Estévez P A, Held C M, Holzmann C A, Perez C A, Pérez J P, Heiss J, Garrido M, Peirano P
Department of Electrical Engineering, Universidad de Chile, Santiago.
Med Biol Eng Comput. 2002 Jan;40(1):105-13. doi: 10.1007/BF02347703.
A robust, automated pattern recognition system for polysomnography data targeted to the sleep-waking state and stage identification is presented. Five patterns were searched for: slow-delta and theta wave predominance in the background electro-encephalogram (EEG) activity; presence of sleep spindles in the EEG; presence of rapid eye movements in an electro-oculogram; and presence of muscle tone in an electromyogram. The performance of the automated system was measured indirectly by evaluating sleep staging, based on the experts' accepted methodology, to relate the detected patterns in infants over four months of post-term age. The set of sleep-waking classes included wakefulness, REM sleep and non-REM sleep stages I, II, and III-IV. Several noise and artifact rejection methods were implemented, including filters, fuzzy quality indices, windows of variable sizes and detectors of limb movements and wakefulness. Eleven polysomnographic recordings of healthy infants were studied. The ages of the subjects ranged from 6 to 13 months old. Six recordings counting 2665 epochs were included in the training set. Results on a test set (2,369 epochs from five recordings) show an overall agreement of 87.7% (kappa 0.840) between the automated system and the human expert. These results show significant improvements compared with previous work.
本文提出了一种强大的、自动化的多导睡眠图数据模式识别系统,用于睡眠-觉醒状态及阶段识别。该系统搜索了五种模式:背景脑电图(EEG)活动中慢波-δ波和θ波占主导;EEG中出现睡眠纺锤波;眼电图中出现快速眼球运动;肌电图中出现肌张力。基于专家认可的方法,通过评估睡眠分期来间接衡量自动化系统的性能,以关联超过预产期四个月的婴儿中检测到的模式。睡眠-觉醒类别包括清醒、快速眼动睡眠以及非快速眼动睡眠的I、II和III-IV期。实施了几种噪声和伪迹去除方法,包括滤波器、模糊质量指标、可变大小的窗口以及肢体运动和清醒检测器。研究了11名健康婴儿的多导睡眠图记录。受试者年龄在6至13个月之间。训练集包括6份记录,共2665个时段。测试集(来自5份记录的2369个时段)的结果显示,自动化系统与人类专家之间的总体一致性为87.7%(kappa值为0.840)。这些结果表明与之前的工作相比有显著改进。