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Multivariate partial coherence analysis for identification of neuronal connectivity from multiple electrode array recordings

机译:用于从多个电极阵列记录中识别神经元连通性的多元部分相干分析

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Studying the neuronal pattern of interactions may help us to understand the underlying processes of functional connectivity in the brain. Simultaneous recording of multiple neuronal activities using a multi electrode array provides rich neuronal signals and requires appropriate statistical and computational methods to demonstrate any connectivity. Using ordinary coherence to infer true connectivity between two neurons is subject to influence from other intermediate neurons (predictors). This study uses multivariate partial coherence analysis to estimate the synchronization of spiking neurons from recorded signals. The objective is to develop an algorithm to differentiate between conditional and unconditional independence among neurons. This may provide useful information on how neurons interact to transmit or receive signals by taking into account the influence from the predictors. In this paper, we validate the method of multivariate partial coherence analysis on a network of spiking neurons consisting of nine interconnected neurons simulated by the Izhikevich model. Then we implement this method on physiological signals to infer the connectivity among ten neurons recorded across different areas of rat hippocampus. Our analyses show the applicability of the proposed method for identifying the true connectivity in the simulated data. We also present the effect of predictor neurons on pairwise indirect relationships within specific frequency content. Conditional independence links in real data are reduced by 53% compared with unconditional links. The proposed method could be a valuable tool for observing the connectivity between neurons during normal and abnormal cognitive responses.
机译:研究相互作用的神经元模式可能有助于我们了解大脑功能连接的潜在过程。使用多电极阵列同时记录多个神经元活动可提供丰富的神经元信号,并需要适当的统计和计算方法来证明任何连通性。使用普通的相干性推断两个神经元之间的真实连通性会受到其他中间神经元(预测变量)的影响。这项研究使用多变量部分相干分析,从记录的信号估计尖峰神经元的同步。目的是开发一种算法,以区分神经元之间的条件独立性和无条件独立性。通过考虑来自预测变量的影响,这可以提供有关神经元如何相互作用以传输或接收信号的有用信息。在本文中,我们验证了由Izhikevich模型模拟的由9个互连神经元组成的尖峰神经元网络的多元局部相干分析方法。然后,我们对生理信号实施此方法,以推断在大鼠海马不同区域记录的十个神经元之间的连通性。我们的分析表明,所提出的方法可用于识别模拟数据中的真实连通性。我们还介绍了预测神经元对特定频率范围内的成对间接关系的影响。与无条件链接相比,真实数据中的有条件独立链接减少了53%。所提出的方法可能是观察正常和异常认知反应期间神经元之间的连通性的有价值的工具。

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