npj Digital Medicine (Apr 2024)

Challenges and opportunities of deep learning for wearable-based objective sleep assessment

  • Bing Zhai,
  • Greg J. Elder,
  • Alan Godfrey

DOI
https://doi.org/10.1038/s41746-024-01086-9
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 3

Abstract

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In recent years the intersection of wearable technologies and machine learning (ML) based deep learning (DL) approaches have highlighted their potential in sleep research. Yet, a recent study published in NPJ Digital Medicine highlights the generalization limitations of DL models in sleep-wake classification using actigraphy data. Here, this article discusses some of the challenges and opportunities presented by domain adaptation and self-supervised learning (SSL), innovative methodologies that use large-scale unlabeled data to bolster the generalizability of DL models in sleep assessment. These approaches not only improve sleep-wake classification but also hold promise for extending to more comprehensive sleep stage classification, potentially advancing the field of automated sleep assessment through efficient and user-friendly wearable monitoring systems.