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Automatic machine classification of patient anaesthesia levels using EEG signals

机译:使用EEG信号自动对患者麻醉水平进行机器分类

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摘要

The authors explore the possibility of using EEG (electroencephalographic) signals for automatic machine classification of the level of anesthesia that a patient is in. EEG data obtained under different levels of anesthesia have been modeled as an AR (autoregressive) process for that purpose. It is shown that AR model order, the AR power spectral density, and the second and fourth moments of the probability density function of the EEG signals can be used for classifying the level of anesthesia into low, medium, and high levels.
机译:作者探讨了使用EEG(脑电图)信号对患者所在麻醉水平进行自动机器分类的可能性。为此,将在不同麻醉水平下获得的EEG数据建模为AR(自回归)过程。结果表明,AR模型阶次,AR功率谱密度以及EEG信号的概率密度函数的第二和第四阶矩可用于将麻醉级别分为低,中和高级别。

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