Sleep apnea (SA) is one of the most prevalent sleep-related problems, impacting more than 100 million people worldwide. A full-night Polysomnography (PSG) is an effective SA diagnosis strategy. However, it requires multiple wearable devices and the patient staying overnight to collect the findings, rendering it both a time-consuming and costly option. Research attempts to develop non-invasive, sensor-based, or automated solutions for diagnosing SA are also made in recent years. In this study, we analyzed a total of 85 papers, shortlisted from an initial collection of 954 articles published in reputable scientific repositories, e.g., IEEE Xplore, PubMed Central (PMC), Springer, Elsevier etc., where each chosen study was thoroughly examined to determine its contribution and performance. A detailed analysis of data preprocessing, feature extraction and classification algorithm is also addressed. It is found that most of the studies are based on signal analysis for identifying sleep apnea, which yields results with substantial reliability, while contemporary research emphases have been on heart rate variability and pulse oximetry outcomes.

Deep and Shallow Learning Model-Based Sleep Apnea Diagnosis Systems: A Comprehensive Study / Raisa, R. A.; Rodela, A. S.; Yousuf, M. A.; Azad, A.; Alyami, S. A.; Lio, P.; Islam, M. Z.; Pogrebna, G.; Moni, M. A.. - In: IEEE ACCESS. - ISSN 2169-3536. - 12:(2024), pp. 122959-122987. [10.1109/ACCESS.2024.3426928]

Deep and Shallow Learning Model-Based Sleep Apnea Diagnosis Systems: A Comprehensive Study

Lio P.;
2024

Abstract

Sleep apnea (SA) is one of the most prevalent sleep-related problems, impacting more than 100 million people worldwide. A full-night Polysomnography (PSG) is an effective SA diagnosis strategy. However, it requires multiple wearable devices and the patient staying overnight to collect the findings, rendering it both a time-consuming and costly option. Research attempts to develop non-invasive, sensor-based, or automated solutions for diagnosing SA are also made in recent years. In this study, we analyzed a total of 85 papers, shortlisted from an initial collection of 954 articles published in reputable scientific repositories, e.g., IEEE Xplore, PubMed Central (PMC), Springer, Elsevier etc., where each chosen study was thoroughly examined to determine its contribution and performance. A detailed analysis of data preprocessing, feature extraction and classification algorithm is also addressed. It is found that most of the studies are based on signal analysis for identifying sleep apnea, which yields results with substantial reliability, while contemporary research emphases have been on heart rate variability and pulse oximetry outcomes.
2024
cloud computing; deep learning; electrocardiogram (ECG); Internet of Things (IoT); machine learning; pulse oximetry; Sleep apnea; smartphone; wearable devices
01 Pubblicazione su rivista::01g Articolo di rassegna (Review)
Deep and Shallow Learning Model-Based Sleep Apnea Diagnosis Systems: A Comprehensive Study / Raisa, R. A.; Rodela, A. S.; Yousuf, M. A.; Azad, A.; Alyami, S. A.; Lio, P.; Islam, M. Z.; Pogrebna, G.; Moni, M. A.. - In: IEEE ACCESS. - ISSN 2169-3536. - 12:(2024), pp. 122959-122987. [10.1109/ACCESS.2024.3426928]
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Note: DOI 10.1109/ACCESS.2024.3426928
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1728971
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