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源重建脑电图时间序列中功能连接性和网络测量的变异性

On the Variability of Functional Connectivity and Network Measures in Source-Reconstructed EEG Time-Series.

作者信息

Fraschini Matteo, La Cava Simone Maurizio, Didaci Luca, Barberini Luigi

机构信息

Department of Electrical and Electronic Engineering, University of Cagliari, 09123 Cagliari, Italy.

Department of Medical Sciences and Public Health, University of Cagliari, 09123 Cagliari, Italy.

出版信息

Entropy (Basel). 2020 Dec 22;23(1):5. doi: 10.3390/e23010005.

Abstract

The idea of estimating the statistical interdependence among (interacting) brain regions has motivated numerous researchers to investigate how the resulting connectivity patterns and networks may organize themselves under any conceivable scenario. Even though this idea has developed beyond its initial stages, its practical application is still far away from being widespread. One concurrent cause may be related to the proliferation of different approaches that aim to catch the underlying statistical interdependence among the (interacting) units. This issue has probably contributed to hindering comparisons among different studies. Not only do all these approaches go under the same name (functional connectivity), but they have often been tested and validated using different methods, therefore, making it difficult to understand to what extent they are similar or not. In this study, we aim to compare a set of different approaches commonly used to estimate the functional connectivity on a public EEG dataset representing a possible realistic scenario. As expected, our results show that source-level EEG connectivity estimates and the derived network measures, even though pointing to the same direction, may display substantial dependency on the (often arbitrary) choice of the selected connectivity metric and thresholding approach. In our opinion, the observed variability reflects the ambiguity and concern that should always be discussed when reporting findings based on any connectivity metric.

摘要

估计(相互作用的)脑区之间的统计相关性这一想法,促使众多研究人员去探究在任何可想象的情况下,由此产生的连接模式和网络是如何自我组织的。尽管这一想法已发展到超出其初始阶段,但其实际应用仍远未广泛普及。一个同时存在的原因可能与旨在捕捉(相互作用的)单元之间潜在统计相关性的不同方法的激增有关。这个问题可能导致了不同研究之间难以进行比较。这些方法不仅都被称为“功能连接性”,而且它们常常使用不同的方法进行测试和验证,因此,很难理解它们在何种程度上相似或不同。在本研究中,我们旨在比较一组常用于在代表可能现实场景的公共脑电图(EEG)数据集上估计功能连接性的不同方法。正如预期的那样,我们的结果表明,源级脑电图连接性估计和导出的网络测量值,尽管指向相同方向,但可能对所选连接性度量和阈值化方法(通常是任意的)的选择表现出显著的依赖性。在我们看来,观察到的变异性反映了在基于任何连接性度量报告研究结果时应始终讨论的模糊性和问题。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d6d8/7822028/dd1e89b194f6/entropy-23-00005-g001.jpg

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