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Exploring the Characterization and Classification of EEG Signals for a Computer-Aided Epilepsy Diagnosis System

机译:探索计算机辅助癫痫诊断系统EEG信号的表征和分类

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Epilepsy occurs when localized electrical activity of neurons suffer from an imbalance. One of the most adequate methods for diagnosing and monitoring is via the analysis of electroencephalographic (EEG) signals. Despite there is a wide range of alternatives to characterize and classify EEG signals for epilepsy analysis purposes, many key aspects related to accuracy and physiological interpretation are still considered as open issues. In this paper, this work performs an exploratory study in order to identify the most adequate frequently-used methods for characterizing and classifying epileptic seizures. In this regard, a comparative study is carried out on several subsets of features using four representative classifiers: Linear Discriminant Analysis (LDA), Quadratic Discriminant Analysis (QDA), K-Nearest Neighbor (KNN), and Support Vector Machine (SVM). The framework uses a well-known epilepsy dataset and runs several experiments for two and three classification problems. The results suggest that DWT decomposition with SVM is the most suitable combination.
机译:癫痫当神经元的局部电活动从一个不平衡遭受发生。一个用于诊断和监测的最适当的方法是通过脑电图(EEG)信号的分析。尽管有广泛的替代表征和分类EEG信号癫痫分析的目的,涉及到的准确性和生理解释许多关键方面仍被视为开放的问题。在本文中,这项工作在执行顺序的探索性研究,以确定表征和癫痫发作分类最充足的常用方法。线性判别分析(LDA),二次判别分析(QDA),K近邻(KNN),支持向量机(SVM):在这方面,比较研究使用四个具有代表性的分类进行了对功能的几个子集。该框架采用的是著名的癫痫数据集和运行多次实验了两个和三个分类问题。结果表明与SVM是DWT分解是最合适的组合。

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