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A novel data reduction method: Distance based data reduction and its application to classification of epileptiform EEG signals

机译:一种新颖的数据约简方法:基于距离的数据约简及其在癫痫样脑电信号分类中的应用

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Objective: Data reduction methods are a crucial step affecting both performance and computation time of classification systems in pattern recognition applications such as medical decision making systems, intelligent control, and data clustering. The aim of this study is both to increase the classification accuracy and decrease the computation time of classifier system on the classification of epileptiform EEG signals. Methods: In this study, we have proposed a novel data reduction method based on distances between groups data double in all dataset and applied this method to the classification of epileptiform EEG signals. The feature extraction methods including autoregressive (AR), discrete Fourier transform (DFT), and discrete wavelet transform (DWT), distance based data reduction, and C4.5 decision tree classifier have been combined to classify the epileptiform EEG signals. As feature extraction part AR, DFT, and DWT methods have been used to determine the features about EEG signals including epileptic seizure patients and eyes open volunteers. As data pre-processing part, distance based data reduction that is proposed firstly by us has been used to reduce data determined by spectral analysis methods (AR, DFT, and DWT). As final part called classification, C4.5 decision tree classifier has been used to classify reduced epileptiform EEG signals. Results: To validate and test the proposed data reduction, the classification accuracy, sensitivity, and specifity analysis, computation time, 10-fold cross-validation, and 95% confidence intervals have been used in this study. Six different combined methods have been used to classify the epileptiform EEG signal. These methods are (i) combining DFT and C4.5 decision tree classifier (DCT), (ii) combining DFT, distance based data reduction, and C4.5 DCT, (iii) combining AR and C4.5 DCT, (iv) combining AR, distance based data reduction, and C4.5 DCT, ( v) combining DWT and C4.5 DCT, and ( vi) combining DWT, distance based data reduction, and C4.5 DCT. The classification accuracies and computation times obtained by these methods are 99.02%-79 s, 99.12%-47 s, 99.32%-65 s, 98.94%-45 s, 92.00%-52.06 s, and 89.50%-29.9 s. Conclusions: These results have shown that the proposed distance based data reduction method has produced very promising results with respect to both classification accuracy and computation time for classifying the epileptiform EEG signals. Also, proposed hybrid systems can be used to detect the epileptic seizure. (C) 2007 Elsevier Inc. All rights reserved.
机译:目的:数据缩减方法是影响模式识别应用(例如医疗决策系统,智能控制和数据聚类)中分类系统的性能和计算时间的关键步骤。这项研究的目的是在癫痫样脑电信号分类中提高分类精度并减少分类器系统的计算时间。方法:在这项研究中,我们提出了一种新的数据约简方法,该方法基于所有数据集中的组数据之间的距离加倍,并将该方法应用于癫痫样脑电信号的分类。特征提取方法包括自回归(AR),离散傅里叶变换(DFT)和离散小波变换(DWT),基于距离的数据约简以及C4.5决策树分类器,已将癫痫样脑电信号分类。作为特征提取部分,AR,DFT和DWT方法已用于确定有关EEG信号的特征,包括癫痫发作患者和睁眼志愿者。作为数据预处理的一部分,我们首先提出的基于距离的数据约简已用于约简谱分析方法(AR,DFT和DWT)确定的数据。作为称为分类的最后一部分,C4.5决策树分类器已用于对简化的癫痫样脑电信号进行分类。结果:为验证和测试拟议的数据缩减,该研究使用了分类准确性,敏感性和特异性分析,计算时间,10倍交叉验证和95%置信区间。已使用六种不同的组合方法对癫痫样脑电信号进行分类。这些方法是(i)结合DFT和C4.5决策树分类器(DCT),(ii)结合DFT,基于距离的数据约简和C4.5 DCT,(iii)结合AR和C4.5 DCT,(iv)结合AR,基于距离的数据缩减和C4.5 DCT,(v)结合DWT和C4.5 DCT,以及(vi)结合DWT,基于距离的数据缩减和C4.5 DCT。通过这些方法获得的分类精度和计算时间分别为99.02%-79 s,99.12%-47 s,99.32%-65 s,98.94%-45 s,92.00%-52.06 s和89.50%-29.9 s。结论:这些结果表明,提出的基于距离的数据约简方法在对癫痫样脑电信号进行分类的准确度和计算时间方面都产生了非常有希望的结果。同样,提出的混合系统可用于检测癫痫发作。 (C)2007 Elsevier Inc.保留所有权利。

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