Ten Caat Michael, Lorist Monicque M, Bezdan Eniko, Roerdink Jos B T M, Maurits Natasha M
Institute for Mathematics and Computing Science, University of Groningen, The Netherlands.
J Neurosci Methods. 2008 Jun 30;171(2):271-8. doi: 10.1016/j.jneumeth.2008.03.022. Epub 2008 Apr 11.
Electroencephalography (EEG) coherence provides a quantitative measure of functional brain connectivity which is calculated between pairs of signals as a function of frequency. Without hypotheses, traditional coherence analysis would be cumbersome for high-density EEG which employs a large number of electrodes. One problem is to find the most relevant regions and coherences between those regions in individuals and groups. Therefore, we previously developed a data-driven approach for individual as well as group analyses of high-density EEG coherence. Its data-driven regions of interest (ROIs) are referred to as functional units (FUs) and are defined as spatially connected sets of electrodes that record pairwise significantly coherent signals. Here, we apply our data-driven approach to a case study of mental fatigue. We show that our approach overcomes the severe limitations of conventional hypothesis-driven methods which depend on previous investigations and leads to a selection of coherences of interest taking full advantage of the recordings under investigation. The presented visualization of (group) FU maps provides a very economical data summary of extensive experimental results, which otherwise would be very difficult and time-consuming to assess. Our approach leads to an FU selection which may serve as a basis for subsequent conventional quantitative analysis; thus it complements rather than replaces the hypothesis-driven approach.
脑电图(EEG)相干性提供了一种功能性脑连接的定量测量方法,它是根据频率在成对信号之间计算得出的。在没有假设的情况下,传统的相干性分析对于采用大量电极的高密度脑电图来说会很繁琐。一个问题是要在个体和群体中找到最相关的区域以及这些区域之间的相干性。因此,我们之前开发了一种数据驱动的方法,用于对高密度脑电图相干性进行个体和群体分析。其数据驱动的感兴趣区域(ROI)被称为功能单元(FU),并被定义为记录成对显著相干信号的空间连接电极集。在这里,我们将数据驱动方法应用于一个精神疲劳的案例研究。我们表明,我们的方法克服了传统假设驱动方法的严重局限性,传统方法依赖于先前的研究,而我们的方法能够充分利用所研究的记录来选择感兴趣的相干性。所呈现的(群体)FU图可视化提供了广泛实验结果的非常经济的数据总结,否则评估起来将非常困难且耗时。我们的方法导致了FU的选择,这可以作为后续传统定量分析的基础;因此,它是对假设驱动方法的补充而非替代。