Performance evaluation of an under-mattress sleep sensor versus polysomnography in >400 nights with healthy and unhealthy sleep

Jack Manners, Eva Kemps, Bastien Lechat, Peter Catcheside, Danny Eckert, Hannah Scott
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Abstract

Consumer sleep trackers provide useful insight into sleep. However, large scale performance evaluation studies are needed to properly understand sleep tracker accuracy. This study evaluated performance of an under-mattress sensor to estimate sleep and wake versus polysomnography in a large sample, including individuals with and without sleep disorders and during day versus night sleep opportunities, across multiple in-laboratory studies. 183 participants (51/49% male/female, mean[SD] age=45[18] years) attended the sleep laboratory for a research study including simultaneous polysomnography and under-mattress sensor (Withings Sleep Analyzer [WSA]) recordings. Epoch-by-epoch analyses determined accuracy, sensitivity, and specificity of the WSA versus polysomnography. Bland-Altman plots examined bias in sleep duration, efficiency, onset-latency, and wake after sleep onset. Overall WSA sleep-wake classification accuracy was 83%, sensitivity 95%, and specificity 37%. The WSA significantly overestimated total sleep time (48[81]minutes), Sleep efficiency (9[15]%), sleep onset latency (6[26]minutes), and underestimated wake after sleep onset (54[78]minutes). Accuracy and specificity were higher for night versus daytime sleep opportunities in healthy individuals (89% and 47% versus 82% and 26% respectively, p<0.05). Accuracy and sensitivity were also higher for healthy individuals (89% and 97%) versus those with sleep disorders (81% and 91%, p<0.05). WSA performance is comparable to other consumer sleep trackers, with high sensitivity but poor specificity compared to polysomnography. WSA performance was reasonably stable, but more variable in daytime sleep opportunities and in people with a sleep disorder. Contactless, under-mattress sleep sensors show promise for accurate sleep monitoring, noting the tendency to over-estimate sleep particularly where wake time is high.
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床垫下睡眠传感器与多导睡眠监测仪在大于 400 个睡眠健康和不健康的夜晚的性能评估
消费类睡眠追踪器能帮助人们深入了解睡眠情况。然而,要正确理解睡眠追踪器的准确性,还需要进行大规模的性能评估研究。183 名参与者(51/49% 男/女,平均[标码]年龄=45[18]岁)在睡眠实验室参加了一项研究,包括多导睡眠图和床垫下传感器(Withings 睡眠分析仪 [WSA])的同步记录。逐次分析确定了 WSA 与多导睡眠图的准确性、灵敏度和特异性。平原-阿尔特曼图检查了睡眠时间、效率、起始-延迟和睡眠起始后唤醒的偏差。WSA睡眠-唤醒分类的总体准确率为83%,灵敏度为95%,特异性为37%。WSA明显高估了总睡眠时间(48[81]分钟)、睡眠效率(9[15]%)、睡眠开始潜伏期(6[26]分钟),低估了睡眠开始后的觉醒时间(54[78]分钟)。健康人夜间睡眠机会的准确性和特异性高于白天睡眠机会(分别为 89% 和 47% 与 82% 和 26%,p<0.05)。健康人(89% 和 97%)与睡眠障碍者(81% 和 91%,p<0.05)相比,WSA 的准确度和灵敏度也更高。WSA 的性能与其他消费者睡眠追踪器相当,与多导睡眠图相比,灵敏度高,但特异性差。WSA的性能相当稳定,但在白天睡眠机会和睡眠障碍患者中的性能变化较大。非接触式床垫下睡眠传感器有望实现精确的睡眠监测,但要注意的是,尤其是在唤醒时间较长的情况下,该传感器容易高估睡眠时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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