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SleepVST: Sleep Staging from Near-Infrared Video Signals using Pre-Trained Transformers

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Advances in camera-based physiological monitoring have enabled the robust, non-contact measurement of respiration and the cardiac pulse, which are known to be indicative of the sleep stage. This has led to research into camera-based sleep monitoring as a promising alternative to "gold-standard" polysomnography, which is cumbersome, expensive to administer, and hence unsuitable for longer-term clinical studies. In this paper, we introduce SleepVST, a transformer model which enables state-of-the-art performance in camera-based sleep stage classification (sleep staging). After pre-training on contact sensor data, SleepVST outperforms existing methods for cardio-respiratory sleep staging on the SHHS and MESA datasets, achieving total Cohen's kappa scores of 0.75 and 0.77 respectively. We then show that SleepVST can be successfully transferred to cardio-respiratory waveforms extracted from video, enabling fully contact-free sleep staging. Using a video dataset of 50 nights, we achieve a total accuracy of 78.8\% and a Cohen's $\kappa$ of 0.71 in four-class video-based sleep staging, setting a new state-of-the-art in the domain.

Jonathan F. Carter, Jo\~ao Jorge, Oliver Gibson, Lionel Tarassenko• 2024

Related benchmarks

TaskDatasetResultRank
four-class cardio-respiratory sleep stagingMESA
Kappa_mu0.76
4
four-class cardio-respiratory sleep stagingSHHS
Kappa_Mu0.73
3
four-class sleep stagingOxford Sleep Volunteers
Kappa (mu)68
2
four-class sleep stagingHealthy infants--
1
four-class sleep stagingHealthy adults--
1
four-class sleep stagingHealthBed Study--
1
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