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通过非侵入性脑电图获取的大脑活动解码重复性手指运动。

Decoding repetitive finger movements with brain activity acquired via non-invasive electroencephalography.

作者信息

Paek Andrew Y, Agashe Harshavardhan A, Contreras-Vidal José L

机构信息

Laboratory for Non-invasive Brain-Machine Interface Systems, Department of Electrical and Computer Engineering, University of Houston Houston, TX, USA.

出版信息

Front Neuroeng. 2014 Mar 13;7:3. doi: 10.3389/fneng.2014.00003. eCollection 2014.

Abstract

We investigated how well repetitive finger tapping movements can be decoded from scalp electroencephalography (EEG) signals. A linear decoder with memory was used to infer continuous index finger angular velocities from the low-pass filtered fluctuations of the amplitude of a plurality of EEG signals distributed across the scalp. To evaluate the accuracy of the decoder, the Pearson's correlation coefficient (r) between the observed and predicted trajectories was calculated in a 10-fold cross-validation scheme. We also assessed attempts to decode finger kinematics from EEG data that was cleaned with independent component analysis (ICA), EEG data from peripheral sensors, and EEG data from rest periods. A genetic algorithm (GA) was used to select combinations of EEG channels that maximized decoding accuracies. Our results (lower quartile r = 0.18, median r = 0.36, upper quartile r = 0.50) show that delta-band EEG signals contain useful information that can be used to infer finger kinematics. Further, the highest decoding accuracies were characterized by highly correlated delta band EEG activity mostly localized to the contralateral central areas of the scalp. Spectral analysis of EEG also showed bilateral alpha band (8-13 Hz) event related desynchronizations (ERDs) and contralateral beta band (20-30 Hz) event related synchronizations (ERSs) localized over central scalp areas. Overall, this study demonstrates the feasibility of decoding finger kinematics from scalp EEG signals.

摘要

我们研究了如何从头皮脑电图(EEG)信号中解码重复性手指敲击动作。使用具有记忆功能的线性解码器,根据分布在头皮上的多个EEG信号幅度的低通滤波波动来推断连续的食指角速度。为了评估解码器的准确性,在10折交叉验证方案中计算观察到的轨迹与预测轨迹之间的皮尔逊相关系数(r)。我们还评估了从经独立成分分析(ICA)清洗的EEG数据、来自外周传感器的EEG数据以及休息期的EEG数据中解码手指运动学的尝试。使用遗传算法(GA)选择能使解码准确率最大化的EEG通道组合。我们的结果(下四分位数r = 0.18,中位数r = 0.36,上四分位数r = 0.50)表明,δ波段EEG信号包含可用于推断手指运动学的有用信息。此外,最高的解码准确率的特征是高度相关的δ波段EEG活动大多局限于头皮的对侧中央区域。EEG的频谱分析还显示,双侧α波段(8 - 13Hz)事件相关去同步化(ERD)和对侧β波段(20 - 30Hz)事件相关同步化(ERS)出现在中央头皮区域。总体而言,本研究证明了从头皮EEG信号中解码手指运动学的可行性。

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