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人类大脑网络:基于健康老年被试 EEG 数据的皮质连接规范性数据库的图论分析。

Human brain networks: a graph theoretical analysis of cortical connectivity normative database from EEG data in healthy elderly subjects.

机构信息

Brain Connectivity Laboratory, Department of Neuroscience & Neurorehabilitation, IRCCS San Raffaele Pisana, Rome, Italy.

Department of Neurorehabilitation Sciences, Casa Cura Policlinico (CCP), Milano, Italy.

出版信息

Geroscience. 2020 Apr;42(2):575-584. doi: 10.1007/s11357-020-00176-2. Epub 2020 Mar 13.

Abstract

Moving from the hypothesis that aging processes modulate brain connectivity networks, 170 healthy elderly volunteers were submitted to EEG recordings in order to define age-related normative limits. Graph theory functions were applied to exact low-resolution electromagnetic tomography on cortical sources in order to evaluate the small-world parameter as a representative model of network architecture. The analyses were carried out in the whole brain-as well as for the left and the right hemispheres separately-and in three specific resting state subnetworks defined as follows: attentional network (AN), frontal network (FN), and default mode network (DMN) in the EEG frequency bands (delta, theta, alpha 1, alpha 2, beta 1, beta 2, gamma). To evaluate the stability of the investigated parameters, a subgroup of 32 subjects underwent three separate EEG recording sessions in identical environmental conditions after a few days interval. Results showed that the whole right/left hemispheric evaluation did not present side differences, but when individual subnetworks were considered, AN and DMN presented in general higher SW in low (delta and/or theta) and high (gamma) frequency bands in the left hemisphere, while for FN, the alpha 1 band was lower in the left with respect to the right hemisphere. It was also evident the test-retest reliability and reproducibility of the present methodology when carried out in clinically stable subjects.Evidences from the present study suggest that graph theory represents a reliable method to address brain connectivity patterns from EEG data and is particularly suitable to study the physiological impact of aging on brain functional connectivity networks.

摘要

从衰老过程调节大脑连接网络的假设出发,170 名健康的老年志愿者接受了 EEG 记录,以确定与年龄相关的正常范围。图论函数被应用于皮质源的精确低分辨率电磁层析成像,以评估小世界参数作为网络结构的代表性模型。分析在整个大脑中进行,也在左半球和右半球分别进行,并在以下三个特定的静息状态子网络中进行:注意网络 (AN)、额网络 (FN) 和默认模式网络 (DMN),在 EEG 频带 (delta、theta、alpha1、alpha2、beta1、beta2、gamma) 中。为了评估研究参数的稳定性,32 名受试者中的一个亚组在几天后的相同环境条件下进行了三次单独的 EEG 记录。结果表明,整个左右半球的评估没有显示出侧别差异,但当考虑到个别子网时,AN 和 DMN 通常在左半球的低 (delta 和/或 theta) 和高 (gamma) 频段表现出更高的 SW,而对于 FN,alpha1 频段在左半球比右半球低。当在临床稳定的受试者中进行时,本研究方法的测试-重测可靠性和可重复性也很明显。本研究的证据表明,图论是一种从 EEG 数据中研究大脑连接模式的可靠方法,特别适合研究衰老对大脑功能连接网络的生理影响。

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