Department of Basic Research, Norconnect Inc, Ogdensburg, New York, United States of America.
PLoS One. 2012;7(9):e43945. doi: 10.1371/journal.pone.0043945. Epub 2012 Sep 11.
To elucidate the cortical control of handwriting, we examined time-dependent statistical and correlational properties of simultaneously recorded 64-channel electroencephalograms (EEGs) and electromyograms (EMGs) of intrinsic hand muscles. We introduced a statistical method, which offered advantages compared to conventional coherence methods. In contrast to coherence methods, which operate in the frequency domain, our method enabled us to study the functional association between different neural regions in the time domain. In our experiments, subjects performed about 400 stereotypical trials during which they wrote a single character. These trials provided time-dependent EMG and EEG data capturing different handwriting epochs. The set of trials was treated as a statistical ensemble, and time-dependent correlation functions between neural signals were computed by averaging over that ensemble. We found that trial-to-trial variability of both the EMGs and EEGs was well described by a log-normal distribution with time-dependent parameters, which was clearly distinguished from the normal (Gaussian) distribution. We found strong and long-lasting EMG/EMG correlations, whereas EEG/EEG correlations, which were also quite strong, were short-lived with a characteristic correlation durations on the order of 100 ms or less. Our computations of correlation functions were restricted to the [Formula: see text] spectral range (13-30 Hz) of EEG signals where we found the strongest effects related to handwriting. Although, all subjects involved in our experiments were right-hand writers, we observed a clear symmetry between left and right motor areas: inter-channel correlations were strong if both channels were located over the left or right hemispheres, and 2-3 times weaker if the EEG channels were located over different hemispheres. Although we observed synchronized changes in the mean energies of EEG and EMG signals, we found that EEG/EMG correlations were much weaker than EEG/EEG and EMG/EMG correlations. The absence of strong correlations between EMG and EEG signals indicates that (i) a large fraction of the EEG signal includes electrical activity unrelated to low-level motor variability; (ii) neural processing of cortically-derived signals by spinal circuitry may reduce the correlation between EEG and EMG signals.
为了阐明手写的皮质控制,我们检查了同时记录的 64 通道脑电图(EEG)和内在手部肌肉肌电图(EMG)的时间相关统计和相关特性。我们引入了一种统计方法,与传统的相干方法相比具有优势。与在频域中运行的相干方法不同,我们的方法使我们能够在时域中研究不同神经区域之间的功能关联。在我们的实验中,受试者在大约 400 次刻板试验中执行了一次单个字符的书写。这些试验提供了捕获不同手写阶段的时间相关 EMG 和 EEG 数据。试验集被视为统计集合,并通过在该集合上进行平均来计算神经信号之间的时间相关相关函数。我们发现,EMG 和 EEG 的试验间变异性都很好地由具有时间相关参数的对数正态分布描述,这与正态(高斯)分布明显不同。我们发现 EMG/EMG 相关性很强且持久,而 EEG/EEG 相关性虽然也很强,但持续时间很短,特征相关持续时间约为 100ms 或更短。我们的相关函数计算仅限于 EEG 信号的[公式:见文本]频谱范围(13-30Hz),在该范围内,我们发现与手写相关的最强影响。尽管我们实验中涉及的所有受试者都是右撇子,但我们观察到左右运动区域之间存在明显的对称性:如果两个通道都位于左半球或右半球上方,则通道间相关性很强,如果 EEG 通道位于不同半球,则相关性减弱 2-3 倍。尽管我们观察到 EEG 和 EMG 信号的平均能量同步变化,但我们发现 EEG/EMG 相关性比 EEG/EEG 和 EMG/EMG 相关性弱得多。EMG 和 EEG 信号之间缺乏强相关性表明:(i)EEG 信号的很大一部分包含与低水平运动变异性无关的电活动;(ii)皮质衍生信号由脊髓电路进行神经处理可能会降低 EEG 和 EMG 信号之间的相关性。