Laboratory for the Research and Development of Artificial Intelligence, University of A Coruña, Galicia 15071, Spain.
IEEE Trans Biomed Eng. 2011 Jan;58(1):54-63. doi: 10.1109/TBME.2010.2075930. Epub 2010 Sep 13.
Electroencephalographic arousals are defined as abrupt shifts in electroencephalogram (EEG) frequency during sleep. Occurrence of arousals results in fragmented sleep, being one of the most important causes of daytime sleepiness among sleep disorders. Detection of arousals requires a polysomnographic (PSG) recording to be made during the patient's sleep. The resulting PSG is then analyzed offline by the physician. This is a time-consuming task, hence, automation of this process is pursued. The analysis, which involves the correlation of various events in time occurring among the different channels, in conjunction with the complexity of the related biomedical signals, makes this task also difficult to achieve in the computer algorithm. In this paper, we present a method for the detection of EEG arousals working on multichannel PSGs. The algorithm detects arousals using the information available through two EEG channels and the electromyography. A signal-processing technique is first proposed for the analysis of biomedical signals and extraction of relevant information. Individual events are detected from the signals and subsequently are related in time. Finally, a classification phase carries out the final decision on the presence of the event. Classifiers based on Fisher's linear and quadratic discriminants, support vector machines and artificial neural networks are compared at this phase. Experiments conducted on 20 patients reported a sensitivity and specificity respectively of 0.86 and 0.76 in the detection of the arousal events.
脑电图觉醒定义为睡眠期间脑电图 (EEG) 频率的突然变化。觉醒的发生导致睡眠片段化,是睡眠障碍中导致白天嗜睡的最重要原因之一。觉醒的检测需要在患者睡眠期间进行多导睡眠图 (PSG) 记录。然后,医生离线分析生成的 PSG。这是一项耗时的任务,因此,人们追求该过程的自动化。分析涉及与不同通道中发生的各种事件相关联的时间相关,再加上相关生物医学信号的复杂性,这使得该任务在计算机算法中也难以实现。在本文中,我们提出了一种用于检测多通道 PSG 中 EEG 觉醒的方法。该算法使用两个 EEG 通道和肌电图提供的信息来检测觉醒。首先提出了一种用于分析生物医学信号和提取相关信息的信号处理技术。从信号中检测到单个事件,然后在时间上相关联。最后,分类阶段对事件的存在做出最终决策。在该阶段比较了基于 Fisher 线性和二次判别、支持向量机和人工神经网络的分类器。在对 20 名患者进行的实验中,觉醒事件的检测分别具有 0.86 的灵敏度和 0.76 的特异性。