Department of Neurology, Massachusetts General Hospital, Boston, MA, USA.
J Neurosci. 2012 Feb 22;32(8):2703-13. doi: 10.1523/JNEUROSCI.5669-11.2012.
Functional connectivity networks have become a central focus in neuroscience because they reveal key higher-dimensional features of normal and abnormal nervous system physiology. Functional networks reflect activity-based coupling between brain regions that may be constrained by relatively static anatomical connections, yet these networks appear to support tremendously dynamic behaviors. Within this growing field, the stability and temporal characteristics of functional connectivity brain networks have not been well characterized. We evaluated the temporal stability of spontaneous functional connectivity networks derived from multi-day scalp encephalogram (EEG) recordings in five healthy human subjects. Topological stability and graph characteristics of networks derived from averaged data epochs ranging from 1 s to multiple hours across different states of consciousness were compared. We show that, although functional networks are highly variable on the order of seconds, stable network templates emerge after as little as ∼100 s of recording and persist across different states and frequency bands (albeit with slightly different characteristics in different states and frequencies). Within these network templates, the most common edges are markedly consistent, constituting a network "core." Although average network topologies persist across time, measures of global network connectivity, density and clustering coefficient, are state and frequency specific, with sparsest but most highly clustered networks seen during sleep and in the gamma frequency band. These findings support the notion that a core functional organization underlies spontaneous cortical processing and may provide a reference template on which unstable, transient, and rapidly adaptive long-range assemblies are overlaid in a frequency-dependent manner.
功能连接网络已成为神经科学的一个核心关注点,因为它们揭示了正常和异常神经系统生理学的关键高维特征。功能网络反映了大脑区域之间基于活动的耦合,这种耦合可能受到相对静态解剖连接的限制,但这些网络似乎支持着极其动态的行为。在这个不断发展的领域中,功能连接脑网络的稳定性和时间特征尚未得到很好的描述。我们评估了来自五名健康人类受试者多日头皮脑电图(EEG)记录的自发功能连接网络的时间稳定性。比较了来自不同意识状态的平均数据时段(从 1 秒到多个小时)的网络拓扑稳定性和图特征。我们表明,尽管功能网络在秒级范围内高度变化,但在记录 100 秒左右后,稳定的网络模板就会出现,并在不同状态和频带中持续存在(尽管在不同状态和频率下具有略微不同的特征)。在这些网络模板中,最常见的边缘非常一致,构成了一个网络“核心”。虽然平均网络拓扑结构在时间上保持不变,但全局网络连接、密度和聚类系数等指标是状态和频率特定的,在睡眠和伽马频带中观察到最稀疏但聚类程度最高的网络。这些发现支持了这样一种观点,即自发皮质处理的核心功能组织是存在的,它可能提供了一个参考模板,不稳定、瞬态和快速自适应的长程集合以频率依赖的方式覆盖在该模板上。