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Respiratory event index underestimates severity of sleep apnea compared to apnea-hypopnea index.

Minna PitkänenRajdeep Kumar NathHenri KorkalainenSami NikkonenAlaa MahamidArie OksenbergBrett DuceJuha TöyräsSamu KainulainenTimo Leppanen
Published in: Sleep advances : a journal of the Sleep Research Society (2023)
Polygraphy (PG) is often used to diagnose obstructive sleep apnea (OSA). However, it does not use electroencephalography, and therefore cannot estimate sleep time or score arousals and related hypopneas. Consequently, the PG-derived respiratory event index (REI) differs from the polysomnography (PSG)-derived apnea-hypopnea index (AHI). In this study, we comprehensively analyzed the differences between AHI and REI. Conventional AHI and REI were calculated based on total sleep time (TST) and total analyzed time (TAT), respectively, from two different PSG datasets ( n  = 1561). Moreover, TAT-based AHI (AHI TAT ) and TST-based REI (REI TST ) were calculated. These indices were compared keeping AHI as the gold standard. The REI, AHI TAT , and REI TST were significantly lower than AHI ( p  < 0.0001, p  ≤ 0.002, and p  ≤ 0.01, respectively). The total classification accuracy of OSA severity based on REI was 42.1% and 72.8% for two datasets. Based on AHI TAT , the accuracies were 68.4% and 85.9%, and based on REI TST , they were 65.9% and 88.5% compared to AHI. AHI was most correlated with REI TST ( r  = 0.98 and r  = 0.99 for the datasets) and least with REI ( r  = 0.92 and r  = 0.97). Compared to AHI, REI had the largest mean absolute errors (13.9 and 6.7) and REI TST the lowest (5.9 and 1.9). REI had the lowest sensitivities (42.1% and 72.8%) and specificities (80.7% and 90.9%) in both datasets. Based on these present results, REI underestimates AHI. Furthermore, these results indicate that arousal-related hypopneas are an important measure for accurately classifying OSA severity.
Keyphrases
  • obstructive sleep apnea
  • positive airway pressure
  • sleep apnea
  • emergency department
  • rna seq
  • depressive symptoms
  • sleep quality
  • patient safety
  • single cell