Login / Signup

Obstructive sleep apnea detection during wakefulness: a comprehensive methodological review.

Ali Mohammad AlqudahAhmed ElwaliBrendan KupiakFarahnaz HajipourNatasha JacobsonZahra K Moussavi
Published in: Medical & biological engineering & computing (2024)
Obstructive sleep apnea (OSA) is a chronic condition affecting up to 1 billion people, globally. Despite this spread, OSA is still thought to be underdiagnosed. Lack of diagnosis is largely attributed to the high cost, resource-intensive, and time-consuming nature of existing diagnostic technologies during sleep. As individuals with OSA do not show many symptoms other than daytime sleepiness, predicting OSA while the individual is awake (wakefulness) is quite challenging. However, research especially in the last decade has shown promising results for quick and accurate methodologies to predict OSA during wakefulness. Furthermore, advances in machine learning algorithms offer new ways to analyze the measured data with more precision. With a widening research outlook, the present review compares methodologies for OSA screening during wakefulness, and recommendations are made for avenues of future research and study designs.
Keyphrases
  • obstructive sleep apnea
  • positive airway pressure
  • machine learning
  • sleep apnea
  • sleep quality
  • high resolution
  • electronic health record
  • deep brain stimulation
  • sensitive detection
  • real time pcr