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Cited 12 time in webofscience Cited 14 time in scopus
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Real-Time Detection of Sleep Apnea Based on Breathing Sounds and Prediction Reinforcement Using Home Noises: Algorithm Development and Validationopen access

Authors
Le, Vu LinhKim, DaewooCho, EunsungJang, HyeryungReyes, Roben DelosKim, HyunggugLee, DongheonYoon, In-YoungHong, JoonkiKim, Jeong-Whun
Issue Date
Feb-2023
Publisher
JMIR PUBLICATIONS, INC
Keywords
sleep apnea; OSA detection; home care; artificial intelligence; deep learning; prediction model; audio; diagnostic; home technology; sound
Citation
Journal of Medical Internet Research, v.25, pp 1 - 15
Pages
15
Indexed
SCIE
SCOPUS
Journal Title
Journal of Medical Internet Research
Volume
25
Start Page
1
End Page
15
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/19909
DOI
10.2196/44818
ISSN
1439-4456
1438-8871
Abstract
Background: Multinight monitoring can be helpful for the diagnosis and management of obstructive sleep apnea (OSA). For this purpose, it is necessary to be able to detect OSA in real time in a noisy home environment. Sound-based OSA assessment holds great potential since it can be integrated with smartphones to provide full noncontact monitoring of OSA at home. Objective: The purpose of this study is to develop a predictive model that can detect OSA in real time, even in a home environment where various noises exist. Methods: This study included 1018 polysomnography (PSG) audio data sets, 297 smartphone audio data sets synced with PSG, and a home noise data set containing 22,500 noises to train the model to predict breathing events, such as apneas and hypopneas, based on breathing sounds that occur during sleep. The whole breathing sound of each night was divided into 30-second epochs and labeled as "apnea," "hypopnea," or "no-event," and the home noises were used to make the model robust to a noisy home environment. The performance of the prediction model was assessed using epoch-by-epoch prediction accuracy and OSA severity Results: Epoch-by-epoch OSA event detection showed an accuracy of 86% and a macro F1-score of 0.75 for the 3-class OSA event detection task. The model had an accuracy of 92% for "no-event," 84% for "apnea," and 51% for "hypopnea." Most misclassifications were made for "hypopnea," with 15% and 34% of "hypopnea" being wrongly predicted as "apnea" and "no-event," respectively. The sensitivity and specificity of the OSA severity classification (AHI >= 15) were 0.85 and 0.84, respectively. Conclusions: Our study presents a real-time epoch-by-epoch OSA detector that works in a variety of noisy home environments. Based on this, additional research is needed to verify the usefulness of various multinight monitoring and real-time diagnostic technologies in the home environment.
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