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探究年轻男性在真实驾驶过程中影响基于脑电图的功能性大脑网络的疲劳。

Exploring the fatigue affecting electroencephalography based functional brain networks during real driving in young males.

机构信息

Department of Mechanical Engineering and Automation, Northeastern University, 110819 Shenyang, Liaoning, China.

Department of Mechanical Engineering and Automation, Northeastern University, 110819 Shenyang, Liaoning, China.

出版信息

Neuropsychologia. 2019 Jun;129:200-211. doi: 10.1016/j.neuropsychologia.2019.04.004. Epub 2019 Apr 14.

Abstract

In recent years, a large proportion of traffic accidents are caused by driver fatigue. The brain has been conceived as a complex network, whose function can be assessed with EEG. Hence, in this research, fourteen subjects participated in the real driving experiments, and a comprehensive EEG-based expert system was designed for detecting driver fatigue. Collected EEG signals were first decomposed into delta-range, theta-range, alpha-range and beta-range by wavelet packet transform (WPT). Unlike other approaches, a multi-channel network construction method based on Phase Lag Index (PLI) was then proposed in this paper. Finally, the functional connectivity between alert state (at the beginning of the drive) and fatigue state (at the end of the drive) in multiple frequency bands were analyzed. The results indicate that functional connectivity of the brain area was significantly different between alert and fatigue states, especially in alpha-range and beta-range. Particularly, the frontal-to-parietal functional connectivity was weakened. Meanwhile, lower clustering coefficient (C) values and higher characteristic path length (L) values were observed in fatigue state in comparison with alert state. Based on this, two new EEG feature selection approaches, C and L in the corresponding sub-frequency range were applied to feature recognition and classification system. Using a support vector machine (SVM) machine learning algorithm, these features were combined to distinguish between alert and fatigue states, achieving an accuracy of 94.4%, precision of 94.3%, sensitivity of 94.6% and false alarm rate of 5.7%. The results suggest that brain network analysis approaches combined with SVM are helpful to alert drivers while being sleepy or even fatigue.

摘要

近年来,很大一部分交通事故是由驾驶员疲劳引起的。大脑被认为是一个复杂的网络,其功能可以通过脑电图(EEG)来评估。因此,在这项研究中,十四名受试者参与了真实驾驶实验,并设计了一个基于综合脑电图的专家系统来检测驾驶员疲劳。采集到的脑电图信号首先通过小波包变换(WPT)分解为 delta 范围、theta 范围、alpha 范围和 beta 范围。与其他方法不同,本文提出了一种基于相位滞后指数(PLI)的多通道网络构建方法。最后,分析了多个频段中警觉状态(驾驶开始时)和疲劳状态(驾驶结束时)之间的功能连接。结果表明,大脑区域的功能连接在警觉和疲劳状态之间存在显著差异,尤其是在 alpha 范围和 beta 范围。特别是,额顶叶功能连接减弱。同时,与警觉状态相比,疲劳状态下的聚类系数(C)值较低,特征路径长度(L)值较高。基于此,本文提出了两种新的脑电图特征选择方法,即相应子频带中的 C 和 L,用于特征识别和分类系统。使用支持向量机(SVM)机器学习算法,将这些特征结合起来区分警觉和疲劳状态,准确率达到 94.4%,精度为 94.3%,灵敏度为 94.6%,误报率为 5.7%。结果表明,结合 SVM 的脑网络分析方法有助于在驾驶员困倦甚至疲劳时发出警报。

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