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Performance evaluation of dereferencing methods for estimating information flow in laminar connectivity models*

机译:解除取消引导方法的性能评估,用于估算层层连接模型中信息流 *

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Multi-layered brain structures contain canonical microcircuits that specialize in region-specific function. Information flow across the layers is typically inferred using multivariate techniques that operate on local field potentials (LFPs). These methods (e.g., Granger Causality (GC)) are sensitive to the presence of a common reference that corrupts LFPs recorded with a multi-contact electrode and introduces spurious covariations. Using models of reference-noise corrupted signals with laminar interactions, we evaluated the efficacy of three dereferencing methods - bipolar subtraction, current source density (CSD), and common average referencing. We examined which method best recovered the underlying functional interactions between layers. Each dereferencing method introduced different types of error, often to alarming levels of false prediction. While CSD and bipolar subtraction methods performed best, they often predicted spurious connections, exhibited GC power in incorrect frequency bands, and/or missed salient relationships between layers. Though the confounds in this model may not be present in evaluations of functional connectivity between brain areas, these findings call for a reassessment of dereferencing methods used in the context of evaluating information flow within laminar neural tissue.
机译:多层脑结构含有专用于特定区域功能的规范微电路。通常使用在本地现场电位(LFP)上运行的多变量技术来推断整个图层的信息流。这些方法(例如,GRANGER因果关系(GC))对存在具有多触点电极记录的LFP并引入虚假协变量的公共参考敏感。使用具有层层相互作用的参考噪声损坏信号的模型,我们评估了三种取消引导方法 - 双极减法,电流源密度(CSD)和常见平均参考的功效。我们检查了哪种方法最能恢复层之间的潜在功能相互作用。每个取消引入方法引入了不同类型的错误,经常出现错误预测水平。虽然CSD和双极减法方法最好,但它们通常预测虚假连接,展示了错误的频带中的GC功率,以及在层之间错过了突出关系。尽管该模型中的混淆可能不存在于大脑区域之间的功能连通性的评估中,但这些发现要求重新评估用于评估层内神经组织内的信息流的上下文中使用的解除释放方法。

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