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Decoding Imagined 3D Arm Movement Trajectories From EEG to Control Two Virtual Arms—A Pilot Study

机译:从脑电图中解码图像的3D ARM运动轨迹控制两个虚拟臂-A试验研究

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摘要

Background: Realization of online control of an artificial or virtual arm using information decoded from EEG normally occurs by classifying different activation states or voluntary modulation of the sensorimotor activity linked to different overt actions of the subject. However, using a more natural control scheme, such as decoding the trajectory of imagined 3D arm movements to move a prosthetic, robotic, or virtual arm has been reported in a limited amount of studies, all using offline feed-forward control schemes.Objective: In this study, we report the first attempt to realize online control of two virtual arms generating movements toward three targets/arm in 3D space. The 3D trajectory of imagined arm movements was decoded from power spectral density of mu, low beta, high beta, and low gamma EEG oscillations using multiple linear regression. The analysis was performed on a dataset recorded from three subjects in seven sessions wherein each session comprised three experimental blocks: an offline calibration block and two online feedback blocks. Target classification accuracy using predicted trajectories of the virtual arms was computed and compared with results of a filter-bank common spatial patterns (FBCSP) based multi-class classification method involving mutual information (MI) selection and linear discriminant analysis (LDA) modules.Main Results: Target classification accuracy from predicted trajectory of imagined 3D arm movements in the offline runs for two subjects (mean 45%, std 5%) was significantly higher (p < 0.05) than chance level (33.3%). Nevertheless, the accuracy during real-time control of the virtual arms using the trajectory decoded directly from EEG was in the range of chance level (33.3%). However, the results of two subjects show that false-positive feedback may increase the accuracy in closed-loop. The FBCSP based multi-class classification method distinguished imagined movements of left and right arm with reasonable accuracy for two of the three subjects (mean 70%, std 5% compared to 50% chance level). However, classification of the imagined arm movement toward three targets was not successful with the FBCSP classifier as the achieved accuracy (mean 33%, std 5%) was similar to the chance level (33.3%). Sub-optimal components of the multi-session experimental paradigm were identified, and an improved paradigm proposed.
机译:背景技术:使用从EEG解码的信息的信息进行在线控制通常通过对与对象的不同公开动作相关的传感器活动进行分类或对传感器活动的自愿调制来进行。然而,使用更自然的控制方案,例如解码想象的3D臂运动的轨迹,以在有限的研究中报告了在有限的研究中地报告了假体,机器人或虚拟臂,所有这些都使用离线前馈控制方案来了解.bjective:在这项研究中,我们报告了第一次尝试实现对三个目标/手臂的两个虚拟臂的在线控制在3D空间中的运动。使用多元线性回归从MU,低β,高β和低伽马EEG振荡的功率谱密度解码了想象的臂运动的3D轨迹。在从七个会话中的三个科目中记录的数据集上执行分析,其中每个会话包括三个实验块:离线校准块和两个在线反馈块。计算使用虚拟臂的预测轨迹的目标分类精度,并与涉及互信息(MI)选择和线性判别分析(LDA)模块的基于滤波器 - 银行常见空间模式(FBCSP)的多级分类方法的结果进行比较。结果:从预测的轨迹的目标分类精度在两个受试者的离线运行中的预测轨迹(平均45%,STD 5%)明显高(P <0.05),而不是偶变水平(33.3%)。尽管如此,使用直接从脑电图直接解码的虚拟臂的实时控制期间的准确性在机会水平范围内(33.3%)。然而,两个受试者的结果表明假阳性反馈可能会增加闭环中的精度。基于FBCSP的多级分类方法可分辨出左臂和右臂的图像,具有合理的精度对于三个受试者中的两个(平均70%,STD 5%与50%的机会水平相比)。然而,在FBCSP分类器中,Imagined ARM运动对三个目标的分类并不成功,因为FBCSP分类器作为实现的准确性(平均33%,STD 5%)类似于机会水平(33.3%)。鉴定了多次会议实验范式的次优性分量,提出了一种改进的范式。

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