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Differential Covariance: A New Class of Methods to Estimate Sparse Connectivity from Neural Recordings

机译:差分协方差:从神经记录估计稀疏连通性的新方法

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摘要

With our ability to record more neurons simultaneously, making sense of these data is a challenge. Functional connectivity is one popular way to study the relationship of multiple neural signals. Correlation-based methods are a set of currently well-used techniques for functional connectivity estimation. However, due to explaining away and unobserved common inputs (), they produce spurious connections. The general linear model (GLM), which models spike trains as Poisson processes (; ; ), avoids these confounds. We develop here a new class of methods by using differential signals based on simulated intracellular voltage recordings. It is equivalent to a regularized AR(2) model. We also expand the method to simulated local field potential recordings and calcium imaging. In all of our simulated data, the differential covariance-based methods achieved performance better than or similar to the GLM method and required fewer data samples. This new class of methods provides alternative ways to analyze neural signals.
机译:由于我们能够同时记录更多的神经元,因此理解这些数据是一个挑战。功能连接是研究多种神经信号之间关系的一种流行方法。基于相关性的方法是用于功能连接性估计的一组当前广泛使用的技术。但是,由于解释了一些和看不见的公共输入(),它们会产生虚假的连接。通用线性模型(GLM)可以在Poisson过程(;;)中对峰值列车进行建模,从而避免了这些混淆。我们在这里通过使用基于模拟细胞内电压记录的差分信号来开发一类新方法。它等效于正则化AR(2)模型。我们还将方法扩展到模拟局部场电势记录和钙成像。在我们所有的模拟数据中,基于差分协方差的方法都比GLM方法具有更好的性能或与之相似,并且所需的数据样本更少。这类新方法提供了分析神经信号的替代方法。

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