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利用 EEG 和 fNIRS 检测睡眠剥夺引起的疲劳,并使用彩色光刺激抑制疲劳。

Utilizing EEG and fNIRS for the detection of sleep-deprivation-induced fatigue and its inhibition using colored light stimulation.

机构信息

Department of Cogno-Mechatronics Engineering, Pusan National University, Busandaehak-ro 63 beon-gil 2, Geumjeong-gu, Busan, 46241, Korea.

Department of Electronic and Robot Engineering, Busan University of Foreign Studies, 65, KeumSaem-Ro 485 beongil, KeumJeong-Gu, Busan, 46234, Korea.

出版信息

Sci Rep. 2023 Apr 20;13(1):6465. doi: 10.1038/s41598-023-33426-2.

Abstract

Drowsy driving is a common, but underestimated phenomenon in terms of associated risks as it often results in crashes causing fatalities and serious injuries. It is a challenging task to alert or reduce the driver's drowsy state using non-invasive techniques. In this study, a drowsiness reduction strategy has been developed and analyzed using exposure to different light colors and recording the corresponding electrical and biological brain activities. 31 subjects were examined by dividing them into 2 classes, a control group, and a healthy group. Fourteen EEG and 42 fNIRS channels were used to gather neurological data from two brain regions (prefrontal and visual cortices). Experiments shining 3 different colored lights have been carried out on them at certain times when there is a high probability to get drowsy. The results of this study show that there is a significant increase in HbO of a sleep-deprived participant when he is exposed to blue light. Similarly, the beta band of EEG also showed an increased response. However, the study found that there is no considerable increase in HbO and beta band power in the case of red and green light exposures. In addition to that, values of other physiological signals acquired such as heart rate, eye blinking, and self-reported Karolinska Sleepiness Scale scores validated the findings predicted by the electrical and biological signals. The statistical significance of the signals achieved has been tested using repeated measures ANOVA and t-tests. Correlation scores were also calculated to find the association between the changes in the data signals with the corresponding changes in the alertness level.

摘要

驾驶时困倦是一种常见但被低估的现象,因为它经常导致车祸,造成人员死亡和重伤。使用非侵入性技术提醒或减少驾驶员困倦状态是一项具有挑战性的任务。在这项研究中,使用不同的光颜色暴露并记录相应的电和生物脑活动,开发并分析了一种困倦减少策略。通过将 31 名受试者分为对照组和健康组,对他们进行了检查。使用 14 个 EEG 和 42 个 fNIRS 通道从两个大脑区域(前额叶和视觉皮层)收集神经数据。在可能困倦的特定时间对他们进行了三种不同颜色的光照射实验。这项研究的结果表明,当睡眠剥夺的参与者暴露在蓝光下时,他的 HbO 显著增加。同样,脑电图的β波段也显示出增加的反应。然而,研究发现,在红光和绿光照射的情况下,HbO 和β波段功率没有明显增加。除此之外,还获得了其他生理信号(如心率、眨眼和自我报告的卡罗林斯卡困倦量表评分)的值,这些值验证了电和生物信号预测的发现。使用重复测量方差分析和 t 检验测试了信号的统计学意义。还计算了相关分数,以发现数据信号变化与相应警觉水平变化之间的关联。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e6d5/10119294/91f8579b7e36/41598_2023_33426_Fig1_HTML.jpg

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