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Fit-for-duty test for estimation of drivers' sleepiness level: Eye movements improve the sleep/wake predictor

机译:适合驾驶员的困倦程度评估的适任性测试:眼球运动可改善睡眠/觉醒预测指标

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Driver sleepiness contributes to a considerable proportion of road accidents, and a fit-for-duty test able to measure a driver's sleepiness level might improve traffic safety. The aim of this study was to develop a fit-for-duty test based on eye movement measurements and on the sleep/wake predictor model (SWP, which predicts the sleepiness level) and evaluate the ability to predict severe sleepiness during real road driving. Twenty-four drivers participated in an experimental study which took place partly in the laboratory, where the fit-for-duty data were acquired, and partly on the road, where the drivers sleepiness was assessed. A series of four measurements were conducted over a 24-h period during different stages of sleepiness. Two separate analyses were performed; a variance analysis and a feature selection followed by classification analysis. In the first analysis it was found that the SWP and several eye movement features involving anti-saccades, pro-saccades, smooth pursuit, pupillometry and fixation stability varied significantly with different stages of sleep deprivation. In the second analysis, a feature set was determined based on floating forward selection. The correlation coefficient between a linear combination of the acquired features and subjective sleepiness (Karolinska sleepiness scale, KSS) was found to be R = 0.73 and the correct classification rate of drivers who reached high levels of sleepiness (KSS≥ 8) in the subsequent driving session was 82.4% (sensitivity = 80.0%, specificity = 84.2% and AUC = 0.86). Future improvements of a fit-for-duty test should focus on how to account for individual differences and situational/contextual factors in the test, and whether it is possible to maintain high sensitive/specificity with a shorter test that can be used in a real-life environment, e.g. on professional drivers.
机译:驾驶员的困倦在道路交通事故中占很大比例,并且能够测量驾驶员的困倦程度的适合工作的测试可能会改善交通安全。这项研究的目的是基于眼动测量和睡眠/苏醒预测模型(SWP,可预测睡意水平)开发适合工作的测试,并评估在实际道路驾驶中预测严重睡意的能力。 24名驾驶员参加了一项实验研究,该研究部分在实验室中进行,其收集了适合工作的数据,部分在道路上进行了驾驶员的困倦评估。在嗜睡的不同阶段,在24小时内进行了一系列的四个测量。进行了两个单独的分析;方差分析和特征选择,然后进行分类分析。在第一个分析中,发现SWP和涉及抗扫视,前扫视,平稳追逐,瞳孔测量和注视稳定性的几种眼动特征随睡眠剥夺的不同阶段而显着不同。在第二分析中,基于浮动前向选择确定特征集。发现获得的特征与主观嗜睡的线性组合(Karolinska嗜睡量表,KSS)之间的相关系数为R = 0.73,并且在随后的驾驶中达到高嗜睡水平(KSS≥8)的驾驶员的正确分类率疗程为82.4%(敏感性= 80.0%,特异性= 84.2%,AUC = 0.86)。适合性测试的未来改进应侧重于如何考虑测试中的个体差异和情境/上下文因素,以及是否有可能在较短的测试中维持较高的敏感性/特异性,而该较短的测试可用于实际测试中。生活环境,例如在专业司机上。

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