Xiao Ran, Ding Lei
School of Electrical and Computer Engineering, University of Oklahoma Norman, OK, USA.
School of Electrical and Computer Engineering, University of Oklahoma Norman, OK, USA ; Biomedical Engineering Center, University of Oklahoma Norman, OK, USA.
Front Neurosci. 2015 Sep 1;9:308. doi: 10.3389/fnins.2015.00308. eCollection 2015.
Mu/beta rhythms are well-studied brain activities that originate from sensorimotor cortices. These rhythms reveal spectral changes in alpha and beta bands induced by movements of different body parts, e.g., hands and limbs, in electroencephalography (EEG) signals. However, less can be revealed in them about movements of different fine body parts that activate adjacent brain regions, such as individual fingers from one hand. Several studies have reported spatial and temporal couplings of rhythmic activities at different frequency bands, suggesting the existence of well-defined spectral structures across multiple frequency bands. In the present study, spectral principal component analysis (PCA) was applied on EEG data, obtained from a finger movement task, to identify cross-frequency spectral structures. Features from identified spectral structures were examined in their spatial patterns, cross-condition pattern changes, detection capability of finger movements from resting, and decoding performance of individual finger movements in comparison to classic mu/beta rhythms. These new features reveal some similar, but more different spatial and spectral patterns as compared with classic mu/beta rhythms. Decoding results further indicate that these new features (91%) can detect finger movements much better than classic mu/beta rhythms (75.6%). More importantly, these new features reveal discriminative information about movements of different fingers (fine body-part movements), which is not available in classic mu/beta rhythms. The capability in decoding fingers (and hand gestures in the future) from EEG will contribute significantly to the development of non-invasive BCI and neuroprosthesis with intuitive and flexible controls.
μ/β节律是起源于感觉运动皮层的、经过充分研究的脑电活动。这些节律揭示了脑电图(EEG)信号中由身体不同部位(如手和四肢)运动所诱发的α和β频段的频谱变化。然而,对于激活相邻脑区的不同精细身体部位的运动,比如一只手的单个手指的运动,从这些节律中能了解到的信息较少。多项研究报告了不同频段节律活动的空间和时间耦合,这表明在多个频段存在明确的频谱结构。在本研究中,将频谱主成分分析(PCA)应用于从手指运动任务中获取的EEG数据,以识别跨频频谱结构。对识别出的频谱结构的特征进行了空间模式、跨条件模式变化、从静息状态检测手指运动的能力以及与经典μ/β节律相比的单个手指运动解码性能等方面的研究。与经典μ/β节律相比,这些新特征揭示了一些相似但更多不同的空间和频谱模式。解码结果进一步表明,这些新特征(91%)比经典μ/β节律(75.6%)能更好地检测手指运动。更重要的是,这些新特征揭示了关于不同手指运动(精细身体部位运动)的判别性信息,而这在经典μ/β节律中是不存在的。从EEG中解码手指(以及未来的手势)的能力将对具有直观灵活控制的非侵入性脑机接口和神经假体的发展做出重大贡献。