使用消费者智能手表进行呼吸事件筛查

Illia Fedorin, Kostyantyn Slyusarenko, Margaryta Nastenko
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引用次数: 4

摘要

夜间睡眠中的呼吸相关事件(RE)扰乱了睡眠的自然生理模式。这些事件可能包括所有类型的呼吸暂停和低呼吸,呼吸事件相关的觉醒和打鼾。呼吸分析的特别重要性目前与COVID-19大流行有关。提出的算法是一个深度学习模型,具有长短期记忆细胞,用于夜间睡眠中每1分钟epoch的RE检测。我们的方法为基于智能手表的呼吸相关睡眠模式分析提供了基础(逐epoch分类准确率大于80%),可用于呼吸相关疾病的潜在风险筛查(在测试集中,AHI估计的平均绝对误差约为6.5事件/小时,其中包括所有类型的呼吸暂停严重程度的参与者;二级筛查准确率(AHI阈值为15个事件/小时)大于90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Respiratory events screening using consumer smartwatches
Respiratory related events (RE) during nocturnal sleep disturb the natural physiological pattern of sleep. This events may include all types of apnea and hypopnea, respiratory-event-related arousals and snoring. The particular importance of breath analysis is currently associated with the COVID-19 pandemic. The proposed algorithm is a deep learning model with long short-term memory cells for RE detection for each 1 minute epoch during nocturnal sleep. Our approach provides the basis for a smartwatch based respiratory-related sleep pattern analysis (accuracy of epoch-by-epoch classification is greater than 80 %), can be applied for a potential risk of respiratory-related diseases screening (mean absolute error of AHI estimation is about 6.5 events/h on the test set, which includes participants with all types of apnea severity; two class screening accuracy (AHI threshold is 15 events/h) is greater than 90 %).
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