Hao He, Chao Li, Wolfgang Ganglberger, Kaileigh Gallagher, Rumen Hristov, Michail Ouroutzoglou, Haoqi Sun, Jimeng Sun, M Brandon Westover, Dina Katabi
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引用次数: 0
摘要
只需分析人们睡眠时身体反射的无线电波,就能在家中评估睡眠情况、捕捉睡眠阶段并检测呼吸暂停的发生(无需身体传感器),这种能力非常强大。有了这种能力,就可以在患者家中进行纵向数据收集,从而帮助我们了解睡眠及其与各种疾病的相互作用以及在临床试验和日常护理中的治疗反应。在这篇文章中,我们开发了一种先进的机器学习算法,用于从人们睡眠时反射的无线电波中被动监测睡眠和夜间呼吸。与黄金标准(即多导睡眠图)(n=880)的验证结果表明,该模型能捕捉睡眠催眠图(30 秒时间分为清醒、浅睡、深睡或快速动眼期,准确率为 80.5%),检测睡眠呼吸暂停(AUROC = 0.89),并测量患者的呼吸暂停-低通气指数(ICC=0.90;95% CI = [0.88, 0.91])。值得注意的是,该模型在种族、性别和年龄方面表现出公平性。此外,该模型还发现了睡眠阶段与一系列疾病(包括神经、精神、心血管和免疫疾病)之间的交互作用。这些发现不仅为临床实践和干预试验带来了希望,还强调了睡眠作为理解和管理各种疾病的基本组成部分的重要性。
The ability to assess sleep at home, capture sleep stages, and detect the occurrence of apnea (without on-body sensors) simply by analyzing the radio waves bouncing off people's bodies while they sleep is quite powerful. Such a capability would allow for longitudinal data collection in patients' homes, informing our understanding of sleep and its interaction with various diseases and their therapeutic responses, both in clinical trials and routine care. In this article, we develop an advanced machine-learning algorithm for passively monitoring sleep and nocturnal breathing from radio waves reflected off people while asleep. Validation results in comparison with the gold standard (i.e. polysomnography; n = 880) demonstrate that the model captures the sleep hypnogram (with an accuracy of 80.5% for 30-second epochs categorized into wake, light sleep, deep sleep, or REM), detects sleep apnea (AUROC = 0.89), and measures the patient's Apnea-Hypopnea Index (ICC = 0.90; 95% CI = [0.88, 0.91]). Notably, the model exhibits equitable performance across race, sex, and age. Moreover, the model uncovers informative interactions between sleep stages and a range of diseases including neurological, psychiatric, cardiovascular, and immunological disorders. These findings not only hold promise for clinical practice and interventional trials but also underscore the significance of sleep as a fundamental component in understanding and managing various diseases.
期刊介绍:
SLEEP® publishes findings from studies conducted at any level of analysis, including:
Genes
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Physiology
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SLEEP® publishes articles that use a wide variety of scientific approaches and address a broad range of topics. These may include, but are not limited to:
Basic and neuroscience studies of sleep and circadian mechanisms
In vitro and animal models of sleep, circadian rhythms, and human disorders
Pre-clinical human investigations, including the measurement and manipulation of sleep and circadian rhythms
Studies in clinical or population samples. These may address factors influencing sleep and circadian rhythms (e.g., development and aging, and social and environmental influences) and relationships between sleep, circadian rhythms, health, and disease
Clinical trials, epidemiology studies, implementation, and dissemination research.