首页> 外文会议>Biomedical Engineering Meeting, 2009. BIYOMUT 2009 >Examining the relevance with sleep stages of time domain features of EEG, EOG, and chin EMG signals
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Examining the relevance with sleep stages of time domain features of EEG, EOG, and chin EMG signals

机译:检查EEG,EOG和下巴EMG信号的时域特征与睡眠阶段的相关性

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Sleep staging has an important role in determining sleep disorders such as sleepiness, human fatigue etc. Sleep staging is generally done according to Rechtschaffen and Kales standard (RKS) using EEG signal obtained from PSG signals taken from patient subjects who come with any sleep disorders. Sleep stages are generally divided into three stages including awake, REM and N-REM (stage 1, stage 2, and stage 3). In this study, time domain features of EEG, EOG of right and left eyes, and chin EMG signals belonging to sleep stages were investigated and correlation between these time domain features and sleep stages was calculated. The used time domain features are mean value, standard deviation, peak value, skewness, kurtosis, and shape factor belonging to EEG, EOG of right and left eyes, and chin EMG signals. In experimental studies, PSG recordings of 3 subjects were taken and average recording time of 6.22 h, total recording time was 18.67 h. When investigated correlation coefficients, it is seen that skewness feature in time domain features of EEG signal, standard deviation feature in time domain features of EOG signals belonging to right and left eyes, and mean value feature in time domain features of chin EMG signal were more correlated with sleep stages than other features. Consequently, a feature vector can be constituted combining features determined from time domain features of EEG, EOG belonging to right and left eyes, and chin EMG signals. This obtained feature vector can be easily used in distinguishing sleep stages.
机译:睡眠分期在确定诸如失眠,人类疲劳等睡眠障碍方面具有重要作用。通常根据Rechtschaffen和Kales标准(RKS)使用从患有任何睡眠障碍的患者受试者获取的PSG信号获得的EEG信号进行睡眠分期。睡眠阶段通常分为清醒,REM和N-REM(阶段1,阶段2和阶段3)三个阶段。在这项研究中,研究了属于睡眠阶段的脑电图,右眼和左眼EOG以及下巴EMG信号的时域特征,并计算了这些时域特征与睡眠阶段之间的相关性。使用的时域特征是平均值,标准偏差,峰值,偏度,峰度和属于EEG,右眼和左眼EOG以及下巴EMG信号的形状因子。在实验研究中,记录了3位受试者的PSG记录,平均记录时间为6.22小时,总记录时间为18.67小时。在研究相关系数时,可以看出,EEG信号时域特征的偏度特征,右眼和左眼EOG信号时域特征的标准偏差特征,下巴EMG信号时域特征的平均值特征更多。与睡眠阶段相关的比其他功能要强。因此,可以组合由从EEG,属于右眼和左眼的EOG以及下巴EMG信号的时域特征确定的特征来构成特征向量。该获得的特征向量可以容易地用于区分睡眠阶段。

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