Abstract
Objective. Sleep staging based on full polysomnography is the gold standard in the diagnosis of many sleep disorders. It is however costly, complex, and obtrusive due to the use of multiple electrodes. Automatic sleep staging based on single-channel electro-oculography (EOG) is a promising alternative, requiring fewer electrodes which could be self-applied below the hairline. EOG sleep staging algorithms are however yet to be validated in clinical populations with sleep disorders. Approach. We utilized the SOMNIA dataset, comprising 774 recordings from subjects with various sleep disorders, including insomnia, sleep-disordered breathing, hypersomnolence, circadian rhythm disorders, parasomnias, and movement disorders. The recordings were divided into train (574), validation (100), and test (100) groups. We trained a neural network that integrated transformers within a U-Net backbone. This design facilitated learning of arbitrary-distance temporal relationships within and between the EOG and hypnogram. Main results. For 5-class sleep staging, we achieved median accuracies of 85.0% and 85.2% and Cohen’s kappas of 0.781 and 0.796 for left and right EOG, respectively. The performance using the right EOG was significantly better than using the left EOG, possibly because in the recommended AASM setup, this electrode is located closer to the scalp. The proposed model is robust to the presence of a variety of sleep disorders, displaying no significant difference in performance for subjects with a certain sleep disorder compared to those without. Significance. The results show that accurate sleep staging using single-channel EOG can be done reliably for subjects with a variety of sleep disorders.
Original language | English |
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Article number | 055007 |
Number of pages | 22 |
Journal | Physiological Measurement |
Volume | 45 |
Issue number | 5 |
Early online date | 23 Apr 2024 |
DOIs | |
Publication status | Published - 1 May 2024 |
Funding
This work was performed within the IMPULSE framework of the Eindhoven MedTech Innovation Center(e/MTIC, incorporating Eindhoven University of Technology, Philips Research, and Sleep Medicine Center, Kempenhaeghe Foundation), including a PPS supplement from the Dutch Ministry of Economic Affairs and Climate Policy.
Keywords
- electrooculography
- automatic sleep staging
- sleep disorders
- EOG
- Neural Networks, Computer
- Humans
- Middle Aged
- Male
- Sleep Wake Disorders/diagnosis
- Polysomnography
- Electrooculography/methods
- Young Adult
- Signal Processing, Computer-Assisted
- Adult
- Female
- Sleep Stages/physiology
- Cohort Studies
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Sleep Medicine
van Gilst, M. M. (Content manager) & van der Hout-van der Jagt, M. B. (Content manager)
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