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挖掘时间分辨功能脑图以构建基于脑电图的脑龄连接组学脑龄指数(CBAI)。

Mining Time-Resolved Functional Brain Graphs to an EEG-Based Chronnectomic Brain Aged Index (CBAI).

作者信息

Dimitriadis Stavros I, Salis Christos I

机构信息

Institute of Psychological Medicine and Clinical Neurosciences, Cardiff University School of MedicineCardiff, United Kingdom.

Cardiff University Brain Research Imaging Center (CUBRIC), School of Psychology, Cardiff UniversityCardiff, United Kingdom.

出版信息

Front Hum Neurosci. 2017 Sep 7;11:423. doi: 10.3389/fnhum.2017.00423. eCollection 2017.

Abstract

The brain at rest consists of spatially and temporal distributed but functionally connected regions that called intrinsic connectivity networks (ICNs). Resting state electroencephalography (rs-EEG) is a way to characterize brain networks without confounds associated with task EEG such as task difficulty and performance. A novel framework of how to study dynamic functional connectivity under the notion of functional connectivity microstates (FCμstates) and symbolic dynamics is further discussed. Furthermore, we introduced a way to construct a single integrated dynamic functional connectivity graph (IDFCG) that preserves both the strength of the connections between every pair of sensors but also the type of dominant intrinsic coupling modes (DICM). The whole methodology is demonstrated in a significant and unexplored task for EEG which is the definition of an objective Chronnectomic Brain Aged index (CBAI) extracted from resting-state data ( = 94 subjects) with both eyes-open and eyes-closed conditions. Novel features have been defined based on symbolic dynamics and the notion of DICM and FCμstates. The transition rate of FCμstates, the symbolic dynamics based on the evolution of FCμstates (the Markovian Entropy, the complexity index), the probability distribution of DICM, the novel Flexibility Index that captures the dynamic reconfiguration of DICM per pair of EEG sensors and the relative signal power constitute a valuable pool of features that can build the proposed CBAI. Here we applied a feature selection technique and Extreme Learning Machine (ELM) classifier to discriminate young adults from middle-aged and a Support Vector Regressor to build a linear model of the actual age based on EEG-based spatio-temporal features. The most significant type of features for both prediction of age and discrimination of young vs. adults age groups was the dynamic reconfiguration of dominant coupling modes derived from a subset of EEG sensor pairs. Specifically, our results revealed a very high prediction of age for eyes-open ( = 0.60; y = 0.79x + 8.03) and lower for eyes-closed ( = 0.48; y = 0.71x + 10.91) while we succeeded to correctly classify young vs. middle-age group with 97.8% accuracy in eyes-open and 87.2% for eyes-closed. Our results were reproduced also in a second dataset for further external validation of the whole analysis. The proposed methodology proved valuable for the characterization of the intrinsic properties of dynamic functional connectivity through the age untangling developmental differences using EEG resting-state recordings.

摘要

静息状态下的大脑由空间和时间上分布但功能相连的区域组成,这些区域被称为内在连接网络(ICNs)。静息态脑电图(rs-EEG)是一种表征大脑网络的方法,不存在与任务脑电图相关的混淆因素,如任务难度和表现。进一步讨论了一种在功能连接微状态(FCμstates)和符号动力学概念下研究动态功能连接的新框架。此外,我们介绍了一种构建单个综合动态功能连接图(IDFCG)的方法,该图既保留了每对传感器之间连接的强度,又保留了主导内在耦合模式(DICM)的类型。整个方法在一项针对脑电图的重要且未被探索的任务中得到了验证,该任务是从静息状态数据(n = 94名受试者)的睁眼和闭眼条件下提取客观的脑年龄连接组学指数(CBAI)。基于符号动力学以及DICM和FCμstates的概念定义了新的特征。FCμstates的转换率、基于FCμstates演变的符号动力学(马尔可夫熵、复杂性指数)、DICM的概率分布、捕捉每对脑电图传感器DICM动态重新配置的新型灵活性指数以及相对信号功率构成了一组有价值的特征,可以构建所提出的CBAI。在这里,我们应用了特征选择技术和极限学习机(ELM)分类器来区分年轻人和中年人,并使用支持向量回归器基于脑电图的时空特征构建实际年龄的线性模型。对于年龄预测和区分年轻与成年年龄组而言,最重要的特征类型是源自脑电图传感器对子集的主导耦合模式的动态重新配置。具体而言,我们的结果显示,睁眼时年龄预测非常高(r = 0.60;y = 0.79x + 8.03),闭眼时较低(r = 0.48;y = 0.71x + 10.91),同时我们成功地以97.8%的准确率正确分类了睁眼时的年轻与中年组,闭眼时为87.2%。我们的结果也在第二个数据集中得到了重现,以对整个分析进行进一步的外部验证。所提出的方法通过使用脑电图静息状态记录解开年龄相关的发育差异,被证明对于表征动态功能连接的内在特性具有重要价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c8a2/5594081/50e946aa8dd5/fnhum-11-00423-g0001.jpg

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