Association of Visual-Based Signals with Electroencephalography Patterns in Enhancing the Drowsiness Detection in Drivers with Obstructive Sleep Apnea

Author:

Minhas Riaz1ORCID,Peker Nur Yasin2ORCID,Hakkoz Mustafa Abdullah3ORCID,Arbatli Semih4,Celik Yeliz5,Erdem Cigdem Eroglu6ORCID,Semiz Beren1ORCID,Peker Yuksel578910ORCID

Affiliation:

1. College of Engineering, Koc University, Istanbul 34450, Turkey

2. Department of Mechatronics Engineering, Sakarya University of Applied Sciences, Sakarya 54050, Turkey

3. Graduate School of Computer Engineering, Istanbul Technical University, Istanbul 34469, Turkey

4. Graduate School of Health Sciences, Koc University, Istanbul 34010, Turkey

5. Research Center for Translational Medicine (KUTTAM), Koc University, Istanbul 34010, Turkey

6. Department of Electrical and Electronics Engineering, Ozyegin University, Istanbul 34794, Turkey

7. Department of Pulmonary Medicine, School of Medicine, Koc University, Istanbul 34010, Turkey

8. Sahlgrenska Academy, University of Gothenburg, 40530 Gothenburg, Sweden

9. School of Medicine, Lund University, 22185 Lund, Sweden

10. School of Medicine, University of Pittsburgh, Pittsburgh, PA 15213, USA

Abstract

Individuals with obstructive sleep apnea (OSA) face increased accident risks due to excessive daytime sleepiness. PERCLOS, a recognized drowsiness detection method, encounters challenges from image quality, eyewear interference, and lighting variations, impacting its performance, and requiring validation through physiological signals. We propose visual-based scoring using adaptive thresholding for eye aspect ratio with OpenCV for face detection and Dlib for eye detection from video recordings. This technique identified 453 drowsiness (PERCLOS ≥ 0.3 || CLOSDUR ≥ 2 s) and 474 wakefulness episodes (PERCLOS < 0.3 and CLOSDUR < 2 s) among fifty OSA drivers in a 50 min driving simulation while wearing six-channel EEG electrodes. Applying discrete wavelet transform, we derived ten EEG features, correlated them with visual-based episodes using various criteria, and assessed the sensitivity of brain regions and individual EEG channels. Among these features, theta–alpha-ratio exhibited robust mapping (94.7%) with visual-based scoring, followed by delta–alpha-ratio (87.2%) and delta–theta-ratio (86.7%). Frontal area (86.4%) and channel F4 (75.4%) aligned most episodes with theta–alpha-ratio, while frontal, and occipital regions, particularly channels F4 and O2, displayed superior alignment across multiple features. Adding frontal or occipital channels could correlate all episodes with EEG patterns, reducing hardware needs. Our work could potentially enhance real-time drowsiness detection reliability and assess fitness to drive in OSA drivers.

Funder

Scientific and Technological Research Council of Turkey

Presidency of Turkey, Head of Strategy and Budget

Publisher

MDPI AG

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