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首页> 外文期刊>BioMed research international >Comparative Analysis of Classifiers for Developing an Adaptive Computer-Assisted EEG Analysis System for Diagnosing Epilepsy
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Comparative Analysis of Classifiers for Developing an Adaptive Computer-Assisted EEG Analysis System for Diagnosing Epilepsy

机译:用于诊断癫痫的自适应计算机辅助EEG分析系统的分类器的比较分析

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Computer-assisted analysis of electroencephalogram (EEG) has a tremendous potential to assist clinicians during the diagnosis of epilepsy. These systems are trained to classify the EEG based on the ground truth provided by the neurologists. So, there should be a mechanism in these systems, using which a system's incorrect markings can be mentioned and the system should improve its classification by learning from them. We have developed a simple mechanism for neurologists to improve classification rate while encountering any false classification. This system is based on taking discrete wavelet transform (DWT) of the signals epochs which are then reduced using principal component analysis, and then they are fed into a classifier. After discussing our approach, we have shown the classification performance of three types of classifiers: support vector machine (SVM), quadratic discriminant analysis, and artificial neural network. We found SVM to be the best working classifier. Our work exhibits the importance and viability of a self-improving and user adapting computer-assisted EEG analysis system for diagnosing epilepsy which processes each channel exclusive to each other, along with the performance comparison of different machine learning techniques in the suggested system.
机译:计算机辅助脑电图分析(EEG)在诊断癫痫期间有巨大的潜力来帮助临床医生。这些系统受过培训,以基于神经根学家提供的地面真理对脑电图进行分类。因此,在这些系统中应该有一种机制,可以使用哪个系统的错误标记,并且系统应该通过从中学习来改善其分类。我们制定了一种简单的神经科学家在遇到任何错误分类时提高分类率的简单机制。该系统基于采用信号时代的离散小波变换(DWT),然后使用主成分分析减少,然后将它们送入分类器。在讨论我们的方法之后,我们已经示出了三种类型的分类器的分类性能:支持向量机(SVM),二次判别分析和人工神经网络。我们发现SVM是最好的工作分类器。我们的工作展现了一种自我改善和用户适应计算机辅助EEG分析系统的重要性和可行性,用于诊断癫痫,该系统互相处理每个信道,以及所提出的系统中不同机器学习技术的性能比较。

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