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首页> 外文期刊>International Journal of Neural Systems >APPLICATION OF NON-LINEAR AND WAVELET BASED FEATURES FOR THE AUTOMATED IDENTIFICATION OF EPILEPTIC EEG SIGNALS
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APPLICATION OF NON-LINEAR AND WAVELET BASED FEATURES FOR THE AUTOMATED IDENTIFICATION OF EPILEPTIC EEG SIGNALS

机译:非线性和小波特征在癫痫脑电信号自动识别中的应用

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摘要

Epilepsy, a neurological disorder, is characterized by the recurrence of seizures. Electroencephalogram (EEG) signals, which are used to detect the presence of seizures, are non-linear and dynamic in nature. Visual inspection of the EEG signals for detection of normal, interictal, and ictal activities is a strenuous and time-consuming task due to the huge volumes of EEG segments that have to be studied. Therefore, non-linear methods are being widely used to study EEG signals for the automatic monitoring of epileptic activities. The aim of our work is to develop a Computer Aided Diagnostic (CAD) technique with minimal pre-processing steps that can classify all the three classes of EEG segments, namely normal, interictal, and ictal, using a small number of highly discriminating non-linear features in simple classifiers. To evaluate the technique, segments of normal, interictal, and ictal EEG segments (100 segments in each class) were used. Non-linear features based on the Higher Order Spectra (HOS), two entropies, namely the Approximation Entropy (ApEn) and the Sample Entropy (SampEn), and Fractal Dimension and Hurst Exponent were extracted from the segments. Significant features were selected using the ANOVA test. After evaluating the performance of six classifiers (Decision Tree, Fuzzy Sugeno Classifier, Gaussian Mixture Model, K-Nearest Neighbor, Support Vector Machine, and Radial Basis Probabilistic Neural Network) using a combination of the selected features, we found that using a set of all the selected six features in the Fuzzy classifier resulted in 99.7% classification accuracy. We have demonstrated that our technique is capable of achieving high accuracy using a small number of features that accurately capture the subtle differences in the three different types of EEG (normal, interictal, and ictal) segments. The technique can be easily written as a software application and used by medical professionals without any extensive training and cost. Such software can evolve into an automatic seizure monitoring application in the near future and can aid the doctors in providing better and timely care for the patients suffering from epilepsy.
机译:癫痫病是一种神经系统疾病,其特征在于癫痫发作的复发。用于检测癫痫发作的脑电图(EEG)信号本质上是非线性且动态的。目视检查脑电信号以检测正常,发作和发作活动是一项艰巨且耗时的工作,因为必须研究大量的脑电图。因此,非线性方法被广泛用于研究脑电信号以自动监测癫痫活动。我们的工作目标是开发一种计算机辅助诊断(CAD)技术,该技术具有最少的预处理步骤,可以使用少量高度区分的非诊断性脑电图来对所有三种EEG段进行分类,即正常,发作和发作。简单分类器中的线性特征。为了评估该技术,使用了正常,发作期和发作期EEG段(每节100段)。从这些段中提取基于高阶谱(HOS)的非线性特征,即两个熵,即近似熵(ApEn)和样本熵(SampEn),以及分形维数和赫斯特指数。使用ANOVA测试选择重要特征。在使用选定特征的组合评估了六个分类器(决策树,模糊Sugeno分类器,高斯混合模型,K最近邻,支持向量机和径向基概率神经网络)的性能后,我们发现使用一组在模糊分类器中选择的所有六个特征均导致99.7%的分类准确率。我们已经证明,我们的技术能够使用少量功能准确地捕获三种不同类型的EEG(正常,发作和发作)段中的细微差别,从而实现高精度。该技术可以很容易地编写为软件应用程序,并且可以由医学专业人员使用,而无需进行大量培训和花费。这样的软件可以在不久的将来演变成自动的癫痫发作监测应用程序,并且可以帮助医生为患有癫痫病的患者提供更好,及时的护理。

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