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利用心率变异性进行嗜睡检测。

Drowsiness detection using heart rate variability.

作者信息

Vicente José, Laguna Pablo, Bartra Ariadna, Bailón Raquel

机构信息

BSICoS Group, Aragon Institute of Engineering Research (I3A), IIS Aragón, University of Zaragoza, Zaragoza, Aragón, Spain.

Office of Science and Engineering Laboratories, Center for Devices and Radiological Health, US Food and Drug Administration, Silver Spring, MD, USA.

出版信息

Med Biol Eng Comput. 2016 Jun;54(6):927-37. doi: 10.1007/s11517-015-1448-7. Epub 2016 Jan 16.

Abstract

It is estimated that 10-30 % of road fatalities are related to drowsy driving. Driver's drowsiness detection based on biological and vehicle signals is being studied in preventive car safety. Autonomous nervous system activity, which can be measured noninvasively from the heart rate variability (HRV) signal obtained from surface electrocardiogram, presents alterations during stress, extreme fatigue and drowsiness episodes. We hypothesized that these alterations manifest on HRV and thus could be used to detect driver's drowsiness. We analyzed three driving databases in which drivers presented different sleep-deprivation levels, and in which each driving minute was annotated as drowsy or awake. We developed two different drowsiness detectors based on HRV. While the drowsiness episodes detector assessed each minute of driving as "awake" or "drowsy" with seven HRV derived features (positive predictive value 0.96, sensitivity 0.59, specificity 0.98 on 3475 min of driving), the sleep-deprivation detector discerned if a driver was suitable for driving or not, at driving onset, as function of his sleep-deprivation state. Sleep-deprivation state was estimated from the first three minutes of driving using only one HRV feature (positive predictive value 0.80, sensitivity 0.62, specificity 0.88 on 30 drivers). Incorporating drowsiness assessment based on HRV signal may add significant improvements to existing car safety systems.

摘要

据估计,10%至30%的道路死亡事故与疲劳驾驶有关。基于生物信号和车辆信号的驾驶员疲劳检测正在预防性汽车安全领域进行研究。自主神经系统活动可以从体表心电图获得的心率变异性(HRV)信号中无创测量,在压力、极度疲劳和困倦发作期间会出现变化。我们假设这些变化会在HRV上表现出来,因此可用于检测驾驶员的困倦状态。我们分析了三个驾驶数据库,其中驾驶员呈现出不同的睡眠剥夺水平,并且每个驾驶分钟都被标注为困倦或清醒。我们基于HRV开发了两种不同的困倦检测器。虽然困倦发作检测器使用七个HRV衍生特征将每分钟驾驶评估为“清醒”或“困倦”(在3475分钟驾驶中阳性预测值为0.96,灵敏度为0.59,特异性为0.98),但睡眠剥夺检测器根据驾驶员的睡眠剥夺状态在驾驶开始时判断其是否适合驾驶。仅使用一个HRV特征从驾驶的前三分钟估计睡眠剥夺状态(在30名驾驶员中阳性预测值为0.80,灵敏度为0.62,特异性为0.88)。将基于HRV信号的困倦评估纳入现有汽车安全系统可能会带来显著改进。

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