非周期图
联轴节(管道)
功能连接
神经科学
静息状态功能磁共振成像
鉴定(生物学)
计算机科学
任务(项目管理)
人工智能
脑电图
人工神经网络
统计物理学
脑磁图
模式识别(心理学)
同步(交流)
神经网络
物理
生物神经网络
默认模式网络
电生理学
心理学
国家(计算机科学)
生物系统
BETA(编程语言)
功能成像
数学
神经活动
电流(流体)
大脑活动与冥想
语音识别
信号(编程语言)
机器学习
特征(语言学)
功能磁共振成像
认知
网络分析
拓扑(电路)
模块化(生物学)
作者
Noémie Monchy,Joan Duprez,Jean‐François Houvenaghel,Alexandre Legros,Bradley Voytek,Julien Modolo
标识
DOI:10.1523/jneurosci.1041-25.2025
摘要
Functional connectivity (FC) has attracted significant interest in the identification of specific circuits underlying brain (dys)function. Classical analyses to estimate FC (i.e., filtering electrophysiological signals in canonical frequency bands and using connectivity metrics) assume that these reflect oscillatory networks. However, this approach conflates nonoscillatory, aperiodic neural activity with oscillations, raising the possibility that these functional networks may reflect aperiodic rather than oscillatory activity. Here, we provide the first study quantifying, in two different human electroencephalography (EEG) databases (n = 59, 30 females and 29 males; n = 103, 62 females and 41 males), the contribution of aperiodic activity on reconstructed oscillatory functional networks in resting state. We also followed the same approach on cognitive task recordings (n = 59, 30 females and 29 males) as a complementary analysis. We found that ∼99% of delta, theta, and gamma functional networks, over 90% of beta functional networks, and between 23 and 61% of alpha functional networks were actually driven by aperiodic activity. While there is no universal consensus on how to identify and quantify neural oscillations, our results demonstrate that oscillatory functional networks may be drastically sparser than commonly assumed. These findings suggest that most FC studies focusing on resting state data actually reflect aperiodic networks instead of oscillations-based networks. We highly recommend that oscillatory network analyses first check the presence of aperiodicity-unbiased neural oscillations before estimating their statistical coupling to strengthen the robustness, interpretability, and reproducibility of FC studies.
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