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基于平稳性的分段长度选择新方法,用于对静息态 EEG 信号进行有效的连通性分析。

A Novel Approach for Segment-Length Selection Based on Stationarity to Perform Effective Connectivity Analysis Applied to Resting-State EEG Signals.

机构信息

Department of Electronics, Informatics and Bioengineering, Politecnico di Milano, 20133 Milan, Italy.

Istituto di Elettronica e di Ingegneria dell'Informazione e delle Telecomunicazioni (IEIIT), Consiglio Nazionale delle Ricerche (CNR), 20133 Milan, Italy.

出版信息

Sensors (Basel). 2022 Jun 23;22(13):4747. doi: 10.3390/s22134747.

Abstract

Connectivity among different areas within the brain is a topic that has been notably studied in the last decade. In particular, EEG-derived measures of effective connectivity examine the directionalities and the exerted influences raised from the interactions among neural sources that are masked out on EEG signals. This is usually performed by fitting multivariate autoregressive models that rely on the stationarity that is assumed to be maintained over shorter bits of the signals. However, despite being a central condition, the selection process of a segment length that guarantees stationary conditions has not been systematically addressed within the effective connectivity framework, and thus, plenty of works consider different window sizes and provide a diversity of connectivity results. In this study, a segment-size-selection procedure based on fourth-order statistics is proposed to make an informed decision on the appropriate window size that guarantees stationarity both in temporal and spatial terms. Specifically, kurtosis is estimated as a function of the window size and used to measure stationarity. A search algorithm is implemented to find the segments with similar stationary properties while maximizing the number of channels that exhibit the same properties and grouping them accordingly. This approach is tested on EEG signals recorded from six healthy subjects during resting-state conditions, and the results obtained from the proposed method are compared to those obtained using the classical approach for mapping effective connectivity. The results show that the proposed method highlights the influence that arises in the Default Mode Network circuit by selecting a window of 4 s, which provides, overall, the most uniform stationary properties across channels.

摘要

大脑不同区域之间的连通性是过去十年中研究的一个重要课题。特别是,脑电图衍生的有效连通性测量研究了在脑电图信号中被掩盖的神经源之间相互作用产生的方向和影响。这通常是通过拟合多元自回归模型来实现的,该模型依赖于假设在信号较短的部分保持的平稳性。然而,尽管这是一个核心条件,但在有效连通性框架内,用于保证平稳条件的片段长度选择过程尚未得到系统解决,因此,许多工作考虑了不同的窗口大小,并提供了多样性的连通性结果。在这项研究中,提出了一种基于四阶统计的片段大小选择过程,以便在时间和空间方面做出明智的决策,选择合适的窗口大小以保证平稳性。具体来说,峭度被估计为窗口大小的函数,并用于测量平稳性。实现了一种搜索算法,以找到具有相似平稳特性的片段,同时最大化具有相同特性的通道数量,并相应地对其进行分组。该方法在六名健康受试者的静息状态脑电图信号上进行了测试,并将所提出方法获得的结果与用于映射有效连通性的经典方法获得的结果进行了比较。结果表明,该方法通过选择 4 秒的窗口来突出默认模式网络电路中产生的影响,总体上在通道之间提供了最均匀的平稳特性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/367d/9269473/62eee36be540/sensors-22-04747-g001.jpg

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