针对实验室多导睡眠图的数字睡眠评估的Verily nummetric Watch Sleep套件的性能评估。

IF 3.4 3区 医学 Q2 CLINICAL NEUROLOGY
Benjamin W Nelson, Sohrab Saeb, Poulami Barman, Nishant Verma, Hannah Allen, Massimiliano de Zambotti, Fiona C Baker, Nicole Arra, Niranjan Sridhar, Shannon S Sullivan, Scooter Plowman, Erin Rainaldi, Ritu Kapur, Sooyoon Shin
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引用次数: 0

摘要

该研究的目的是评估一套12项睡眠测量指标的性能,这些指标是由一种多传感器腕戴式可穿戴设备——真实数字手表(VNW)——在不同人群中产生的。我们使用多导睡眠图(PSG)作为参考,在一晚同步记录的样本N = 41(18名男性,年龄范围:18-78岁)。我们对所有测量进行了逐时代的比较。关键的具体分析包括:睡眠与清醒分类的核心准确性指标;连续测量偏差(Bland-Altman);睡眠阶段分类和平均计数差的未加权Cohen's kappa和准确性,计数度量的线性加权Cohen's kappa。此外,我们根据性别、年龄、肤色、体重指数和手臂毛密度进行了探索性亚组分析。睡眠与清醒分类的敏感性和特异性(95% CI)分别为0.97(0.96,0.98)和0.66(0.61,0.71)。平均总睡眠时间偏差为14.55 min (1.61, 27.16);入睡后醒来,-11.77 min (-23.89, 1.09);睡眠效率,3.15% (0.68,5.57);睡眠发作潜伏期,-3.24 min (-9.38, 3.57);浅睡时间:3.78 min (-7.04, 15.06);深度睡眠时间为3.91 min(-4.59, 12.60),快速眼动睡眠时间为6.94 min(0.57, 13.04)。醒来次数的平均差异为0.17 (95% CI: -0.32, 0.71),睡眠阶段分类的总体准确性为0.78(0.51,0.88)。大多数测量结果显示统计上显著的比例偏差和/或异方差。探索性亚组结果与整体组基本一致,尽管小样本排除了强有力的结论。这些结果支持使用VNWs对睡眠、清醒、睡眠阶段和夜间睡眠进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Evaluation of the Verily Numetric Watch Sleep Suite for Digital Sleep Assessment Against In-Lab Polysomnography.

The goal was to evaluate the performance of a suite of 12 sleep measures generated by a multi-sensor wrist-worn wearable device, the verily numetric watch (VNW), in a diverse cohort. We used polysomnography (PSG) as reference during one-night simultaneous recording in a sample of N = 41 (18 male, age range: 18-78 years). We performed epoch-by-epoch comparisons for all measures. Key specific analyses were: core accuracy metrics for sleep versus wake classification; bias for continuous measures (Bland-Altman); unweighted Cohen's kappa and accuracy for sleep stage classifications and mean count difference and linearly weighted Cohen's kappa for count metric. In addition, we performed exploratory subgroup analyses by sex, age, skin tone, body mass index and arm hair density. Sensitivity and specificity (95% CI) of sleep versus wake classification were 0.97 (0.96, 0.98) and 0.66 (0.61, 0.71), respectively. Mean total sleep time bias was 14.55 min (1.61, 27.16); wake after sleep onset, -11.77 min (-23.89, 1.09); sleep efficiency, 3.15% (0.68, 5.57); sleep onset latency, -3.24 min (-9.38, 3.57); light-sleep duration, 3.78 min (-7.04, 15.06); deep-sleep duration, 3.91 min (-4.59, 12.60) and rapid eye movement-sleep duration, 6.94 min (0.57, 13.04). Mean difference for the number of awakenings, 0.17: (95% CI: -0.32, 0.71) and overall accuracy of sleep stage classification, 0.78 (0.51, 0.88). Most measures showed statistically significant proportional biases and/or heteroscedasticity. Exploratory subgroup results appeared largely consistent with the overall group, although small samples precluded strong conclusions. These results support the use of VNWs in classifying sleep versus wake, sleep stages and overnight sleep measures.

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来源期刊
Journal of Sleep Research
Journal of Sleep Research 医学-临床神经学
CiteScore
9.00
自引率
6.80%
发文量
234
审稿时长
6-12 weeks
期刊介绍: The Journal of Sleep Research is dedicated to basic and clinical sleep research. The Journal publishes original research papers and invited reviews in all areas of sleep research (including biological rhythms). The Journal aims to promote the exchange of ideas between basic and clinical sleep researchers coming from a wide range of backgrounds and disciplines. The Journal will achieve this by publishing papers which use multidisciplinary and novel approaches to answer important questions about sleep, as well as its disorders and the treatment thereof.
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