Chen Jichi, Wang Hong, Hua Chengcheng, Wang Qiaoxiu, Liu Chong
Department of Mechanical Engineering and Automation, Northeastern University, Shenyang, 110819 Liaoning China.
Cogn Neurodyn. 2018 Dec;12(6):569-581. doi: 10.1007/s11571-018-9495-z. Epub 2018 Jul 14.
A large number of traffic accidents due to driver drowsiness have been under more attention of many countries. The organization of the functional brain network is associated with drowsiness, but little is known about the brain network topology that is modulated by drowsiness. To clarify this problem, in this study, we introduce a novel approach to detect driver drowsiness. Electroencephalogram (EEG) signals have been measured during a simulated driving task, in which participants are recruited to undergo both alert and drowsy states. The filtered EEG signals are then decomposed into multiple frequency bands by wavelet packet transform. Functional connectivity between all pairs of channels for multiple frequency bands is assessed using the phase lag index (PLI). Based on this, PLI-weighted networks are subsequently calculated, from which minimum spanning trees are constructed-a graph method that corrects for comparison bias. Statistical analyses are performed on graph-derived metrics as well as on the PLI connectivity values. The major finding is that significant differences in the delta frequency band for three graph metrics and in the theta frequency band for five graph metrics suggesting network integration and communication between network nodes are increased from alertness to drowsiness. Together, our findings also suggest a more line-like configuration in alert states and a more star-like topology in drowsy states. Collectively, our findings point to a more proficient configuration in drowsy state for lower frequency bands. Graph metrics relate to the intrinsic organization of functional brain networks, and these graph metrics may provide additional insights on driver drowsiness detection for reducing and preventing traffic accidents and further understanding the neural mechanisms of driver drowsiness.
许多国家越来越关注大量因驾驶员困倦导致的交通事故。大脑功能网络的组织与困倦有关,但对于受困倦调节的大脑网络拓扑结构却知之甚少。为了阐明这个问题,在本研究中,我们引入了一种检测驾驶员困倦的新方法。在模拟驾驶任务期间测量脑电图(EEG)信号,其中招募参与者经历清醒和困倦状态。然后通过小波包变换将滤波后的EEG信号分解为多个频段。使用相位滞后指数(PLI)评估多个频段所有通道对之间的功能连接性。基于此,随后计算PLI加权网络,从中构建最小生成树——一种校正比较偏差的图形方法。对图形衍生指标以及PLI连接值进行统计分析。主要发现是,三个图形指标在δ频段以及五个图形指标在θ频段存在显著差异,这表明从清醒到困倦状态,网络节点之间的网络整合和通信增加。总之,我们的研究结果还表明,清醒状态下的配置更像线状,而困倦状态下的拓扑结构更像星状。总体而言,我们的研究结果表明,在困倦状态下,低频段的配置更为熟练。图形指标与大脑功能网络的内在组织有关,这些图形指标可能为检测驾驶员困倦提供额外的见解,以减少和预防交通事故,并进一步了解驾驶员困倦的神经机制。