Author:
Adra Noor,Dümmer Lisa W.,Paixao Luis,Tesh Ryan A.,Sun Haoqi,Ganglberger Wolfgang,Westmeijer Mike,Da Silva Cardoso Madalena,Kumar Anagha,Ye Elissa,Henry Jonathan,Cash Sydney S.,Kitchener Erin,Leveroni Catherine L.,Au Rhoda,Rosand Jonathan,Salinas Joel,Lam Alice D.,Thomas Robert J.,Westover M. Brandon
Abstract
AbstractSleep 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.
Funder
Glenn Foundation for Medical Research
American Federation for Aging Research
American Academy of Sleep Medicine
National Institutes of Health
Publisher
Springer Science and Business Media LLC
Cited by
3 articles.
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