Sensors (Sep 2024)

Overnight Sleep Staging Using Chest-Worn Accelerometry

  • Fons Schipper,
  • Angela Grassi,
  • Marco Ross,
  • Andreas Cerny,
  • Peter Anderer,
  • Lieke Hermans,
  • Fokke van Meulen,
  • Mickey Leentjens,
  • Emily Schoustra,
  • Pien Bosschieter,
  • Ruud J. G. van Sloun,
  • Sebastiaan Overeem,
  • Pedro Fonseca

DOI
https://doi.org/10.3390/s24175717
Journal volume & issue
Vol. 24, no. 17
p. 5717

Abstract

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Overnight sleep staging is an important part of the diagnosis of various sleep disorders. Polysomnography is the gold standard for sleep staging, but less-obtrusive sensing modalities are of emerging interest. Here, we developed and validated an algorithm to perform “proxy” sleep staging using cardiac and respiratory signals derived from a chest-worn accelerometer. We collected data in two sleep centers, using a chest-worn accelerometer in combination with full PSG. A total of 323 participants were analyzed, aged 13–83 years, with BMI 18–47 kg/m2. We derived cardiac and respiratory features from the accelerometer and then applied a previously developed method for automatic cardio-respiratory sleep staging. We compared the estimated sleep stages against those derived from PSG and determined performance. Epoch-by-epoch agreement with four-class scoring (Wake, REM, N1+N2, N3) reached a Cohen’s kappa coefficient of agreement of 0.68 and an accuracy of 80.8%. For Wake vs. Sleep classification, an accuracy of 93.3% was obtained, with a sensitivity of 78.7% and a specificity of 96.6%. We showed that cardiorespiratory signals obtained from a chest-worn accelerometer can be used to estimate sleep stages among a population that is diverse in age, BMI, and prevalence of sleep disorders. This opens up the path towards various clinical applications in sleep medicine.

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