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Multi-Modal Home Sleep Monitoring in Older Adults
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U-Sleep's resilience to AASM guidelines.

Luigi Fiorillo1,2, Giuliana Monachino3,4, Julia van der Meer5

  • 1Institute of Informatics, University of Bern, Bern, Switzerland. luigi.fiorillo@supsi.ch.

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|March 6, 2023
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Summary
This summary is machine-generated.

Deep learning sleep scoring models, like U-Sleep, can achieve high performance without strictly following American Academy of Sleep Medicine (AASM) guidelines or using all recommended data. Training on diverse, multi-center data significantly improves automated sleep scoring accuracy.

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Area of Science:

  • Sleep medicine
  • Artificial intelligence in healthcare
  • Biomedical signal processing

Background:

  • The American Academy of Sleep Medicine (AASM) provides guidelines for standardizing sleep scoring procedures.
  • Automated sleep scoring systems traditionally rely heavily on these AASM standards.
  • Deep learning methods have shown superior performance over classical machine learning for sleep scoring.

Purpose of the Study:

  • To investigate the performance of a deep learning sleep scoring algorithm (U-Sleep) with non-conventional data inputs.
  • To determine if strict adherence to AASM guidelines is necessary for high-performance automated sleep scoring.
  • To evaluate the impact of multi-center data versus single-center data on model performance.

Main Methods:

  • Utilized U-Sleep, a state-of-the-art deep learning algorithm for sleep scoring.
  • Experimented with clinically non-recommended EEG derivations and without chronological age information.
  • Trained and validated models using 28,528 polysomnography studies from 13 diverse clinical studies.
  • Compared performance of models trained on single large cohorts versus multi-center data.

Main Results:

  • U-Sleep achieved strong performance even with non-conventional EEG derivations and without age data.
  • The necessity of strictly adhering to AASM guidelines for optimal performance was challenged.
  • Training on multi-center data consistently yielded better performing models compared to single-center training, even with large, heterogeneous single cohorts.

Conclusions:

  • Deep learning models for sleep scoring can be robust and perform well without full reliance on traditional AASM guidelines or all recommended data.
  • Multi-center data remains crucial for enhancing the generalizability and performance of automated sleep scoring systems.
  • The findings suggest flexibility in data utilization for developing effective AI-driven sleep analysis tools.