U-Sleep: resilient high-frequency sleep staging

Research output: Contribution to journalJournal articleResearchpeer-review

Standard

U-Sleep : resilient high-frequency sleep staging. / Perslev, Mathias; Darkner, Sune; Kempfner, Lykke; Nikolic, Miki; Jennum, Poul Jørgen; Igel, Christian.

In: npj Digital Medicine, Vol. 4, No. 1, 72, 15.04.2021.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Perslev, M, Darkner, S, Kempfner, L, Nikolic, M, Jennum, PJ & Igel, C 2021, 'U-Sleep: resilient high-frequency sleep staging', npj Digital Medicine, vol. 4, no. 1, 72. https://doi.org/10.1038/s41746-021-00440-5

APA

Perslev, M., Darkner, S., Kempfner, L., Nikolic, M., Jennum, P. J., & Igel, C. (2021). U-Sleep: resilient high-frequency sleep staging. npj Digital Medicine, 4(1), [72]. https://doi.org/10.1038/s41746-021-00440-5

Vancouver

Perslev M, Darkner S, Kempfner L, Nikolic M, Jennum PJ, Igel C. U-Sleep: resilient high-frequency sleep staging. npj Digital Medicine. 2021 Apr 15;4(1). 72. https://doi.org/10.1038/s41746-021-00440-5

Author

Perslev, Mathias ; Darkner, Sune ; Kempfner, Lykke ; Nikolic, Miki ; Jennum, Poul Jørgen ; Igel, Christian. / U-Sleep : resilient high-frequency sleep staging. In: npj Digital Medicine. 2021 ; Vol. 4, No. 1.

Bibtex

@article{cb31af3840934c28bf058e9fe5082061,
title = "U-Sleep: resilient high-frequency sleep staging",
abstract = "Sleep disorders affect a large portion of the global population and are strong predictors of morbidity and all-cause mortality. Sleep staging segments a period of sleep into a sequence of phases providing the basis for most clinical decisions in sleep medicine. Manual sleep staging is difficult and time-consuming as experts must evaluate hours of polysomnography (PSG) recordings with electroencephalography (EEG) and electrooculography (EOG) data for each patient. Here, we present U-Sleep, a publicly available, ready-to-use deep-learning-based system for automated sleep staging ( sleep.ai.ku.dk ). U-Sleep is a fully convolutional neural network, which was trained and evaluated on PSG recordings from 15,660 participants of 16 clinical studies. It provides accurate segmentations across a wide range of patient cohorts and PSG protocols not considered when building the system. U-Sleep works for arbitrary combinations of typical EEG and EOG channels, and its special deep learning architecture can label sleep stages at shorter intervals than the typical 30 s periods used during training. We show that these labels can provide additional diagnostic information and lead to new ways of analyzing sleep. U-Sleep performs on par with state-of-the-art automatic sleep staging systems on multiple clinical datasets, even if the other systems were built specifically for the particular data. A comparison with consensus-scores from a previously unseen clinic shows that U-Sleep performs as accurately as the best of the human experts. U-Sleep can support the sleep staging workflow of medical experts, which decreases healthcare costs, and can provide highly accurate segmentations when human expertize is lacking.",
author = "Mathias Perslev and Sune Darkner and Lykke Kempfner and Miki Nikolic and Jennum, {Poul J{\o}rgen} and Christian Igel",
year = "2021",
month = apr,
day = "15",
doi = "10.1038/s41746-021-00440-5",
language = "English",
volume = "4",
journal = "npj Digital Medicine",
issn = "2398-6352",
publisher = "Nature Publishing Group",
number = "1",

}

RIS

TY - JOUR

T1 - U-Sleep

T2 - resilient high-frequency sleep staging

AU - Perslev, Mathias

AU - Darkner, Sune

AU - Kempfner, Lykke

AU - Nikolic, Miki

AU - Jennum, Poul Jørgen

AU - Igel, Christian

PY - 2021/4/15

Y1 - 2021/4/15

N2 - Sleep disorders affect a large portion of the global population and are strong predictors of morbidity and all-cause mortality. Sleep staging segments a period of sleep into a sequence of phases providing the basis for most clinical decisions in sleep medicine. Manual sleep staging is difficult and time-consuming as experts must evaluate hours of polysomnography (PSG) recordings with electroencephalography (EEG) and electrooculography (EOG) data for each patient. Here, we present U-Sleep, a publicly available, ready-to-use deep-learning-based system for automated sleep staging ( sleep.ai.ku.dk ). U-Sleep is a fully convolutional neural network, which was trained and evaluated on PSG recordings from 15,660 participants of 16 clinical studies. It provides accurate segmentations across a wide range of patient cohorts and PSG protocols not considered when building the system. U-Sleep works for arbitrary combinations of typical EEG and EOG channels, and its special deep learning architecture can label sleep stages at shorter intervals than the typical 30 s periods used during training. We show that these labels can provide additional diagnostic information and lead to new ways of analyzing sleep. U-Sleep performs on par with state-of-the-art automatic sleep staging systems on multiple clinical datasets, even if the other systems were built specifically for the particular data. A comparison with consensus-scores from a previously unseen clinic shows that U-Sleep performs as accurately as the best of the human experts. U-Sleep can support the sleep staging workflow of medical experts, which decreases healthcare costs, and can provide highly accurate segmentations when human expertize is lacking.

AB - Sleep disorders affect a large portion of the global population and are strong predictors of morbidity and all-cause mortality. Sleep staging segments a period of sleep into a sequence of phases providing the basis for most clinical decisions in sleep medicine. Manual sleep staging is difficult and time-consuming as experts must evaluate hours of polysomnography (PSG) recordings with electroencephalography (EEG) and electrooculography (EOG) data for each patient. Here, we present U-Sleep, a publicly available, ready-to-use deep-learning-based system for automated sleep staging ( sleep.ai.ku.dk ). U-Sleep is a fully convolutional neural network, which was trained and evaluated on PSG recordings from 15,660 participants of 16 clinical studies. It provides accurate segmentations across a wide range of patient cohorts and PSG protocols not considered when building the system. U-Sleep works for arbitrary combinations of typical EEG and EOG channels, and its special deep learning architecture can label sleep stages at shorter intervals than the typical 30 s periods used during training. We show that these labels can provide additional diagnostic information and lead to new ways of analyzing sleep. U-Sleep performs on par with state-of-the-art automatic sleep staging systems on multiple clinical datasets, even if the other systems were built specifically for the particular data. A comparison with consensus-scores from a previously unseen clinic shows that U-Sleep performs as accurately as the best of the human experts. U-Sleep can support the sleep staging workflow of medical experts, which decreases healthcare costs, and can provide highly accurate segmentations when human expertize is lacking.

U2 - 10.1038/s41746-021-00440-5

DO - 10.1038/s41746-021-00440-5

M3 - Journal article

C2 - 33859353

VL - 4

JO - npj Digital Medicine

JF - npj Digital Medicine

SN - 2398-6352

IS - 1

M1 - 72

ER -

ID: 260322375