Exploring the Efficacy of Convolutional Neural Networks in Sleep Apnea Detection from Single Channel EEG
Chun Hin Siu, Hossein Miri

TL;DR
This study demonstrates that a CNN trained on single channel EEG data can effectively detect sleep apnea, offering a promising, accessible alternative to traditional polysomnography for home-based diagnosis.
Contribution
The paper introduces a novel CNN approach with a comprehensive preprocessing pipeline and class imbalance handling for sleep apnea detection from single channel EEG.
Findings
CNN achieved 85.1% accuracy and MCC of 0.22
Effective preprocessing with IIR Butterworth filter
Addressed class imbalance using SMOTETomek
Abstract
Sleep apnea, a prevalent sleep disorder, involves repeated episodes of breathing interruptions during sleep, leading to various health complications, including cognitive impairments, high blood pressure, heart disease, stroke, and even death. One of the main challenges in diagnosing and treating sleep apnea is identifying individuals at risk. The current gold standard for diagnosis, Polysomnography (PSG), is costly, labor intensive, and inconvenient, often resulting in poor quality sleep data. This paper presents a novel approach to the detection of sleep apnea using a Convolutional Neural Network (CNN) trained on single channel EEG data. The proposed CNN achieved an accuracy of 85.1% and a Matthews Correlation Coefficient (MCC) of 0.22, demonstrating a significant potential for home based applications by addressing the limitations of PSG in automated sleep apnea detection. Key…
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Taxonomy
TopicsObstructive Sleep Apnea Research · EEG and Brain-Computer Interfaces · Phonocardiography and Auscultation Techniques
