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Granger Causality Analysis of Steady-State Electroencephalographic Signals during Propofol-Induced Anaesthesia

机译:异丙酚诱导麻醉期间稳态脑电图信号的格兰杰因果关系分析

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摘要

Changes in conscious level have been associated with changes in dynamical integration and segregation among distributed brain regions. Recent theoretical developments emphasize changes in directed functional (i.e., causal) connectivity as reflected in quantities such as ‘integrated information’ and ‘causal density’. Here we develop and illustrate a rigorous methodology for assessing causal connectivity from electroencephalographic (EEG) signals using Granger causality (GC). Our method addresses the challenges of non-stationarity and bias by dividing data into short segments and applying permutation analysis. We apply the method to EEG data obtained from subjects undergoing propofol-induced anaesthesia, with signals source-localized to the anterior and posterior cingulate cortices. We found significant increases in bidirectional GC in most subjects during loss-of-consciousness, especially in the beta and gamma frequency ranges. Corroborating a previous analysis we also found increases in synchrony in these ranges; importantly, the Granger causality analysis showed higher inter-subject consistency than the synchrony analysis. Finally, we validate our method using simulated data generated from a model for which GC values can be analytically derived. In summary, our findings advance the methodology of Granger causality analysis of EEG data and carry implications for integrated information and causal density theories of consciousness.
机译:意识水平的变化与分布大脑区域之间动态整合和隔离的变化有关。最近的理论发展强调定向功能(即因果关系)连通性的变化,如“综合信息”和“因果密度”之类的数量所反映。在这里,我们开发和说明一种严格的方法,用于使用Granger因果关系(GC)从脑电图(EEG)信号评估因果关系。我们的方法通过将数据分成短段并应用置换分析来解决非平稳性和偏差的挑战。我们将该方法应用于从接受异丙酚诱导麻醉的受试者获得的脑电数据,其信号源位于前扣带回皮层和后扣带皮层。我们发现大部分受试者在失去意识期间双向GC的显着增加,尤其是在β和γ频率范围内。证实先前的分析,我们还发现在这些范围内同步性增加。重要的是,格兰杰因果关系分析显示出受试者之间的一致性高于同步分析。最后,我们使用从可以通过分析得出GC值的模型生成的模拟数据验证我们的方法。总而言之,我们的发现推动了脑电数据Granger因果关系分析的方法论,并为整合信息和意识因果密度理论带来了启示。

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