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首页> 外文期刊>Acta polytechnica >AUTOMATIC EEG CLASSIFICATION USING DENSITY BASED ALGORITHMS DBSCAN AND DENCLUE
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AUTOMATIC EEG CLASSIFICATION USING DENSITY BASED ALGORITHMS DBSCAN AND DENCLUE

机译:使用基于密度的算法DBSCAN和DENCLUE的自动脑电分类

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Electroencephalograph (EEG) is a commonly used method in neurological practice. Automatic classifiers (algorithms) highlight signal sections with interesting activity and assist an expert with record scoring. Algorithm K-means is one of the most commonly used methods for EEG inspection. In this paper, we propose/apply a method based on density-oriented algorithms DBSCAN and DENCLUE. DBSCAN and DENCLUE separate the nested clusters against K-means. All three algorithms were validated on a testing dataset and after that adapted for a real EEG records classification. 24 dimensions EEG feature space were classified into 5 classes (physiological, epileptic, EOG, electrode, and EMG artefact). Modified DBSCAN and DENCLUE create more than two homogeneous classes of the epileptic EEG data. The results offer an opportunity for the EEG scoring in clinical practice. The big advantage of the proposed algorithms is the high homogeneity of the epileptic class.
机译:脑电图(EEG)是神经科实践中常用的方法。自动分类器(算法)以有趣的活动突出显示信号部分,并协助专家进行记录评分。算法K均值是EEG检查中最常用的方法之一。在本文中,我们提出/应用了一种基于面向密度的算法DBSCAN和DENCLUE的方法。 DBSCAN和DENCLUE将嵌套簇与K-means分开。所有三种算法均在测试数据集上进行了验证,然后适用于真实的EEG记录分类。 24个维度的EEG特征空间分为5类(生理,癫痫,EOG,电极和EMG伪像)。修改后的DBSCAN和DENCLUE创建了两个以上的癫痫EEG数据同质类。结果为临床实践中脑电图评分提供了机会。所提出算法的最大优点是癫痫类别的高同质性。

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