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Integrating cross-frequency and within band functional networks in resting-state MEG: A multi-layer network approach

机译:在静止状态MEG中整合跨频和带内功能网络:一种多层网络方法

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Neuronal oscillations exist across a broad frequency spectrum, and are thought to provide a mechanismof interaction between spatially separated brain regions. Since ongoing mental activity necessitates the simultaneous formation of multiple networks, it seems likely that the brain employs interactions within multiple frequency bands, as well as cross-frequency coupling, to support such networks. Here, we propose a multi-layer network framework that elucidates this pan-spectral picture of network interactions. Our network consists of multiple layers (frequency-band specific networks) that influence each other via inter-layer (cross-frequency) coupling. Applying this model to MEG resting-state data and using envelope correlations as connectivity metric, we demonstrate strong dependency between within layer structure and inter-layer coupling, indicating that networks obtained in different frequency bands do not act as independent entities. More specifically, our results suggest that frequency band specific networks are characterised by a common structure seen across all layers, superimposed by layer specific connectivity, and inter-layer coupling is most strongly associated with this common mode. Finally, using a biophysical model, we demonstrate that there are two regimes of multi-layer network behaviour; one in which different layers are independent and a second in which they operate highly dependent. Results suggest that the healthy human brain operates at the transition point between these regimes, allowing for integration and segregation between layers. Overall, our observations show that a complete picture of global brain network connectivity requires integration of connectivity patterns across the full frequency spectrum. (C) 2016 Published by Elsevier Inc.
机译:神经元振荡存在于广泛的频谱中,并被认为提供了空间上分离的大脑区域之间相互作用的机制。由于正在进行的精神活动需要同时形成多个网络,因此大脑似乎可能会在多个频带内使用交互作用以及跨频耦合来支持此类网络。在这里,我们提出了一个多层网络框架,该框架阐明了网络交互的全景图。我们的网络由多层(特定于频段的网络)组成,这些层通过层间(跨频)耦合相互影响。将该模型应用于MEG静止状态数据,并使用包络相关性作为连通性度量,我们证明了层内结构与层间耦合之间的强烈依赖性,表明在不同频带中获得的网络不充当独立实体。更具体地说,我们的结果表明,特定于频段的网络的特征是在所有层上看到的通用结构,由特定于层的连接性叠加,并且层间耦合与该通用模式关系最密切。最后,使用生物物理模型,我们证明了多层网络行为的两种机制;即:其中一层是不同的层是独立的,另一层是高度相关的。结果表明,健康的人脑在这些机制之间的过渡点起作用,从而允许各层之间的整合和隔离。总体而言,我们的观察结果表明,要想全面了解全球脑网络的连通性,就需要整合整个频谱的连通性模式。 (C)2016由Elsevier Inc.发布

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