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Subgraph Backbone Analysis of Dynamic Brain Networks during Consciousness and Anesthesia

机译:下意识和麻醉过程中动态大脑网络的主干子图分析

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摘要

General anesthesia significantly alters brain network connectivity. Graph-theoretical analysis has been used extensively to study static brain networks but may be limited in the study of rapidly changing brain connectivity during induction of or recovery from general anesthesia. Here we introduce a novel method to study the temporal evolution of network modules in the brain. We recorded multichannel electroencephalograms (EEG) from 18 surgical patients who underwent general anesthesia with either propofol (n = 9) or sevoflurane (n = 9). Time series data were used to reconstruct networks; each electroencephalographic channel was defined as a node and correlated activity between the channels was defined as a link. We analyzed the frequency of subgraphs in the network with a defined number of links; subgraphs with a high probability of occurrence were deemed network “backbones.” We analyzed the behavior of network backbones across consciousness, anesthetic induction, anesthetic maintenance, and two points of recovery. Constitutive, variable and state-specific backbones were identified across anesthetic state transitions. Brain networks derived from neurophysiologic data can be deconstructed into network backbones that change rapidly across states of consciousness. This technique enabled a granular description of network evolution over time. The concept of network backbones may facilitate graph-theoretical analysis of dynamically changing networks.
机译:全身麻醉会显着改变大脑网络的连通性。图论分析已被广泛用于研究静态大脑网络,但可能在局麻诱导或从全麻恢复中快速改变大脑连通性的研究中受到限制。在这里,我们介绍一种新颖的方法来研究大脑中网络模块的时间演变。我们记录了18例接受丙泊酚(n = 9)或七氟醚(n = 9)全身麻醉的外科手术患者的多通道脑电图(EEG)。时间序列数据用于重建网络;每个脑电图通道定义为一个节点,通道之间的相关活动定义为链接。我们分析了具有定义数量的链接的网络中子图的频率;发生概率较高的子图被视为网络“主干”。我们分析了意识,麻醉诱导,麻醉维持和恢复两点之间网络主干的行为。跨麻醉状态转变确定了组成性,可变性和特定状态的骨干。来自神经生理学数据的脑网络可以被解构成网络主干,这些主干会在意识状态之间快速变化。这项技术可以对网络随时间的演变进行详细描述。网络主干网的概念可以促进动态变化的网络的图论分析。

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