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One-class classification of propofol-induced sedation states using EEG signals

机译:使用脑电信号对异丙酚引起的镇静状态进行一类分类

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Brain-function monitoring is a difficult problem as the particular characteristics of the brain of an individual must be taken into account. Therefore, some particular aspects of a single brain may not be properly modeled through the use of data from other people. In addition, there are situations where brain monitoring has to happen a single time and through multiple conditions. In such a case, it is not possible to calibrate a system with previous signals from this same person as the new incoming states are unknown. Moreover, as new unseen conditions happen over time, it is not possible to create a model in relation to these incoming conditions where no information is available. For all these reasons, the use of one-class classifiers (OCC) or novelty detection techniques for brain state monitoring provides a solution for determining a shift in the condition of the brain state of an individual. In this paper, we propose to investigate the brain states in different sedation states (baseline, mild, moderate, and recovery) with electroencephalogram (EEG) signals from seven adult participants by using bandpower features in five frequency bands on 20 sensors. We propose to use the one-class nearest neighbor classifier to evaluate the detection of a change from a sedation state to posterior state. We propose to set the threshold based on the 90th percentile of the current class. The results support the conclusion that an f-score of 87.56 ± 15.85% can be obtained from the baseline state to the moderate sedation state. Finally, the results indicate that the gamma band gives the best performance for discriminating between the four conditions.
机译:脑功能监测是一个棘手的问题,因为必须考虑个人大脑的特定特征。因此,可能无法通过使用其他人的数据对单个大脑的某些特定方面进行正确建模。另外,在某些情况下,大脑监视必须一次完成,并且要经历多种情况。在这种情况下,无法使用来自同一个人的先前信号来校准系统,因为新的进入状态未知。此外,由于新的看不见的条件会随着时间的推移发生,因此无法针对没有可用信息的这些传入条件创建模型。由于所有这些原因,使用一类分类器(OCC)或新颖性检测技术进行脑状态监测可提供确定个人脑状态状况变化的解决方案。在本文中,我们建议通过使用20个传感器在5个频段上的频带功率特征,利用来自7位成年人的脑电图(EEG)信号,研究不同镇静状态(基线,轻度,中度和恢复状态)的大脑状态。我们建议使用一类最近邻分类器来评估从镇静状态到后路状态变化的检测。我们建议根据90 当前类别的百分位。该结果支持以下结论:从基线状态到中度镇静状态可获得f评分为87.56±15.85%。最后,结果表明,伽玛谱带可提供最佳性能来区分这四个条件。

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