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An integrated video-analysis software system designed for movement detection and sleep analysis. Validation of a tool for the behavioural study of sleep

机译:集成的视频分析软件系统,用于运动检测和睡眠分析。验证睡眠行为研究工具

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Objective: The aim of the present study was to develop and validate a software tool for the detection of movements during sleep, based on the automated analysis of video recordings. This software is aimed to detect and quantify movements and to evaluate periods of sleep and wake. Methods: We applied an open-source software, previously distributed on the web (Zoneminder, ZM), meant for video surveillance. A validation study was performed: computed movement analysis was compared with two standardised, 'gold standard' methods for the analysis of sleep-wake cycles: actigraphy and laboratory-based video-polysomnography. Results: Sleep variables evaluated by ZM were not different from those measured by traditional sleep-scoring systems. Bland-Altman plots showed an overlap between the scores obtained with ZM, PSG and actigraphy, with a slight tendency of ZM to overestimate nocturnal awakenings. ZM showed a good degree of accuracy both with respect to PSG (79.9%) and actigraphy (83.1%); and had very high sensitivity (ZM vs. PSG: 90.4%; ZM vs. actigraphy: 89.5%) and relatively lower specificity (ZM vs. PSG: 42.3%; ZM vs. actigraphy: 65.4%). Conclusions: The computer-assisted motion analysis is reliable and reproducible, and it can allow a reliable esteem of some sleep and wake parameters. The motion-based sleep analysis shows a trend to overestimate wakefulness. Significance: The possibility to measure sleep from video recordings may be useful in those clinical and experimental conditions in which traditional PSG studies may not be performed.
机译:目的:本研究的目的是基于视频记录的自动分析,开发并验证用于检测睡眠中运动的软件工具。该软件旨在检测和量化运动并评估睡眠和唤醒时间。方法:我们应用了以前在网络(Zoneminder,ZM)上发布的用于视频监控的开源软件。进行了一项验证研究:将计算机运动分析与两种标准的“黄金标准”方法进行睡眠-觉醒周期分析:活动描记法和实验室视频多导睡眠图。结果:ZM评估的睡眠变量与传统睡眠评分系统测得的变量没有差异。布兰德·奥特曼(Bland-Altman)情节显示,用ZM,PSG和书法书获得的分数重叠,但ZM略有高估了夜间觉醒的趋势。 ZM在PSG(79.9%)和书法(83.1%)方面均显示出良好的准确性;并具有很高的灵敏度(ZM对PSG:90.4%; ZM对书法:89.5%)和相对较低的特异性(ZM对PSG:42.3%; ZM对书法:65.4%)。结论:计算机辅助运动分析是可靠且可重复的,并且可以使某些睡眠和唤醒参数得到可靠的尊重。基于运动的睡眠分析显示出高估觉醒的趋势。启示:从录像中测量睡眠的可能性在可能不进行传统PSG研究的临床和实验条件下可能有用。

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