Cognitive load during driving: EEG microstate metrics are sensitive to task difficulty and predict safety outcomes

IF 5.7 1区 工程技术 Q1 ERGONOMICS
Siwei Ma , Xuedong Yan , Jac Billington , Natasha Merat , Gustav Markkula
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引用次数: 0

Abstract

Engaging in phone conversations or other cognitively challenging tasks while driving detrimentally impacts cognitive functions and has been associated with increased risk of accidents. Existing EEG methods have been shown to differentiate between load and no load, but not between different levels of cognitive load. Furthermore, it has not been investigated whether EEG measurements of load can be used to predict safety outcomes in critical events. EEG microstates analysis, categorizing EEG signals into a concise set of prototypical functional states, has been used in other task contexts with good results, but has not been applied in the driving context. Here, this gap is addressed by means of a driving simulation experiment. Three phone use conditions (no phone use, hands-free, and handheld), combined with two task difficulty levels (single- or double-digit addition and subtraction), were tested before and during a rear-end collision conflict. Both conventional EEG spectral power and EEG microstates were analyzed. The results showed that different levels of cognitive load influenced EEG microstates differently, while EEG spectral power remained unaffected. A distinct EEG pattern emerged when drivers engaged in phone tasks while driving, characterized by a simultaneous increase and decrease in two of the EEG microstates, suggesting a heightened focus on auditory information, potentially at a cost to attention reorientation ability. The increase and decrease in these two microstates follow a monotonic sequence from baseline to hands-free simple, hands-free complex, handheld simple, and finally handheld complex, showing sensitivity to task difficulty. This pattern was found both before and after the lead vehicle braked. Furthermore, EEG microstates prior to the lead vehicle braking improved predictions of safety outcomes in terms of minimum time headway after the lead vehicle braked, clearly suggesting that these microstates measure brain states which are indicative of impaired driving. Additionally, EEG microstates are more predictive of safety outcomes than task difficulty, highlighting individual differences in task effects. These findings enhance our understanding of the neural dynamics involved in distracted driving and can be used in methods for evaluating the cognitive load induced by in-vehicle systems.

驾驶过程中的认知负荷:脑电图微状态指标对任务难度敏感并能预测安全结果
驾驶时进行电话交谈或执行其他具有认知挑战性的任务会对认知功能产生不利影响,并与事故风险增加有关。现有的脑电图方法已被证明可以区分有负荷和无负荷,但不能区分不同程度的认知负荷。此外,对负荷的脑电图测量是否可用于预测重大事件中的安全结果还没有进行过研究。脑电图微观状态分析将脑电图信号归类为一组简明的原型功能状态,已在其他任务环境中使用并取得良好效果,但尚未应用于驾驶环境。本文通过驾驶模拟实验弥补了这一空白。在发生追尾碰撞冲突之前和期间,测试了三种手机使用条件(不使用手机、免提和手持)以及两种任务难度(一位数或两位数加法和减法)。对常规脑电图频谱功率和脑电图微状态进行了分析。结果显示,不同认知负荷水平对脑电图微观状态的影响不同,而脑电图频谱功率则不受影响。当驾驶员在驾驶过程中执行电话任务时,会出现一种独特的脑电图模式,其特点是两种脑电图微状态同时增加和减少,这表明驾驶员更加关注听觉信息,但可能会以注意力重新定向能力为代价。这两个微状态的增加和减少遵循一个单调的序列,从基线到简单免提、复杂免提、简单手持,最后到复杂手持,显示了对任务难度的敏感性。这种模式在前导车制动之前和之后都有发现。此外,前导车制动前的脑电图微观状态提高了对前导车制动后最小前进距离安全结果的预测,这清楚地表明这些微观状态测量的大脑状态表明驾驶能力受损。此外,脑电图微观状态比任务难度更能预测安全结果,突出了任务效应的个体差异。这些发现加深了我们对分心驾驶所涉及的神经动态的理解,可用于评估车载系统所引起的认知负荷的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
11.90
自引率
16.90%
发文量
264
审稿时长
48 days
期刊介绍: Accident Analysis & Prevention provides wide coverage of the general areas relating to accidental injury and damage, including the pre-injury and immediate post-injury phases. Published papers deal with medical, legal, economic, educational, behavioral, theoretical or empirical aspects of transportation accidents, as well as with accidents at other sites. Selected topics within the scope of the Journal may include: studies of human, environmental and vehicular factors influencing the occurrence, type and severity of accidents and injury; the design, implementation and evaluation of countermeasures; biomechanics of impact and human tolerance limits to injury; modelling and statistical analysis of accident data; policy, planning and decision-making in safety.
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