La Rocca Daria, Wendt Herwig, van Wassenhove Virginie, Ciuciu Philippe, Abry Patrice
CEA, NeuroSpin, University of Paris-Saclay, Paris, France.
Inria Saclay Île-de-France, Parietal, University of Paris-Saclay, Paris, France.
Front Physiol. 2021 Jan 7;11:578537. doi: 10.3389/fphys.2020.578537. eCollection 2020.
The analysis of human brain functional networks is achieved by computing functional connectivity indices reflecting phase coupling and interactions between remote brain regions. In magneto- and electroencephalography, the most frequently used functional connectivity indices are constructed based on Fourier-based cross-spectral estimation applied to specific fast and band-limited oscillatory regimes. Recently, infraslow arrhythmic fluctuations (below the 1 Hz) were recognized as playing a leading role in spontaneous brain activity. The present work aims to propose to assess functional connectivity from fractal dynamics, thus extending the assessment of functional connectivity to the infraslow arrhythmic or scale-free temporal dynamics of M/EEG-quantified brain activity. Instead of being based on Fourier analysis, new Imaginary Coherence and weighted Phase Lag indices are constructed from complex-wavelet representations. Their performances are first assessed on synthetic data by means of Monte-Carlo simulations, and they are then compared favorably against the classical Fourier-based indices. These new assessments of functional connectivity indices are also applied to MEG data collected on 36 individuals both at rest and during the learning of a visual motion discrimination task. They demonstrate a higher statistical sensitivity, compared to their Fourier counterparts, in capturing significant and relevant functional interactions in the infraslow regime and modulations from rest to task. Notably, the consistent overall increase in functional connectivity assessed from fractal dynamics from rest to task correlated with a change in temporal dynamics as well as with improved performance in task completion, which suggests that the complex-wavelet weighted Phase Lag index is the sole index is able to capture brain plasticity in the infraslow scale-free regime.
对人类大脑功能网络的分析是通过计算反映远距离脑区之间相位耦合和相互作用的功能连接指数来实现的。在磁脑电图和脑电图中,最常用的功能连接指数是基于应用于特定快速和带限振荡状态的基于傅里叶的互谱估计构建的。最近,超低频无节律波动(低于1赫兹)被认为在自发脑活动中起主导作用。本研究旨在提出从分形动力学评估功能连接性,从而将功能连接性评估扩展到M/EEG量化脑活动的超低频无节律或无标度时间动态。新的虚相干和加权相位滞后指数不是基于傅里叶分析,而是从复小波表示构建的。首先通过蒙特卡罗模拟在合成数据上评估它们的性能,然后将它们与经典的基于傅里叶的指数进行比较。这些功能连接指数的新评估也应用于36名个体在静息状态和视觉运动辨别任务学习期间收集的脑磁图数据。与基于傅里叶的对应指数相比,它们在捕获超低频状态下显著且相关的功能相互作用以及从静息到任务的调制方面表现出更高的统计敏感性。值得注意的是,从静息到任务通过分形动力学评估的功能连接性持续整体增加,这与时间动态的变化以及任务完成性能的提高相关,这表明复小波加权相位滞后指数是唯一能够在超低频无标度状态下捕获脑可塑性的指数。