4.7 Article

U-Sleep: resilient high-frequency sleep staging

Journal

NPJ DIGITAL MEDICINE
Volume 4, Issue 1, Pages -

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41746-021-00440-5

Keywords

-

Funding

  1. Independent Research Fund Denmark through the project,U-Sleep [9131-00099B]
  2. National Heart, Lung, and Blood Institute [R24 HL114473, 75N92019R002, R01 HL071194, R01 HL070848, R01 HL070847, R01 HL070842, R01 HL070841, R01 HL070837, R01 HL070838, R01 HL070839, U01HL53916, U01HL53931, U01HL53934, U01HL53937, U01HL64360, U01HL53938, U01HL53940, U01HL53941, U01HL63463]
  3. National Institutes of Health [R01HL106410, K24HL127307, RO1HL60957, K23 HL04426, RO1 NR02707, M01 Rrmpd0380-39, HL083075, HL083129, UL1-RR-024134, UL1 RR024989, HL46380, M01 RR00080-39, T32-HL07567, RO1-46380, AG021918]
  4. American Sleep Medicine Foundation [38-PM-07]
  5. NIH-NHLBI Association of Sleep Disorders with Cardiovascular Health Across Ethnic Groups [RO1 HL098433]
  6. NHLBI from the National Heart, Lung, and Blood Institute [HHSN268201500003I, N01-HC-95159, N01-HC-95160, N01HC-95161, N01-HC-95162, N01-HC-95163, N01-HC-95164, N01-HC-95165, N01-HC95166, N01-HC-95167, N01-HC-95168, N01-HC-95169]
  7. NCATS [UL1-TR-000040, UL1-TR001079, UL1-TR-001420]
  8. Portuguese Foundation for Science and Technology (FCT) [SFRH/BD/81828/2011, SFRH/BD/80735/2011]
  9. QREN
  10. FEDER [CENTRO-01-0202-FEDER011530]
  11. The National Institutes of Health [AG026720, AG05394, AG05407, AG08415, AR35582, AR35583, AR35584, RO1 AG005407, R01 AG027576-22, 2 R01 AG005394-22A1, 2 RO1 AG027574-22A1, HL40489, T32 AG000212-14]
  12. Fundação para a Ciência e a Tecnologia [SFRH/BD/80735/2011, SFRH/BD/81828/2011] Funding Source: FCT

Ask authors/readers for more resources

Sleep disorders have a global impact, and sleep staging is crucial for clinical decisions in sleep medicine. U-Sleep, a deep-learning-based system, offers automated sleep staging with high accuracy across various patient cohorts and PSG protocols, proving to be comparable to state-of-the-art systems and human experts.
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.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available