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Utilisation of machine learning to predict surgical candidates for the treatment of childhood upper airway obstruction.

Xiao LiuYvonne PamulaSarah ImmanuelDeclan KennedyJames MartinMathias Baumert
Published in: Sleep & breathing = Schlaf & Atmung (2021)
Data-driven analysis demonstrated that AT helps to reverse and to prevent the worsening of the pathophysiological symptoms in children with OSAS. Multiple pathophysiological markers used with machine learning can capture more comprehensive information on childhood OSAS. Children with mild physiological and neurophysiological symptoms could avoid AT, and children who have UAO symptoms post AT may have sleep-related hypoventilation disease which requires further investigation. Furthermore, the findings may help surgeons more accurately predict children on whom they should perform AT.
Keyphrases
  • machine learning
  • young adults
  • sleep quality
  • healthcare
  • physical activity
  • depressive symptoms
  • social media
  • health information
  • smoking cessation