Racz Frigyes Samuel, Stylianou Orestis, Mukli Peter, Eke Andras
Department of Physiology, Semmelweis University, Budapest, Hungary.
Front Physiol. 2018 Nov 30;9:1704. doi: 10.3389/fphys.2018.01704. eCollection 2018.
Assessing the functional connectivity (FC) of the brain has proven valuable in enhancing our understanding of brain function. Recent developments in the field demonstrated that FC fluctuates even in the resting state, which has not been taken into account by the widely applied static approaches introduced earlier. In a recent study using functional near-infrared spectroscopy (fNIRS) global dynamic functional connectivity (DFC) has also been found to fluctuate according to scale-free i.e., fractal dynamics evidencing the true multifractal (MF) nature of DFC in the human prefrontal cortex. Expanding on these findings, we performed electroencephalography (EEG) measurements in 14 regions over the whole cortex of 24 healthy, young adult subjects in eyes open (EO) and eyes closed (EC) states. We applied dynamic graph theoretical analysis to capture DFC by computing the pairwise time-dependent synchronization between brain regions and subsequently calculating the following dynamic graph topological measures: Density, Clustering Coefficient, and Efficiency. We characterized the dynamic nature of these global network metrics as well as local individual connections in the networks using focus-based multifractal time series analysis in all traditional EEG frequency bands. Global network topological measures were found fluctuating-albeit at different extent-according to true multifractal nature in all frequency bands. Moreover, the monofractal Hurst exponent was found higher during EC than EO in the alpha and beta bands. Individual connections showed a characteristic topology in their fractal properties, with higher autocorrelation owing to short-distance connections-especially those in the frontal and pre-frontal cortex-while long-distance connections linking the occipital to the frontal and pre-frontal areas expressed lower values. The same topology was found with connection-wise multifractality in all but delta band connections, where the very opposite pattern appeared. This resulted in a positive correlation between global autocorrelation and connection-wise multifractality in the higher frequency bands, while a strong anticorrelation in the delta band. The proposed analytical tools allow for capturing the fine details of functional connectivity dynamics that are evidently present in DFC, with the presented results implying that multifractality is indeed an inherent property of both global and local DFC.
事实证明,评估大脑的功能连接性(FC)对于增进我们对大脑功能的理解具有重要价值。该领域的最新进展表明,即使在静息状态下,FC也会波动,而早期广泛应用的静态方法并未考虑到这一点。在最近一项使用功能近红外光谱(fNIRS)的研究中,还发现全局动态功能连接性(DFC)会根据无标度(即分形动力学)波动,这证明了人类前额叶皮质中DFC的真正多重分形(MF)性质。基于这些发现,我们对24名健康的年轻成年受试者在睁眼(EO)和闭眼(EC)状态下的整个皮质的14个区域进行了脑电图(EEG)测量。我们应用动态图论分析来通过计算脑区之间成对的时间依赖性同步并随后计算以下动态图拓扑度量来捕获DFC:密度、聚类系数和效率。我们使用所有传统EEG频段中基于焦点的多重分形时间序列分析来表征这些全局网络度量以及网络中局部个体连接的动态性质。发现全局网络拓扑度量在所有频段中都根据真正的多重分形性质波动,尽管波动程度不同。此外,在α和β频段中,发现闭眼时的单分形赫斯特指数高于睁眼时。个体连接在其分形特性中表现出一种特征拓扑,由于短距离连接(特别是前额叶和前额皮质中的连接)具有更高的自相关性,而连接枕叶与前额叶和前额区域的长距离连接则表现出较低的值。除了δ频段连接呈现相反模式外,在所有连接中都发现了相同的连接方式多重分形拓扑。这导致在高频段中全局自相关性与连接方式多重分形之间呈正相关,而在δ频段中呈强反相关。所提出的分析工具能够捕获DFC中明显存在的功能连接动力学的精细细节,所呈现的结果表明多重分形确实是全局和局部DFC的固有属性。