Center for Medical Convergence Metrology, Korea Research Institute of Standards and Science, Daejeon 34113, Korea.
Department of Medical Physics, University of Science & Technology, Daejeon 34113, Korea.
Sensors (Basel). 2021 Oct 21;21(21):6985. doi: 10.3390/s21216985.
Physiological signals are immediate and sensitive to neurological changes resulting from the mental workload induced by various driving environments and are considered a quantifying tool for understanding the association between neurological outcomes and driving cognitive workloads. Neurological assessment, outside of a highly-equipped clinical setting, requires an ambulatory electroencephalography (EEG) headset. This study aimed to quantify neurological biomarkers during a resting state and two different scenarios of driving states in a virtual driving environment. We investigated the neurological responses of seventeen healthy male drivers. EEG data were measured in an initial resting state, city-roadways driving state, and expressway driving state using a portable EEG headset in a driving simulator. During the experiment, the participants drove while experiencing cognitive workloads due to various driving environments, such as road traffic conditions, lane changes of surrounding vehicles, the speed limit, etc. The power of the beta and gamma bands decreased, and the power of the delta waves, theta, and frontal theta asymmetry increased in the driving state relative to the resting state. Delta-alpha ratio (DAR) and delta-theta ratio (DTR) showed a strong correlation with a resting state, city-roadways driving state, and expressway driving state. Binary machine-learning (ML) classification models showed a near-perfect accuracy between the resting state and driving state. Moderate classification performances were observed between the resting state, city-roadways state, and expressway state in multi-class classification. An EEG-based neurological state prediction approach may be utilized in an advanced driver-assistance system (ADAS).
生理信号对各种驾驶环境引起的精神工作负荷导致的神经变化是即时和敏感的,被认为是理解神经结果与驾驶认知工作负荷之间关联的量化工具。在没有高度配备的临床环境下进行神经评估,需要一个可移动的脑电图(EEG)耳机。本研究旨在量化在虚拟驾驶环境中处于静息状态和两种不同驾驶状态下的神经生物标志物。我们调查了十七名健康男性驾驶员的神经反应。使用驾驶模拟器中的便携式 EEG 耳机,在初始静息状态、城市道路驾驶状态和高速公路驾驶状态下测量 EEG 数据。在实验中,参与者在驾驶时会因各种驾驶环境(如道路交通状况、周围车辆的变道、限速等)而产生认知工作负荷。与静息状态相比,驾驶状态下β和γ频段的功率降低,δ波、θ波和额部θ波不对称性的功率增加。Delta-alpha 比(DAR)和 delta-theta 比(DTR)与静息状态、城市道路驾驶状态和高速公路驾驶状态呈强相关。二进制机器学习(ML)分类模型在静息状态和驾驶状态之间表现出近乎完美的准确性。在多类分类中,在静息状态、城市道路状态和高速公路状态之间观察到中等的分类性能。基于 EEG 的神经状态预测方法可用于先进的驾驶员辅助系统(ADAS)。