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迈向现实世界中的可穿戴式嗜睡检测:言语过程中的皮肤电活动数据可识别睡眠剥夺情况。

Towards real-world wearable sleepiness detection: Electrodermal activity data during speech can identify sleep deprivation.

作者信息

Moon Jihye, Peitzsch Andrew, Kong Youngsun, Seshadri Pranav, Chon Ki H

机构信息

Biomedical Engineering, University of Connecticut, Storrs, CT, 06269, USA.

Biomedical Engineering, University of Connecticut, Storrs, CT, 06269, USA.

出版信息

Comput Biol Med. 2025 Jan;184:109320. doi: 10.1016/j.compbiomed.2024.109320. Epub 2024 Nov 23.

Abstract

Accurate assessment of sleepiness is pivotal in managing the fatigue-associated risks stemming from sleep deprivation. Speech signals are easy to obtain, allowing detection of sleepiness anywhere. Previous machine learning (ML) studies using speech have not been successful in achieving reliable estimation of perceived sleepiness levels, which results in inaccurate sleepiness determination. In this paper, we propose that these challenges primarily stem from the inherent complexities of speech signals with inaccurate labels of sleepiness. Because the physical effects of sleepiness become pronounced after prolonged wakefulness, we conducted a 25-h sleep deprivation study. We collected electrodermal activity (EDA) and speech data from 30 subjects during speech production every 2 h over the 25-hour period, along with various sleepiness level labels-their cognitive impairment scores derived from the psychomotor vigilance test, their self-reported sleepiness scores, and the h awake scores. The data analysis compared EDA recorded during speech versus only the speech data and examined which approach provided better sleepiness level estimation and detection using ML. The ML result is that features derived from only EDA during speech production provided the most accurate sleepiness determination. Specifically, EDA ML models trained using the hours awake scores provided the best sleepiness level estimation, with 0.53 correlation, and better detection of sleepiness (which is related to cognitive performance deterioration), with 0.85 accuracy (0.80 sensitivity), when compared to ML features derived from speech, which obtained 0.40 correlation for sleepiness level estimation and 0.69 accuracy (0.59 sensitivity) for sleepiness detection. Moreover, the EDA data collected during speech production offered the best performance for sleepiness detection compared to EDA collected during other activities, such as visual vigilance (0.68 accuracy and 0.65 sensitivity). Given the potential of EDA data during speech production, this work demonstrates the promise of future wearable devices that could collect EDA data from speech activity, along with speech signals, for more advanced and accurate real-world sleepiness detection.

摘要

准确评估嗜睡程度对于管理因睡眠剥夺产生的疲劳相关风险至关重要。语音信号易于获取,可在任何地方检测嗜睡情况。以往使用语音的机器学习(ML)研究在可靠估计感知到的嗜睡程度方面并不成功,导致嗜睡判定不准确。在本文中,我们提出这些挑战主要源于语音信号固有的复杂性以及嗜睡标签不准确。由于嗜睡的生理影响在长时间清醒后会变得明显,我们进行了一项为期25小时的睡眠剥夺研究。在这25小时内,我们每2小时从30名受试者在语音产生过程中收集皮肤电活动(EDA)和语音数据,以及各种嗜睡程度标签——他们从心理运动警觉测试得出的认知障碍分数、自我报告的嗜睡分数和清醒小时数分数。数据分析比较了语音过程中记录的EDA与仅语音数据,并研究了哪种方法使用ML能提供更好的嗜睡程度估计和检测。ML结果表明,仅从语音产生过程中的EDA得出的特征能提供最准确的嗜睡判定。具体而言,与从语音得出的ML特征相比,使用清醒小时数分数训练的EDA ML模型在嗜睡程度估计方面相关性最佳,为0.53,在嗜睡检测(与认知性能下降相关)方面准确性更高,为0.85(灵敏度为0.80),而从语音得出的ML特征在嗜睡程度估计方面相关性为0.40,在嗜睡检测方面准确性为0.69(灵敏度为0.59)。此外,与在其他活动(如视觉警觉)中收集的EDA相比,语音产生过程中收集的EDA数据在嗜睡检测方面表现最佳(准确性为0.68,灵敏度为0.65)。鉴于语音产生过程中EDA数据的潜力,这项工作展示了未来可穿戴设备的前景,这些设备可以从语音活动以及语音信号中收集EDA数据,以进行更先进、准确的现实世界嗜睡检测。

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