Department of Electrical and Computer Engineering, University of British Columbia, 2332 Main Mall, Vancouver, BC, Canada V6T 1Z4.
Neuroimage. 2012 Nov 15;63(3):1498-509. doi: 10.1016/j.neuroimage.2012.08.023. Epub 2012 Aug 15.
Electroencephalography (EEG) and simultaneously-recorded electromyography (EMG) data are a means to assess integrity of the functional connection between the cortex and the muscle during movement. EEG-EMG coupling is typically assessed with pair-wise squared coherence, resulting in a small, but statistically-significant coherence between a single EEG and a single EMG channel. However, a means to combine results across subjects is not straightforward with this approach because the exact frequency of maximal EEG-EMG coupling may vary between individuals, and it emphasizes the role of an individual locus in the brain in driving the muscle activity, when interactions between head regions may in fact be more influential on ongoing EMG activity. To deal with these issues, we implemented a multiblock Partial Least Squares (mbPLS) procedure, previously proposed in chemical applications, which incorporates a hierarchical structure into the ordinary two-block PLS often used in neuroimaging studies. In the current implementation, each subject's data features are collected in individual data blocks on a sub-level, while simultaneously aggregating the sub-level information to obtain a super-level group "consensus". We further extended the mbPLS model to include 3-dimensional matrices: time-frequency-EEG channel and a time-frequency-connection utilizing Partial Directed Coherence (PDC). We applied the proposed method to concurrent EEG and EMG data collected from ten normal subjects and nine patients with mild-moderate Parkinson's disease (PD) performing a dynamic motor task-that of sinusoidal squeezing. The results demonstrate that connections between EEG electrodes, rather than activity at individual electrodes, correspond more closely to ongoing EMG activity. In PD subjects, there was enhanced connectivity to and from occipital regions, likely related to the previously-described enhanced use of visual information during motor performance in this group. The proposed mbPLS framework is a promising technique for performing multi-subject, multi-modal data analysis and it allows for robust group inferences even in the face of large inter-subject variability.
脑电图(EEG)和同时记录的肌电图(EMG)数据是评估运动过程中皮层和肌肉之间功能连接完整性的一种手段。EEG-EMG 耦合通常通过两两平方相干性进行评估,导致单个 EEG 和单个 EMG 通道之间存在小但具有统计学意义的相干性。然而,由于这种方法的最大 EEG-EMG 耦合的确切频率可能因人而异,并且强调了大脑中单个位置在驱动肌肉活动中的作用,而实际上头部区域之间的相互作用可能对正在进行的 EMG 活动更有影响,因此,没有一种简单的方法可以将结果组合到不同的个体中。为了解决这些问题,我们实现了一种多块偏最小二乘法(mbPLS)过程,该方法先前在化学应用中提出,它将层次结构纳入神经影像学研究中常用的普通两区块 PLS 中。在当前的实现中,每个被试的数据特征在子级别上收集在单独的数据块中,同时汇总子级别信息以获得超级级别组“共识”。我们进一步将 mbPLS 模型扩展到包括 3 维矩阵:时频-EEG 通道和利用偏部分相干性(PDC)的时频连接。我们将所提出的方法应用于从十个正常受试者和九个患有轻度至中度帕金森病(PD)的受试者同时采集的 EEG 和 EMG 数据,这些受试者正在执行动态运动任务,即正弦挤压。结果表明,与单个电极的活动相比,EEG 电极之间的连接与正在进行的 EMG 活动更紧密相关。在 PD 受试者中,从枕叶区域到枕叶区域的连接增强,这可能与该组在运动表现中先前描述的增强使用视觉信息有关。所提出的 mbPLS 框架是一种有前途的技术,可用于进行多主体、多模态数据分析,并且即使在面对大的个体间变异性的情况下,也可以进行稳健的组推断。