Iandolo Riccardo, Semprini Marianna, Buccelli Stefano, Barban Federico, Zhao Mingqi, Samogin Jessica, Bonassi Gaia, Avanzino Laura, Mantini Dante, Chiappalone Michela
Rehab TechnologiesIstituto Italiano di Tecnologia 16163 Genova Italy.
Department of Informatics, Bioengineering, Robotics and systems Engineering (DIBRIS)University of Genova Genova Italy.
IEEE Open J Eng Med Biol. 2020 Feb 14;1:57-64. doi: 10.1109/OJEMB.2020.2965323. eCollection 2020.
Functional connectivity (FC) is an important indicator of the brain's state in different conditions, such as rest/task or health/pathology. Here we used high-density electroencephalography coupled to source reconstruction to assess frequency-specific changes of FC during resting state. Specifically, we computed the Small-World Propensity (SWP) index to characterize network small-world architecture across frequencies. We collected resting state data from healthy participants and built connectivity matrices maintaining the heterogeneity of connection strengths. For a subsample of participants, we also investigated whether the SWP captured FC changes after the execution of a working memory (WM) task. We found that SWP demonstrated a selective increase in the alpha and low beta bands. Moreover, SWP was modulated by a cognitive task and showed increased values in the bands entrained by the WM task. SWP is a valid metric to characterize the frequency-specific behavior of resting state networks.
功能连接性(FC)是大脑在不同状态下(如静息/任务或健康/病理状态)的重要指标。在此,我们使用高密度脑电图结合源重建技术来评估静息状态下FC的频率特异性变化。具体而言,我们计算了小世界倾向(SWP)指数,以表征不同频率下网络的小世界架构。我们收集了健康参与者的静息状态数据,并构建了保持连接强度异质性的连接矩阵。对于一部分参与者,我们还研究了SWP是否能捕捉执行工作记忆(WM)任务后FC的变化。我们发现SWP在α和低β频段有选择性增加。此外,SWP受认知任务调制,在WM任务所夹带的频段中值增加。SWP是表征静息状态网络频率特异性行为的有效指标。