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Nonparametric test for connectivity detection in multivariate autoregressive networks and application to multiunit activity data

机译:多元自回归网络中连通性检测的非参数测试及其在多单元活动数据中的应用

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摘要

Directed connectivity inference has become a cornerstone in neuroscience to analyze multivariate data from neuroimaging and electrophysiological techniques. Here we propose a nonparametric significance method to test the nonzero values of multivariate autoregressive model to infer interactions in recurrent networks. We use random permutations or circular shifts of the original time series to generate the null-hypothesis distributions. The underlying network model is the same as used in multivariate Granger causality, but our test relies on the autoregressive coefficients instead of error residuals. By means of numerical simulation over multiple network configurations, we show that this method achieves a good control of false positives (type 1 error) and detects existing pairwise connections more accurately than using the standard parametric test for the ratio of error residuals. In practice, our method aims to detect temporal interactions in real neuronal networks with nodes possibly exhibiting redundant activity. As a proof of concept, we apply our method to multiunit activity (MUA) recorded from Utah electrode arrays in a monkey and examine detected interactions between 25 channels. We show that during stimulus presentation our method detects a large number of interactions that cannot be solely explained by the increase in the MUA level.
机译:定向连通性推理已经成为神经科学中分析来自神经成像和电生理技术的多元数据的基石。在这里,我们提出了一种非参数显着性方法来测试多元自回归模型的非零值,以推断递归网络中的相互作用。我们使用原始时间序列的随机排列或循环移位来生成零假设分布。底层网络模型与多元Granger因果关系中使用的模型相同,但我们的测试依赖于自回归系数而不是误差残差。通过对多个网络配置进行数值模拟,我们证明该方法可以很好地控制误报(类型1错误),并且比使用标准参数测试来检验错误残存率,可以更准确地检测现有的成对连接。在实践中,我们的方法旨在检测实际神经元网络中可能表现出冗余活动的节点的时间相互作用。作为概念的证明,我们将我们的方法应用于从猴子的犹他州电极阵列记录的多单位活动(MUA),并检查25个通道之间检测到的相互作用。我们表明,在刺激演示过程中,我们的方法检测到大量的交互作用,而这些交互作用不能仅通过MUA水平的提高来解释。

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