Evaluating Electroencephalogram-Based Predictive Model for Drowsiness Measurement to Reduce Accident Risk in Active Individuals: Protocol for a Preliminary Monocentric Study

Chloé Boitard, Zoé Mazurie, Khadijeh Sadatnejad, Julien Coelho, Patricia Sagaspe, Julie Lenoir, Julien Mattei, Pierre Berthomier, Marie Brandewinder, Pierre Philip, Jean-Arthur Micoulaud Franchi, Christian Berthomier, Jacques Taillard
JMIR Res Protoc. 2026-02-17; 15: e83969-e83969
DOI: 10.2196/83969

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https://www.bordeaux-neurocampus.fr/12557

Abstract

Background
Voluntary behaviors and socioeconomic factors, such as social jetlag and shift work, can lead to insufficient or disrupted sleep, resulting in drowsiness among active individuals. In occupational and driving contexts, drowsiness poses a serious safety risk by impairing alertness, slowing reaction times, and increasing the likelihood of accidents. Developing automatic and easy-to-implement tools for drowsiness detection or prediction is essential in the management of sleepy patients or in high-risk environments where sustained vigilance is critical.

Objective
This study aims to validate continuous or predictive methods for assessing drowsiness using automated analysis of a limited number of electroencephalogram (EEG) channels.

Methods
Designed as a single-center, nonrandomized, single-group study, this investigation will evaluate drowsiness and cognitive performance in 40 healthy volunteers exposed to 2 sleep deprivation conditions simulating real-world occupational scenarios. The primary outcome will be the Objective Sleepiness Scale (OSS) and its automated analysis, with a focus on its ability to measure objective wakefulness as assessed by the maintenance of wakefulness test (MWT). Secondary outcomes will include multimodal resting-state EEG markers, subjective and objective sleepiness measures, performance on a simulated driving task, attention, executive function, and vigilance assessments, as well as sleep quality, sleep quantity, and mind-wandering. The influence of sociodemographic and clinical variables on the measurement and prediction of drowsiness will also be systematically examined.

Results
This study received funding from Physip and ANR (Agence Nationale de la Recherche, National Research Agency) in 2019, with ethical committee (Comité de Protection des Personnes, Committee for the Protection of Persons) approval in May 2022. Recruitment began in March 2023 and was completed in May 2025, with a database lock in June 2025. Data analysis started in June 2025 and is still ongoing.

Conclusions
By validating these novel EEG-based measures, this study aims to lay the groundwork for proactive strategies for drowsiness management in occupational, transportation, and clinical settings.

Auteurs Bordeaux Neurocampus