一种实时自动睡眠评分算法,用于检测意识通气危重患者的刷新睡眠

IF 2.7 4区 医学 Q2 CLINICAL NEUROLOGY
Christophe Rault , Quentin Heraud , Stéphanie Ragot , Jean-Pierre Frat , Arnaud W Thille , Xavier Drouot
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引用次数: 2

摘要

目的由于环境嘈杂,大量入住重症监护室的患者睡眠严重中断。这些睡眠改变与长期需要辅助通气甚至死亡有关。危重症患者的睡眠评分非常具有挑战性,需要睡眠专家,相关研究仅限于少数经验丰富的团队。在这种情况下,自动评分系统将是研究人员感兴趣的。此外,护士可以使用实时评分来保护患者的睡眠。我们设计了一种实时工作的睡眠评分算法,并将这种自动评分与视觉评分进行了比较。方法我们回顾性分析了45例非镇静和清醒ICU患者断奶期的多导睡眠图。对于每个患者,处理一个脑电图通道,提供自动睡眠评分。我们比较了通过视觉评分和自动评分获得的总睡眠时间。计算正确识别的睡眠事件的比例。结果自动化总睡眠时间与视觉睡眠时间存在相关性;自动系统高估了总睡眠时间。算法检测到的持续10分钟以上睡眠事件的中位百分比为100%[73.2-100.0]。中位灵敏度为97.9%[92.5-99.99]。结论自动睡眠评分系统几乎可以识别所有长时间睡眠事件。由于这些发作是恢复性的,这个实时自动化系统为脑电图引导的睡眠保护策略开辟了道路。护士可以将他们的非紧急护理程序分组,并减少环境噪音,以最大限度地减少患者的睡眠干扰。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A real-time automated sleep scoring algorithm to detect refreshing sleep in conscious ventilated critically ill patients

Objectives

Due to the noisy environment, a very large number of patients admitted to intensive care units (ICUs) suffer from sleep severe disruption. These sleep alterations have been associated with a prolonged need for assisted ventilation or even with death. Sleep scoring in the critically ill is very challenging and requires sleep experts, limiting relevant studies to a few experienced teams. In this context, an automated scoring system would be of interest for researchers. In addition, real-time scoring could be used by nurses to protect patients’ sleep. We devised a sleep scoring algorithm working in real time and compared this automated scoring against visual scoring.

Methods

We analyzed retrospectively 45 polysomnographies previously recorded in non-sedated and conscious ICU patients during their weaning phase. For each patient, one EEG channel was processed, providing automated sleep scoring. We compared total sleep time obtained with visual scoring versus automated scoring. The proportion of sleep episodes correctly identified was calculated.

Results

Automated total sleep time and visual sleep time were correlated; the automatic system overestimated total sleep time. The median [25th–75th] percentage of sleep episodes lasting more than 10 min detected by algorithm was 100% [73.2 – 100.0]. Median sensitivity was 97.9% [92.5 – 99.9].

Conclusion

An automated sleep scoring system can identify nearly all long sleep episodes. Since these episodes are restorative, this real-time automated system opens the way for EEG-guided sleep protection strategies. Nurses could cluster their non-urgent care procedures, and reduce ambient noise so as to minimize patients’ sleep disruptions.

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来源期刊
CiteScore
5.20
自引率
3.30%
发文量
55
审稿时长
60 days
期刊介绍: Neurophysiologie Clinique / Clinical Neurophysiology (NCCN) is the official organ of the French Society of Clinical Neurophysiology (SNCLF). This journal is published 6 times a year, and is aimed at an international readership, with articles written in English. These can take the form of original research papers, comprehensive review articles, viewpoints, short communications, technical notes, editorials or letters to the Editor. The theme is the neurophysiological investigation of central or peripheral nervous system or muscle in healthy humans or patients. The journal focuses on key areas of clinical neurophysiology: electro- or magneto-encephalography, evoked potentials of all modalities, electroneuromyography, sleep, pain, posture, balance, motor control, autonomic nervous system, cognition, invasive and non-invasive neuromodulation, signal processing, bio-engineering, functional imaging.
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