Belun Ring (Belun Sleep System BLS-100): Deep learning-facilitated wearable enables obstructive sleep apnea detection, apnea severity categorization, and sleep stage classification in patients suspected of obstructive sleep apnea.
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Kingman P Strohl | A. Chiang | Chih-Wei Tsai | Z. Strumpf | W. Gu | L. Leung | E. Yeh | Pai-Lien Chen | I-Chen Wu | Cynthia Cheung | Tiffany Tsai | Rodney J Folz | Zachary Strumpf | Tiffany Tsai | Rodney J. Folz
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