Tracking Intermediate Performance of Vigilant Attention Using Multiple Eye Metrics
Overview
Authors
Affiliations
Vigilance deficits account for a substantial number of accidents and errors. Current techniques to detect vigilance impairment measure only the most severe level evident in eyelid closure and falling asleep, which is often too late to avoid an accident or error. The present study sought to identify ocular biometrics of intermediate impairment of vigilance and develop a new technique that could detect a range of deficits in vigilant attention (VA). Sixteen healthy adults performed well-validated Psychomotor Vigilance Test (PVT) for tracking vigilance attention while undergoing simultaneous recording of eye metrics every 2 hours during 38 hours of continuous wakefulness. A novel marker was found that measured VA when the eyes were open-the prevalence of microsaccades. Notably, the prevalence of microsaccades decreased in response to sleep deprivation and time-on-task. In addition, a novel algorithm for detecting multilevel VA was developed, which estimated performance on the PVT by integrating the novel marker with other eye-related indices. The novel algorithm also tracked changes in intermediate level of VA (specific reaction times in the PVT, i.e. 300-500 ms) during prolonged time-on-task and sleep deprivation, which had not been tracked previously by conventional techniques. The implication of the findings is that this novel algorithm, named "eye-metrical estimation version of the PVT: PVT-E," can be used to reduce human-error-related accidents caused by vigilance impairment even when its level is intermediate.
Foreword: Festschrift in honor of David Dinges, scientist and mentor extraordinaire.
Van Dongen H, Basner M, Mullington J, Carlin M Sleep Adv. 2023; 4(1):zpad020.
PMID: 38020731 PMC: 10658658. DOI: 10.1093/sleepadvances/zpad020.
PERCLOS-based technologies for detecting drowsiness: current evidence and future directions.
Abe T Sleep Adv. 2023; 4(1):zpad006.
PMID: 37193281 PMC: 10108649. DOI: 10.1093/sleepadvances/zpad006.
Predicting and mitigating fatigue effects due to sleep deprivation: A review.
Kayser K, Puig V, Estepp J Front Neurosci. 2022; 16:930280.
PMID: 35992930 PMC: 9389006. DOI: 10.3389/fnins.2022.930280.
Auditory spatial attention gradients and cognitive control as a function of vigilance.
Golob E, Nelson J, Scheuerman J, Venable K, Mock J Psychophysiology. 2021; 58(10):e13903.
PMID: 34342887 PMC: 8419090. DOI: 10.1111/psyp.13903.
Digital biomarker of mental fatigue.
Tseng V, Valliappan N, Ramachandran V, Choudhury T, Navalpakkam V NPJ Digit Med. 2021; 4(1):47.
PMID: 33707736 PMC: 7952693. DOI: 10.1038/s41746-021-00415-6.