Scientific Reports (Jul 2023)

Decoding information about cognitive health from the brainwaves of sleep

  • Noor Adra,
  • Lisa W. Dümmer,
  • Luis Paixao,
  • Ryan A. Tesh,
  • Haoqi Sun,
  • Wolfgang Ganglberger,
  • Mike Westmeijer,
  • Madalena Da Silva Cardoso,
  • Anagha Kumar,
  • Elissa Ye,
  • Jonathan Henry,
  • Sydney S. Cash,
  • Erin Kitchener,
  • Catherine L. Leveroni,
  • Rhoda Au,
  • Jonathan Rosand,
  • Joel Salinas,
  • Alice D. Lam,
  • Robert J. Thomas,
  • M. Brandon Westover

DOI
https://doi.org/10.1038/s41598-023-37128-7
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 14

Abstract

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Abstract Sleep electroencephalogram (EEG) signals likely encode brain health information that may identify individuals at high risk for age-related brain diseases. Here, we evaluate the correlation of a previously proposed brain age biomarker, the “brain age index” (BAI), with cognitive test scores and use machine learning to develop and validate a series of new sleep EEG-based indices, termed “sleep cognitive indices” (SCIs), that are directly optimized to correlate with specific cognitive scores. Three overarching cognitive processes were examined: total, fluid (a measure of cognitive processes involved in reasoning-based problem solving and susceptible to aging and neuropathology), and crystallized cognition (a measure of cognitive processes involved in applying acquired knowledge toward problem-solving). We show that SCI decoded information about total cognition (Pearson’s r = 0.37) and fluid cognition (Pearson’s r = 0.56), while BAI correlated only with crystallized cognition (Pearson’s r = − 0.25). Overall, these sleep EEG-derived biomarkers may provide accessible and clinically meaningful indicators of neurocognitive health.