Please use this identifier to cite or link to this item: http://hdl.handle.net/11434/2316
Title: Evaluation of a deep learning sleep staging algorithm utilizing a single frontal EEG channel on a clinical population with suspected or known obstructive sleep apnea.
Epworth Authors: Wicks, Darrel
McMahon, Marcus
Keywords: Sleep Apnea
Home Sleep Apnea Testing
Obstructive Sleep Apnea
Deep Learning Sleep Staging Algorithm
Compumedics Ltd Somfit®.
Polysomnography
Sleep Stages Classification
Epworth Richmond, Sleep Disorders Unit, Richmond, Australia
Issue Date: Aug-2024
Conference Name: Epworth HealthCare Research Week 2024
Conference Location: Epworth Research Institute, Victoria, Australia
Abstract: Home Sleep Apnea Testing (HSAT) for the diagnosis of Obstructive Sleep Apnea (OSA) has emerged as a simpler and cheaper diagnostic option compared with attended in-lab Polysomnography (PSG). The identification of sleep stages forms an essential part of the OSA diagnosis as it allows for proper phenotyping of OSA, specifically the REM phenotype. The manual staging of sleep is arduous and costly, so the development of accurate Deep Learning (DL) algorithms that automatically classify sleep stages forms a crucial role in the diagnosis of OSA with HSAT. The purpose of this study is to investigate the accuracy of a DL sleep staging algorithm in a new miniaturized sleep monitoring device – Compumedics Ltd Somfit®. Agreement between Somfit and PSG hypnograms is close to that between manual PSG hypnograms thus confirming acceptability of the single frontal EEG electrode placement for accurate automatic staging.
URI: http://hdl.handle.net/11434/2316
Type: Conference Poster
Type of Clinical Study or Trial: Validation Study
Appears in Collections:Research Week

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