Department of Psychiatry, School of Medicine and Public Health, University of Wisconsin-Madison, Madison, Wisconsin.
Department of Psychology, University of Wisconsin-Madison, Madison, Wisconsin.
J Sleep Res. 2019 Aug;28(4):e12789. doi: 10.1111/jsr.12789. Epub 2018 Nov 8.
Measuring sleep duration and early onset rapid eye movement sleep (REMS) is critical in the assessment of suspected central disorders of hypersomnolence (CDH). Current multi-sensor activity trackers that integrate accelerometry and heart rate are purported to accurately quantify sleep time and REMS; however, their utility in suspected CDH has not been established. This investigation aimed to determine the ability of a current, multi-sensor tracker, Fitbit Alta HR (FBA-HR), to quantify and classify sleep in patients with suspected CDH relative to polysomnography (PSG). Forty-nine patients (46 female; mean age, 30.3 ± 9.84 years) underwent ad libitum PSG with concurrent use of the FBA-HR. FBA-HR sleep variable quantification was assessed using Bland-Altman analysis. FBA-HR all sleep (AS), light sleep (LS; PSG N1 + N2), deep sleep (DS; PSG N3) and REMS classification was evaluated using epoch-by-epoch comparisons. FBA-HR-detected sleep-onset rapid eye movement periods (SOREMPs) were compared against PSG SOMREMPs. FBA-HR displayed significant overestimation of total sleep time (11.6 min), sleep efficiency (1.98%) and duration of deep sleep (18.2 min). FBA-HR sensitivity and specificity were as follows: AS, 0.96, 0.58; LS, 0.73, 0.72;DS, 0.67, 0.92; REMS, 0.74, 0.93. The device failed to detect any nocturnal SOREMPs. Device performance did not differ appreciably among diagnostic subgroups. These results suggest FBA-HR cannot replace EEG-based measurements of sleep and wake in the diagnostic assessment of suspected CDH, and that improvements in device performance are required prior to adoption in clinical or research settings.
测量睡眠持续时间和早期快速眼动睡眠 (REMS) 在疑似中枢性嗜睡障碍 (CDH) 的评估中至关重要。目前,集成加速度计和心率的多传感器活动追踪器据称可以准确地量化睡眠时间和 REMS;然而,它们在疑似 CDH 中的应用尚未得到证实。本研究旨在确定当前的多传感器追踪器 Fitbit Alta HR (FBA-HR) 相对于多导睡眠图 (PSG) 定量和分类疑似 CDH 患者睡眠的能力。49 名患者(46 名女性;平均年龄 30.3 ± 9.84 岁)接受了自由睡眠 PSG,并同时使用 FBA-HR。使用 Bland-Altman 分析评估 FBA-HR 睡眠变量的定量。使用逐时比较评估 FBA-HR 的所有睡眠 (AS)、轻度睡眠 (LS;PSG N1+N2)、深度睡眠 (DS;PSG N3) 和 REMS 分类。将 FBA-HR 检测到的睡眠起始快速眼动期 (SOREMPs) 与 PSG SOMREMPs 进行比较。FBA-HR 显示总睡眠时间 (11.6 分钟)、睡眠效率 (1.98%) 和深度睡眠时间 (18.2 分钟) 显著高估。FBA-HR 的灵敏度和特异性如下:AS,0.96,0.58;LS,0.73,0.72;DS,0.67,0.92;REMS,0.74,0.93。该设备未能检测到任何夜间 SOREMPs。在不同的诊断亚组中,设备性能没有明显差异。这些结果表明,FBA-HR 不能替代 EEG 测量睡眠和觉醒,在疑似 CDH 的诊断评估中,并且在采用之前需要改进设备性能。