Journal
IEEE ACCESS
Volume 10, Issue -, Pages 104737-104756Publisher
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2022.3210518
Keywords
Sleep; Monitoring; Rapid eye movement sleep; Electroencephalography; Behavioral sciences; Muscles; Oscillators; Biomedical imaging; Artificial intelligence; Biomedical monitoring; AI for sleep; sleep disorders; sleep interventions; sleep medicine; sleep monitoring; sleep sensors; sleep technology
Categories
Funding
- NSF [1652538]
- NIH [5R21AG064410-02]
- Turkish Ministry of National Education
- Division Of Computer and Network Systems
- Direct For Computer & Info Scie & Enginr [1652538] Funding Source: National Science Foundation
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This literature review paper presents state-of-the-art sleep technologies for measuring sleep and diagnosing sleep disorders. It covers a wide range of approaches in engineering and medicine, providing a comprehensive overview for interdisciplinary readers.
This is a literature review paper covering state-of-the-art sleep technologies to measure sleep and clinical sleep disorders. This paper addresses an interdisciplinary audience from a variety of subdomains in engineering and medicine. We reviewed 120 scientific papers, 15 commercial mobile apps, and 4 commercial devices. We selected the papers from scientific publishers including Institute of Electrical and Electronics Engineers (IEEE), Nature, Association for Computing Machinery (ACM), Proceedings of Machine Learning Research, Journal of Informatics in Health and Biomedicine, Plos One, PubMed, and Elsevier and Nature digital libraries. We used Google Scholar with keywords including sleep monitoring, sleep monitoring technologies, non-contact sleep monitoring, mobile apps for sleep monitoring, AI in sleep technologies, and automated sleep staging. The manuscript reviews sleep technologies, including sleep lab technologies such as polysomnography and consumer sleep technologies categorized as ambient room sensors, wearable sensors, bed sensors, mobile apps, and artificial intelligence. We primarily focused on validation and comparison studies of the reviewed technologies. The manuscript also provides an overview of several clinical datasets for sleep staging and taxonomizes the different learning methods. Finally, the manuscript offers our insights and recommendations about the application of the reviewed sleep technologies.
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