Continuous Sleep Depth Index Annotation with Deep Learning Yields Novel Digital Biomarkers for Sleep Health
Songchi Zhou, Ge Song, Haoqi Sun, Yue Leng, M. Brandon Westover,, Shenda Hong

TL;DR
This study introduces a deep learning approach for continuous sleep depth annotation from polysomnography data, revealing nuanced sleep structures and digital biomarkers linked to sleep disorders and health risks.
Contribution
A novel deep learning method for automatic, scalable continuous sleep depth annotation using existing sleep staging labels, enabling detailed sleep analysis and biomarker discovery.
Findings
Strong correlation between sleep depth index and arousal duration
Captured nuanced sleep structures beyond traditional staging
Identified sleep subtypes linked to health risks
Abstract
Traditional sleep staging categorizes sleep and wakefulness into five coarse-grained classes, overlooking subtle variations within each stage. It provides limited information about the duration of arousal and may hinder research on sleep fragmentation and relevant sleep disorders. To address this issue, we propose a deep learning method for automatic and scalable annotation of continuous sleep depth index (SDI) using existing discrete sleep staging labels. Our approach was validated using polysomnography from over 10,000 recordings across four large-scale cohorts. The results showcased a strong correlation between the decrease in sleep depth index and the increase in duration of arousal. Specific case studies indicated that the sleep depth index captured more nuanced sleep structures than conventional sleep staging. Gaussian mixture models based on the digital biomarkers extracted from…
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Taxonomy
TopicsAdvanced Technologies in Various Fields · AI and Big Data Applications · Obstructive Sleep Apnea Research
MethodsFragmentation
