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Automatic anesthesia depth staging using entropy measures and relative power of electroencephalogram frequency bands

机译:使用熵测度和脑电图频带的相对功率自动进行麻醉深度分期

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Many of the surgeries performed under general anesthesia are aided by electroencephalogram (EEG) monitoring. With increased focus on detecting the anesthesia states of patients in the course of surgery, more attention has been paid to analyzing the power spectra and entropy measures of EEG signal during anesthesia. In this paper, by using the relative power of EEG frequency bands and the EEG entropy measures, a new method for detecting the depth of anesthesia states has been presented based on the least squares support vector machine (LS-SVM) classifiers. EEG signals were recorded from 20 patients before, during and after general anesthesia in the operating room at a sampling rate of 200Hz. Then, 12 features were extracted from each EEG segment, 10s in length, which are used for anesthesia state monitoring. No significant difference was observed (p0.05) between these features and the bispectral index (BIS), which is the commonly used measure of anesthetic effect. The used LS-SVM classifier based method is able to identify the anesthesia states with an accuracy of 80% with reference to the BIS index. Since the underlying equation of the utilized LS-SVM is linear, the computational time of the algorithm is not significant and therefore it can be used for online application in operation rooms.
机译:脑电图(EEG)监测有助于在全身麻醉下进行的许多手术。随着对外科手术过程中患者麻醉状态检测的关注,麻醉分析中脑电信号信号的功率谱和熵测度分析得到了越来越多的关注。本文利用脑电频段的相对功率和脑电熵测度,提出了一种基于最小二乘支持向量机(LS-SVM)分类器的麻醉状态深度检测新方法。在手术室全麻之前,期间和之后,以20Hz的采样率记录了20名患者的EEG信号。然后,从每个EEG段中提取12个特征,长度为10s,用于麻醉状态监测。这些特征与双光谱指数(BIS)之间没有观察到显着差异(p> 0.05),而双光谱指数是麻醉效果的常用量度。所使用的基于LS-SVM分类器的方法能够参考BIS指数以80%的精度识别麻醉状态。由于所使用的LS-SVM的基本方程是线性的,因此该算法的计算时间并不重要,因此可以在手术室中在线使用。

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