Suppr超能文献

基于间期的睡眠分期:实时实现的进展工作。

Interbeat interval-based sleep staging: work in progress toward real-time implementation.

机构信息

Sleep Number Labs, San Jose, CA, United States of America.

出版信息

Physiol Meas. 2022 Mar 17;43(2). doi: 10.1088/1361-6579/ac5a78.

Abstract

. Cardiac activity changes during sleep enable real-time sleep staging. We developed a deep neural network (DNN) to detect sleep stages using interbeat intervals (IBIs) extracted from electrocardiogram signals.. Data from healthy and apnea subjects were used for training and validation; 2 additional datasets (healthy and sleep disorders subjects) were used for testing. R-peak detection was used to determine IBIs before resampling at 2 Hz; the resulting signal was segmented into 150 s windows (30 s shift). DNN output approximated the probabilities of a window belonging to light, deep, REM, or wake stages. Cohen's Kappa, accuracy, and sensitivity/specificity per stage were determined, and Kappa was optimized using thresholds on probability ratios for each stage versus light sleep.. Mean (SD) Kappa and accuracy for 4 sleep stages were 0.44 (0.09) and 0.65 (0.07), respectively, in healthy subjects. For 3 sleep stages (light+deep, REM, and wake), Kappa and accuracy were 0.52 (0.12) and 0.76 (0.07), respectively. Algorithm performance on data from subjects with REM behavior disorder or periodic limb movement disorder was significantly worse, with Kappa of 0.24 (0.09) and 0.36 (0.12), respectively. Average processing time by an ARM microprocessor for a 300-sample window was 19.2 ms.. IBIs can be obtained from a variety of cardiac signals, including electrocardiogram, photoplethysmography, and ballistocardiography. The DNN algorithm presented is 3 orders of magnitude smaller compared with state-of-the-art algorithms and was developed to perform real-time, IBI-based sleep staging. With high specificity and moderate sensitivity for deep and REM sleep, small footprint, and causal processing, this algorithm may be used across different platforms to perform real-time sleep staging and direct intervention strategies.(92/100 words) This article describes the development and testing of a deep neural network-based algorithm to detect sleep stages using interbeat intervals, which can be obtained from a variety of cardiac signals including photoplethysmography, electrocardiogram, and ballistocardiography. Based on the interbeat intervals identified in electrocardiogram signals, the algorithm architecture included a group of convolution layers and a group of long short-term memory layers. With its small footprint, fast processing time, high specificity and good sensitivity for deep and REM sleep, this algorithm may provide a good option for real-time sleep staging to direct interventions.

摘要

心跳活动变化可在睡眠期间实时检测睡眠分期。我们开发了一种深度神经网络(DNN),使用从心电图信号中提取的心跳间隔(IBI)来检测睡眠分期。健康和睡眠呼吸暂停患者的数据用于训练和验证;另外两个数据集(健康和睡眠障碍患者)用于测试。使用 R 波检测确定 IBIs,然后在 2 Hz 进行重采样前;将得到的信号分割成 150 秒的窗口(30 秒的移动窗口)。DNN 的输出近似于一个窗口属于浅睡、深睡、快速眼动(REM)或清醒阶段的概率。确定每个阶段的 Cohen's Kappa、准确率和敏感性/特异性,并针对每个阶段与浅睡相比的概率比优化 Kappa 阈值。在健康受试者中,4 个睡眠阶段的平均(SD)Kappa 和准确率分别为 0.44(0.09)和 0.65(0.07)。对于 3 个睡眠阶段(浅睡+深睡、REM 和清醒),Kappa 和准确率分别为 0.52(0.12)和 0.76(0.07)。对于 REM 行为障碍或周期性肢体运动障碍患者的数据,算法性能显著下降,Kappa 分别为 0.24(0.09)和 0.36(0.12)。一个 300 样本窗口的 ARM 微处理器的平均处理时间为 19.2 ms。IBI 可以从各种心脏信号中获得,包括心电图、光体积描记法和冲击描记法。与最先进的算法相比,所提出的 DNN 算法小了 3 个数量级,专为实时基于 IBI 的睡眠分期而开发。该算法具有高特异性和中等敏感性的深睡和 REM 睡眠、小的足迹和因果处理,可在不同平台上用于实时睡眠分期和直接干预策略。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验