Accurate automatic identification of slow wave sleep using a single electro-oculogram channel

Mohamed ElMessidi, Sana Tmar-Ben Hamida, B. Ahmed, T. Penzel
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引用次数: 1

Abstract

Diagnosis and treatment of sleep disorders require analysis of the sleep stages and patterns in the polysomnographic (PSG) signals recorded over several hours. Traditionally, sleep is monitored based on PSG signals that require several measurements collected from different locations on the head and the body. These signals are used to evaluate the sleep quantity and quality. However, the need for unobtrusive monitoring and convenience motivates a variety of alternative approaches focused on the minimization of a number of monitored physiological signals. Previous studies have shown that the quantity and length of slow wave sleep (SWS) periods during sleep are the major indicators of the sleep quality. The aim of this paper is to present a new automatic method to detect SWS epochs using a single-channel electro-oculography (EOG). This method is based on a simple rule based algorithm with an adaptive method to adjust thresholds. The new method is evaluated through 9 healthy subjects and the results are compared to the clinical visual scoring. The agreement of our detection method for the validation data was 90.0%, the sensitivity was 90.5% and the specificity was 89.9% and the kappa value was 0.74.
使用单个眼电图通道准确自动识别慢波睡眠
睡眠障碍的诊断和治疗需要分析几个小时内记录的多导睡眠图(PSG)信号中的睡眠阶段和模式。传统上,睡眠监测是基于PSG信号,需要从头部和身体的不同位置收集多次测量数据。这些信号被用来评估睡眠的数量和质量。然而,对不显眼的监测和便利性的需求激发了各种替代方法,这些方法的重点是尽量减少一些被监测的生理信号。已有研究表明,睡眠中慢波睡眠时间的长短和数量是衡量睡眠质量的主要指标。本文的目的是提出一种利用单通道眼电成像(EOG)自动检测SWS历元的新方法。该方法基于一种简单的基于规则的算法,并采用自适应方法来调整阈值。通过9名健康受试者对新方法进行评价,并与临床视觉评分结果进行比较。检测方法与验证数据的一致性为90.0%,灵敏度为90.5%,特异性为89.9%,kappa值为0.74。
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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