4.6 Article

Detailed Assessment of Sleep Architecture With Deep Learning and Shorter Epoch-to-Epoch Duration Reveals Sleep Fragmentation of Patients With Obstructive Sleep Apnea

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JBHI.2020.3043507

关键词

Sleep; Sleep apnea; Brain modeling; Training; Statistics; Sociology; Hospitals; Deep learning; electroencephalography; obstructive sleep apnea; sleep fragmentation; sleep staging

资金

  1. Research Committee of the Kuopio University Hospital Catchment Area for the State Research Funding [5041767, 5041768, 5041770, 5041776, 5041779, 5041780, 5041782, 5041794, 5041797]
  2. Respiratory Foundation of Kuopio Region
  3. Research Foundation of the Pulmonary Diseases
  4. Paivikki and Sakari Sohlberg Foundation
  5. Finnish Cultural Foundation via the Post Docs in Companies program
  6. North-Savo Regional Fund
  7. Central Fund
  8. Paulo Foundation
  9. Tampere Tuberculosis Foundation
  10. Erkko Foundation
  11. Business Finland [5133/31/2018]
  12. Foundation of the Finnish Anti-Tuberculosis Association

向作者/读者索取更多资源

Analyzing sleep architecture with deep learning methods revealed highly fragmented sleep in severe OSA patients, potentially underestimated by traditional sleep staging. The study highlights the importance of detailed sleep analysis when assessing sleep disorders.
Traditional sleep staging with non-overlapping 30-second epochs overlooks multiple sleep-wake transitions. We aimed to overcome this by analyzing the sleep architecture in more detail with deep learning methods and hypothesized that the traditional sleep staging underestimates the sleep fragmentation of obstructive sleep apnea (OSA) patients. To test this hypothesis, we applied deep learning-based sleep staging to identify sleep stages with the traditional approach and by using overlapping 30-second epochs with 15-, 5-, 1-, or 0.5-second epoch-to-epoch duration. A dataset of 446 patients referred for polysomnography due to OSA suspicion was used to assess differences in the sleep architecture between OSA severity groups. The amount of wakefulness increased while REM and N3 decreased in severe OSA with shorter epoch-to-epoch duration. In other OSA severity groups, the amount of wake and N1 decreased while N3 increased. With the traditional 30-second epoch-to-epoch duration, only small differences in sleep continuity were observed between the OSA severity groups. With 1-second epoch-to-epoch duration, the hazard ratio illustrating the risk of fragmented sleep was 1.14 (p = 0.39) for mild OSA, 1.59 (p < 0.01) for moderate OSA, and 4.13 (p < 0.01) for severe OSA. With shorter epoch-to-epoch durations, total sleep time and sleep efficiency increased in the non-OSA group and decreased in severe OSA. In conclusion, more detailed sleep analysis emphasizes the highly fragmented sleep architecture in severe OSA patients which can be underestimated with traditional sleep staging. The results highlight the need for a more detailed analysis of sleep architecture when assessing sleep disorders.

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