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基于静息态 EEG 数据的脑功能网络在重度抑郁症分析和分类中的应用。

Brain Functional Networks Based on Resting-State EEG Data for Major Depressive Disorder Analysis and Classification.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2021;29:215-229. doi: 10.1109/TNSRE.2020.3043426. Epub 2021 Mar 1.

DOI:10.1109/TNSRE.2020.3043426
PMID:33296307
Abstract

If the brain is regarded as a system, it will be one of the most complex systems in the universe. Traditional analysis and classification methods of major depressive disorder (MDD) based on electroencephalography (EEG) feature-levels often regard electrode as isolated node and ignore the correlation between them, so it's difficult to find alters of abnormal topological architecture in brain. To solve this problem, we propose a brain functional network framework for MDD of analysis and classification based on resting state EEG. The phase lag index (PLI) was calculated based on the 64-channel resting state EEG to construct the function connection matrix to reduce and avoid the volume conductor effect. Then binarization of brain function network based on small world index was realized. Statistical analyses were performed on different EEG frequency band and different brain regions. The results showed that significant alterations of brain synchronization occurred in frontal, temporal, parietal-occipital regions of left brain and temporal region of right brain. And average shortest path length and clustering coefficient in left central region of theta band and node betweenness centrality in right parietal-occipital region were significantly correlated with PHQ-9 score of MDD, which indicates these three network metrics may be served as potential biomarkers to effectively distinguish MDD from controls and the highest classification accuracy can reach 93.31%. Our findings also point out that the brain function network of MDD patients shows a random trend, and small world characteristics appears to weaken.

摘要

如果将大脑视为一个系统,那么它将是宇宙中最复杂的系统之一。基于脑电图(EEG)特征层面的传统分析和分类方法,通常将电极视为孤立的节点,忽略了它们之间的相关性,因此很难发现大脑中异常拓扑结构的改变。为了解决这个问题,我们提出了一种基于静息态 EEG 的 MDD 分析和分类的脑功能网络框架。基于 64 通道静息态 EEG 计算相位滞后指数(PLI),以构建功能连接矩阵,从而减少和避免容积导体效应。然后基于小世界指数实现脑功能网络的二值化。对不同 EEG 频带和不同脑区进行了统计分析。结果表明,大脑同步性在左脑的额、颞、顶枕叶区和右脑的颞区发生了显著改变。并且θ频段左中央区的平均最短路径长度和聚类系数以及右顶枕区的节点介数中心度与 MDD 的 PHQ-9 评分显著相关,这表明这三个网络指标可能作为潜在的生物标志物,有效地区分 MDD 患者和对照组,最高分类准确率可达 93.31%。我们的研究结果还指出,MDD 患者的脑功能网络呈现出随机趋势,小世界特征似乎减弱。

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Brain Functional Networks Based on Resting-State EEG Data for Major Depressive Disorder Analysis and Classification.基于静息态 EEG 数据的脑功能网络在重度抑郁症分析和分类中的应用。
IEEE Trans Neural Syst Rehabil Eng. 2021;29:215-229. doi: 10.1109/TNSRE.2020.3043426. Epub 2021 Mar 1.
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Beyond the label "major depressive disorder"-detailed characterization of study population matters for EEG-biomarker research.除了“重度抑郁症”这一标签之外,研究人群的详细特征描述对脑电图生物标志物研究至关重要。
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