2023
DOI: 10.1111/jsr.13851
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Paediatric sleep apnea event prediction using nasal air pressure and machine learning

Abstract: Summary Sleep‐disordered breathing is an important health issue for children. The objective of this study was to develop a machine learning classifier model for the identification of sleep apnea events taken exclusively from nasal air pressure measurements acquired during overnight polysomnography for paediatric patients. A secondary objective of this study was to differentiate site of obstruction exclusively from hypopnea event data using the model. Computer vision classifiers were developed via transfer lear… Show more

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References 30 publications
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