehabilitation approach for patients with motor disorders, such as stroke. In these closed-loop applications, a brain switch detects the motor intention from brain signals, e.g., scalp EEG, and triggers a neuroprosthetic device, either to deliver sensory feedback or to mimic real movements, thus re-establishing the compromised sensory-motor control loop and promoting neural plasticity. In this context, single trial detection of motor intention with short latency is a prerequisite. The performance of the event detection from EEG recordings is mainly determined by three factors: the type of motor imagery (e.g., repetitive, ballistic), the frequency band (or signal modality) used for discrimination (e.g., alpha, beta, gamma, and MRCP, i.e., movement-related cortical potential), and the processing technique (e.g., time-series analysis, sub-band power estimation). In this study, we investigated single trial EEG traces during movement imagination on healthy individuals, and provided a comprehensive analysis of the performance of a short-latency brain switch when varying these three factors. The morphological investigation showed a cross-subject consistency of a prolonged negative phase in MRCP, and a delayed beta rebound in sensory-motor rhythms during repetitive tasks. The detection performance had the greatest accuracy when using ballistic MRCP with time-series analysis. In this case, the true positive rate (TPR) was ~70% for a detection latency of ~200 ms. The results presented here are of practical relevance for designing BCI systems for motor function rehabilitation.
脑机接口(BCI)最近已被用作中风等运动障碍患者的康复方法。在这些闭环应用中,脑开关从脑信号(例如头皮脑电图)中检测运动意图,并触发神经假体装置,以提供感觉反馈或模拟真实运动,从而重新建立受损的感觉运动控制回路并促进神经可塑性。在这种情况下,短潜伏期的运动意图单次试验检测是一个先决条件。从脑电图记录中进行事件检测的性能主要由三个因素决定:运动想象的类型(例如,重复性、弹道式)、用于辨别的频段(或信号模态)(例如,阿尔法、贝塔、伽马和MRCP,即运动相关皮层电位)以及处理技术(例如,时间序列分析、子带功率估计)。在本研究中我们调查健康个体在运动想象期间的单次试验脑电图迹,并在改变这三个因素时对短潜伏期脑开关的性能进行了全面分析。形态学研究显示,在重复性任务期间,MRCP中延长的负相以及感觉运动节律中延迟的贝塔反弹存在跨个体一致性。使用弹道式MRCP和时间序列分析时,检测性能具有最高的准确性。在这种情况下,对于约200毫秒的检测潜伏期,真阳性率(TPR)约为70%。此处呈现的结果对于设计用于运动功能康复的BCI系统具有实际意义。