Wang YiYan, Wang Pingxiao, Yu Yuguo
State Key Laboratory of Medical Neurobiology, School of Life Science and the Collaborative Innovation Center for Brain Science, Center for Computational Systems Biology, Institutes of Brain Science, Fudan University, Shanghai, China.
Institute of Modern Physics, Fudan University, Shanghai, China.
Front Neurosci. 2018 Feb 7;12:62. doi: 10.3389/fnins.2018.00062. eCollection 2018.
Increasing evidence indicates that the phase pattern and power of the low frequency oscillations of brain electroencephalograms (EEG) contain significant information during the human cognition of sensory signals such as auditory and visual stimuli. Here, we investigate whether and how the letters of the alphabet can be directly decoded from EEG phase and power data. In addition, we investigate how different band oscillations contribute to the classification and determine the critical time periods. An English letter recognition task was assigned, and statistical analyses were conducted to decode the EEG signal corresponding to each letter visualized on a computer screen. We applied support vector machine (SVM) with gradient descent method to learn the potential features for classification. It was observed that the EEG phase signals have a higher decoding accuracy than the oscillation power information. Low-frequency theta and alpha oscillations have phase information with higher accuracy than do other bands. The decoding performance was best when the analysis period began from 180 to 380 ms after stimulus presentation, especially in the lateral occipital and posterior temporal scalp regions (PO7 and PO8). These results may provide a new approach for brain-computer interface techniques (BCI) and may deepen our understanding of EEG oscillations in cognition.
越来越多的证据表明,在人类对听觉和视觉刺激等感觉信号的认知过程中,脑电图(EEG)低频振荡的相位模式和功率包含重要信息。在此,我们研究字母表中的字母是否以及如何能直接从EEG相位和功率数据中解码出来。此外,我们研究不同频段振荡如何对分类产生影响并确定关键时间段。我们安排了一项英语字母识别任务,并进行统计分析以解码与计算机屏幕上显示的每个字母相对应的EEG信号。我们应用带有梯度下降法的支持向量机(SVM)来学习用于分类的潜在特征。结果发现,EEG相位信号的解码准确率高于振荡功率信息。低频θ波和α波振荡的相位信息比其他频段具有更高的准确率。当分析期从刺激呈现后180至380毫秒开始时,解码性能最佳,尤其是在枕叶外侧和颞叶后部头皮区域(PO7和PO8)。这些结果可能为脑机接口技术(BCI)提供一种新方法,并可能加深我们对认知过程中EEG振荡的理解。