在模拟驾驶过程中,通过整合脑电图、心电图和血液生物标志物来检索驾驶员疲劳信息的生物医学方法

B. P. Nayak, S. Kar, A. Routray, A. K. Padhi
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引用次数: 20

摘要

对长时间驾驶造成的身体疲劳进行实时分析并进行评分,将有助于交通部门预防道路交通事故。本研究有两个目的,一是对驾驶员在模拟驾驶过程中疲劳的中枢和身体成分进行多维分析,二是寻找每个评估参数的合理性,用于评分系统。简单地说,12名熟练的司机进行了32小时的模拟驾驶。每隔3小时进行一次脑电图和心电图检查,分别评估驾驶员疲劳的中枢和外周成分。分析脑电数据得到各频带相对能量的变化,并利用心电数据研究疲劳进展阶段的心率变异性(HRV)。同时,每8小时对每个受试者的血液样本进行关键血液生物标志物(随机血糖、尿素和肌酐)的分析。θ、α和β波段的相对能量在Cz电极上的变化最为显著,而在衍生波段α+θ / δ1-δ2波段的变化最为显著,θ波段次之。随着疲劳程度的加深,心电高频分量的功率分布呈明显的下降趋势。所有血液生物标志物都随着驾驶任务的持续时间而增加,这在各个阶段都是显著的。因此,通过将EEG参数与HRV和血液生物标志物相结合,可以有效地对驾驶员的疲劳进行评分,从而验证正在开发的疲劳检测设备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A biomedical approach to retrieve information on driver's fatigue by integrating EEG, ECG and blood biomarkers during simulated driving session
A critical analysis of physical fatigue from prolonged driving in real time and subsequent scoring will be a boon for transport sector to prevent road traffic accidents. The current study has two objectives, first, to conduct a multidimensional analysis of central and physical components of fatigue in drivers during simulated driving session and second, to find the rationality of each assessed parameter to be used for scoring system. Briefly, 12 skilled drivers were subjected to simulated driving session for 32-hours. An EEG and an ECG were obtained from each subject at 3-hours interval to assess central and peripheral components of driver's fatigue respectively. EEG data were analyzed to obtain the variation in relative energy of all frequency bands while ECG data were used to study heart rate variability(HRV) at progressive stages of fatigue. Concurrently, blood samples of each subject were analyzed for key blood biomarkers(random blood sugar, blood urea and creatinine) at 8-hours interval. The relative-energy of θ, α and β-bands increased most significantly at Cz electrode while the variations across the stages was most significant in a derived band i.e. α+θ / δ1-δ2 followed by that of θ-band. The power distribution in high frequency components of ECG showed a distinct decreasing trend with advancing fatigue. All blood biomarkers increased with duration of driving task that was significant across the stages. Thus, an effective scoring of drivers' fatigue can be obtained by integrating EEG parameters with HRV and blood biomarkers that can validate fatigue detecting devices under development.
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