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Detecting multivariate cross-correlation between brain regions

机译:检测大脑区域之间的多元互相关

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摘要

The problem of identifying functional connectivity from multiple time series data recorded in each of two or more brain areas arises in many neuroscientific investigations. For a single stationary time series in each of two brain areas statistical tools such as cross-correlation and Granger causality may be applied. On the other hand, to examine multivariate interactions at a single time point, canonical correlation, which finds the linear combinations of signals that maximize the correlation, may be used. We report here a new method that produces interpretations much like these standard techniques and, in addition, 1) extends the idea of canonical correlation to 3-way arrays (with dimensionality number of signals by number of time points by number of trials), 2) allows for nonstationarity, 3) also allows for nonlinearity, 4) scales well as the number of signals increases, and 5) captures predictive relationships, as is done with Granger causality. We demonstrate the effectiveness of the method through simulation studies and illustrate by analyzing local field potentials recorded from a behaving primate.>NEW & NOTEWORTHY Multiple signals recorded from each of multiple brain regions may contain information about cross-region interactions. This article provides a method for visualizing the complicated interdependencies contained in these signals and assessing them statistically. The method combines signals optimally but allows the resulting measure of dependence to change, both within and between regions, as the responses evolve dynamically across time. We demonstrate the effectiveness of the method through numerical simulations and by uncovering a novel connectivity pattern between hippocampus and prefrontal cortex during a declarative memory task.
机译:从两个或多个大脑区域的每个区域中记录的多个时间序列数据中识别功能连通性的问题出现在许多神经科学研究中。对于两个大脑区域的每个区域中的单个固定时间序列,可以应用统计工具,例如互相关和格兰杰因果关系。另一方面,为了检查单个时间点的多元交互作用,可以使用典范的相关性,该相关性找到使相关性最大化的信号的线性组合。我们在这里报告一种产生与这些标准技术非常类似的解释的新方法,此外,1)将规范相关性的概念扩展到3路阵列(信号的维数,时间点数和试验次数),2 )允许非平稳性; 3)允许非线性; 4)随着信号数量的增加而缩放; 5)捕获预测关系,就像格兰杰因果关系一样。我们通过仿真研究证明了该方法的有效性,并通过分析从灵长类灵长类动物记录的局部场电势进行了说明。> NEW&NOTEWORTHY 从多个大脑区域的每个区域记录的多个信号可能包含有关跨区域相互作用的信息。本文提供了一种可视化这些信号中包含的复杂相互依赖关系并进行统计评估的方法。该方法可以最佳地组合信号,但是由于响应随时间动态变化,因此可以在区域内和区域之间对相关性的测量结果进行更改。我们通过数值模拟并通过在声明性记忆任务中发现海马体与前额叶皮层之间的新型连通性模式,证明了该方法的有效性。

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