DESIGN OF REAL-TIME SYSTEM BASED ON MACHINE LEARNING FOR SNORING AND OSA DETECTION
Huaiwen Luo, Lu Zhang, Lianyu Zhou, Xu Lin, Zehuai Zhang, Mingjiang Wang
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Obstructive sleep apnea(OSA) is a common sleep disorder. The diagnosis of OSA based on snoring is low-cost, convenient and non-invasive. In this study, we placed a microphone under the patient's bed and combined with full-night polysomnography to record audio signals. Five machine learning models and two OSA diagnostic schemes are used to classify night audio as non-snoring, snoring, or OSA-related snoring. Our experiment has achieved good results, and the highest diagnosis rate of OSA can reach 97%.Based on the trained classification model, we design a system that can diagnose OSA in real-time. Tests on the system show that it can diagnose apnea by detecting OSA-related snoring.We hope that this approach can develop into a new tool to help a large number of potential OSA patients understand their sleep health.