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滤波和降采样对传递熵估计的影响。

The influence of filtering and downsampling on the estimation of transfer entropy.

机构信息

Department of Neurology, University Hospital Giessen & Marburg, Marburg, Germany.

Institute of Clinical Neuroscience and Medical Psychology, Medical Faculty, Heinrich-Heine-University, Düsseldorf, Germany.

出版信息

PLoS One. 2017 Nov 17;12(11):e0188210. doi: 10.1371/journal.pone.0188210. eCollection 2017.

Abstract

Transfer entropy (TE) provides a generalized and model-free framework to study Wiener-Granger causality between brain regions. Because of its nonparametric character, TE can infer directed information flow also from nonlinear systems. Despite its increasing number of applications in neuroscience, not much is known regarding the influence of common electrophysiological preprocessing on its estimation. We test the influence of filtering and downsampling on a recently proposed nearest neighborhood based TE estimator. Different filter settings and downsampling factors were tested in a simulation framework using a model with a linear coupling function and two nonlinear models with sigmoid and logistic coupling functions. For nonlinear coupling and progressively lower low-pass filter cut-off frequencies up to 72% false negative direct connections and up to 26% false positive connections were identified. In contrast, for the linear model, a monotonic increase was only observed for missed indirect connections (up to 86%). High-pass filtering (1 Hz, 2 Hz) had no impact on TE estimation. After low-pass filtering interaction delays were significantly underestimated. Downsampling the data by a factor greater than the assumed interaction delay erased most of the transmitted information and thus led to a very high percentage (67-100%) of false negative direct connections. Low-pass filtering increases the number of missed connections depending on the filters cut-off frequency. Downsampling should only be done if the sampling factor is smaller than the smallest assumed interaction delay of the analyzed network.

摘要

转移熵 (TE) 提供了一个广义的、无模型的框架,用于研究大脑区域之间的 Wiener-Granger 因果关系。由于其非参数特性,TE 还可以从非线性系统中推断出有向信息流。尽管它在神经科学中的应用越来越多,但对于常见的电生理预处理对其估计的影响知之甚少。我们测试了滤波和降采样对最近提出的基于最近邻的 TE 估计器的影响。在具有线性耦合函数的模型以及具有 sigmoid 和 logistic 耦合函数的两个非线性模型的仿真框架中测试了不同的滤波器设置和降采样因子。对于非线性耦合和逐渐降低的低通滤波器截止频率,高达 72%的假阴性直接连接和高达 26%的假阳性连接被识别。相比之下,对于线性模型,仅观察到间接连接的遗漏(高达 86%)呈单调增加。高通滤波(1 Hz、2 Hz)对 TE 估计没有影响。低通滤波后,交互延迟被显著低估。以大于假设的交互延迟的因子对数据进行降采样会消除大部分传输信息,从而导致非常高的假阴性直接连接百分比(67%-100%)。低通滤波会根据滤波器截止频率增加错过连接的数量。只有在采样因子小于分析网络中假设的最小交互延迟时,才应进行降采样。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b439/5693301/e422f9e2959f/pone.0188210.g001.jpg

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