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首页> 外文期刊>Journal of medical systems >Classification of epilepsy using high-order spectra features and principle component analysis
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Classification of epilepsy using high-order spectra features and principle component analysis

机译:使用高阶光谱特征和主成分分析对癫痫病进行分类

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The classification of epileptic electroencephalogram (EEG) signals is challenging because of high nonlinearity, high dimensionality, and hidden states in EEG recordings. The detection of the preictal state is difficult due to its similarity to the ictal state. We present a framework for using principal components analysis (PCA) and a classification method for improving the detection rate of epileptic classes. To unearth the nonlinearity and high dimensionality in epileptic signals, we extract principal component features using PCA on the 15 high-order spectra (HOS) features extracted from the EEG data. We evaluate eight classifiers in the framework using true positive (TP) rate and area under curve (AUC) of receiver operating characteristics (ROC). We show that a simple logistic regression model achieves the highest TP rate for class "preictal" at 97.5% and the TP rate on average at 96.8% with PCA variance percentages selected at 100%, which also achieves the most AUC at 99.5%.
机译:癫痫性脑电图(EEG)信号的分类具有挑战性,因为它具有高度的非线性,高维数和EEG记录中的隐藏状态。由于发作前状态与发作状态相似,因此难以检测。我们提出了一个使用主成分分析(PCA)的框架和一种用于提高癫痫类别检出率的分类方法。为了发掘癫痫信号的非线性和高维性,我们使用PCA在从EEG数据中提取的15个高阶光谱(HOS)特征上提取了主成分特征。我们使用接收器工作特性(ROC)的真实正向(TP)速率和曲线下面积(AUC)评估框架中的八个分类器。我们展示了一个简单的逻辑回归模型,“类别”的最高TP率达到97.5%,平均TP率达到96.8%,PCA变异百分数选择为100%,AUC最高也达到了99.5%。

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