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EEG characteristic analysis of coach bus drivers based on brain connectivity as revealed a graph theoretical network.基于脑连接性的长途客车司机脑电图特征分析揭示了一个图论网络。
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The structure and dynamics of multilayer networks.多层网络的结构与动态特性
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Convolutional neural network for detection and classification of seizures in clinical data.卷积神经网络在临床数据中癫痫发作的检测和分类。
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Deep Convolutional Neural Network-Based Epileptic Electroencephalogram (EEG) Signal Classification.基于深度卷积神经网络的癫痫脑电图(EEG)信号分类
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Brain Functional Networks Study of Subacute Stroke Patients With Upper Limb Dysfunction After Comprehensive Rehabilitation Including BCI Training.包括脑机接口训练在内的综合康复后上肢功能障碍亚急性脑卒中患者的脑功能网络研究
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Prediction of epilepsy seizure from multi-channel electroencephalogram by effective connectivity analysis using Granger causality and directed transfer function methods.使用格兰杰因果关系和定向传递函数方法通过有效连接性分析从多通道脑电图预测癫痫发作。
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A Multi-Domain Connectome Convolutional Neural Network for Identifying Schizophrenia From EEG Connectivity Patterns.一种用于从 EEG 连通模式中识别精神分裂症的多领域连接体卷积神经网络。
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用于脑电图信号分析的复杂网络与深度学习

Complex networks and deep learning for EEG signal analysis.

作者信息

Gao Zhongke, Dang Weidong, Wang Xinmin, Hong Xiaolin, Hou Linhua, Ma Kai, Perc Matjaž

机构信息

School of Electrical and Information Engineering, Tianjin University, Tianjin, 300072 China.

Tencent Youtu Lab, Malata Building, 9998 Shennan Avenue, Shenzhen, 518057 Guangdong Province China.

出版信息

Cogn Neurodyn. 2021 Jun;15(3):369-388. doi: 10.1007/s11571-020-09626-1. Epub 2020 Aug 29.

DOI:10.1007/s11571-020-09626-1
PMID:34040666
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8131466/
Abstract

Electroencephalogram (EEG) signals acquired from brain can provide an effective representation of the human's physiological and pathological states. Up to now, much work has been conducted to study and analyze the EEG signals, aiming at spying the current states or the evolution characteristics of the complex brain system. Considering the complex interactions between different structural and functional brain regions, brain network has received a lot of attention and has made great progress in brain mechanism research. In addition, characterized by autonomous, multi-layer and diversified feature extraction, deep learning has provided an effective and feasible solution for solving complex classification problems in many fields, including brain state research. Both of them show strong ability in EEG signal analysis, but the combination of these two theories to solve the difficult classification problems based on EEG signals is still in its infancy. We here review the application of these two theories in EEG signal research, mainly involving brain-computer interface, neurological disorders and cognitive analysis. Furthermore, we also develop a framework combining recurrence plots and convolutional neural network to achieve fatigue driving recognition. The results demonstrate that complex networks and deep learning can effectively implement functional complementarity for better feature extraction and classification, especially in EEG signal analysis.

摘要

从大脑获取的脑电图(EEG)信号能够有效地反映人类的生理和病理状态。到目前为止,已经开展了大量工作来研究和分析EEG信号,旨在窥探复杂大脑系统的当前状态或演化特征。考虑到大脑不同结构和功能区域之间的复杂相互作用,脑网络受到了广泛关注,并在脑机制研究方面取得了很大进展。此外,深度学习以其自主、多层和多样化的特征提取为特点,为解决包括脑状态研究在内的许多领域中的复杂分类问题提供了一种有效且可行的解决方案。它们在EEG信号分析中都表现出强大的能力,但将这两种理论结合起来解决基于EEG信号的困难分类问题仍处于起步阶段。我们在此回顾这两种理论在EEG信号研究中的应用,主要涉及脑机接口、神经疾病和认知分析。此外,我们还开发了一种结合递归图和卷积神经网络的框架来实现疲劳驾驶识别。结果表明,复杂网络和深度学习可以有效地实现功能互补,以更好地进行特征提取和分类,尤其是在EEG信号分析中。