Frequency-Dependent Functional Connectivity of Brain Networks at Resting-State

A. V. Guglielmi, Giulia Cisotto, T. Erseghe, L. Badia
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引用次数: 1

Abstract

Functional imaging methods such as resting-state fMRI allow to describe interactions among different areas of the brain, thus deriving a functional connectivity matrix of the entire brain network. Tracking functional relationships among different regions of interest can be applied, besides a pure modelling perspective, also to discovering procedures to detect brain diseases and anomalies, or pursuing rehabilitation of subjects with structural damages. However, network characterization is often regarded as frequency-independent, so that the frequency at which interactions take place among different regions is ignored. In this paper, we show how simple filtering procedures over different bands, applied to the resting-state fMRI signals, result in highly different connectivity matrices. Thus, it is highlighted that the functional network can be significantly dependent on the considered frequency range for the fMRI signal. This both justifies the need for a careful filtering of the signals, that avoids filtering out relevant frequencies, and also hints the possibility of classifying functional interactions according to the frequency where the connectivity among two areas is the strongest.
静息状态下脑网络频率相关的功能连接
功能成像方法,如静息状态fMRI,可以描述大脑不同区域之间的相互作用,从而得出整个大脑网络的功能连接矩阵。跟踪不同感兴趣区域之间的功能关系,除了纯粹的建模角度,也可以应用于发现检测大脑疾病和异常的程序,或追求结构损伤受试者的康复。然而,网络表征通常被认为是与频率无关的,因此忽略了不同区域之间发生相互作用的频率。在本文中,我们展示了如何在不同的波段上进行简单的滤波程序,应用于静息状态的fMRI信号,导致高度不同的连接矩阵。因此,需要强调的是,功能网络可以显著依赖于fMRI信号的考虑频率范围。这既证明了对信号进行仔细过滤的必要性,避免过滤掉相关频率,也暗示了根据两个区域之间连通性最强的频率对功能相互作用进行分类的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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