首页> 美国卫生研究院文献>Frontiers in Systems Neuroscience >The Effect of Common Signals on Power Coherence and Granger Causality: Theoretical Review Simulations and Empirical Analysis of Fruit Fly LFPs Data
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The Effect of Common Signals on Power Coherence and Granger Causality: Theoretical Review Simulations and Empirical Analysis of Fruit Fly LFPs Data

机译:共同信号对力量连贯性和格兰杰因果关系的影响:果蝇LFP数据的理论综述模拟和经验分析

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摘要

When analyzing neural data it is important to consider the limitations of the particular experimental setup. An enduring issue in the context of electrophysiology is the presence of common signals. For example a non-silent reference electrode adds a common signal across all recorded data and this adversely affects functional and effective connectivity analysis. To address the common signals problem, a number of methods have been proposed, but relatively few detailed investigations have been carried out. As a result, our understanding of how common signals affect neural connectivity estimation is incomplete. For example, little is known about recording preparations involving high spatial-resolution electrodes, used in linear array recordings. We address this gap through a combination of theoretical review, simulations, and empirical analysis of local field potentials recorded from the brains of fruit flies. We demonstrate how a framework that jointly analyzes power, coherence, and quantities based on Granger causality reveals the presence of common signals. We further show that subtracting spatially adjacent signals (bipolar derivations) largely removes the effects of the common signals. However, in some special cases this operation itself introduces a common signal. We also show that Granger causality is adversely affected by common signals and that a quantity referred to as “instantaneous interaction” is increased in the presence of common signals. The theoretical review, simulation, and empirical analysis we present can readily be adapted by others to investigate the nature of the common signals in their data. Our contributions improve our understanding of how common signals affect power, coherence, and Granger causality and will help reduce the misinterpretation of functional and effective connectivity analysis.
机译:在分析神经数据时,重要的是要考虑特定实验设置的局限性。在电生理学中一个持久的问题是常见信号的存在。例如,无声的参比电极会在所有记录的数据上添加一个公共信号,这会对功能和有效的连通性分析产生不利影响。为了解决公共信号问题,已经提出了许多方法,但是已经进行了相对较少的详细研究。结果,我们对常见信号如何影响神经连通性估计的理解还不完整。例如,对于线性阵列记录中使用的涉及高空间分辨率电极的记录准备工作知之甚少。我们通过对实蝇大脑记录的局部场电势进行理论综述,模拟和实证分析相结合,解决了这一差距。我们演示了一个基于Granger因果关系共同分析能力,连贯性和数量的框架如何揭示共同信号的存在。我们进一步表明,减去空间上相邻的信号(双极导数)在很大程度上消除了公共信号的影响。但是,在某些特殊情况下,此操作本身会引入一个公共信号。我们还表明,格兰杰因果关系受到公共信号的不利影响,并且在存在公共信号的情况下,被称为“瞬时相互作用”的数量增加了。我们提出的理论评论,模拟和经验分析可以很容易地被其他人改编,以研究其数据中常见信号的性质。我们的贡献使我们更好地理解了常见信号如何影响功率,连贯性和格兰杰因果关系,并将有助于减少对功能性和有效连接性分析的误解。

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