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An adaptive learning approach for EEG-based computer aided diagnosis of epilepsy

机译:基于EEG的计算机辅助诊断癫痫的自适应学习方法

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Epilepsy diagnosis is commonly performed by a neurologist through visual inspection of electroencephalography (EEG) signals. Computer aided diagnosis (CAD) system has a great potential to assist neurologist or medical expert therefore improving the accuracy and shortening the diagnosis time. In this article, we present an adaptive learning approach for EEG-based CAD system for epilepsy diagnosis. With adaptive learning, the CAD system is able to reinforce new knowledge based on the neurologist feedback to improve its performance over the time. A combination of discrete wavelet transform (DWT) and Shannon entropy is used to extract feature from the EEG signal. K-nearest neighbors)kNN) clasifies the EEG signal based on “normal” and “epileptic baseline”. Both baselines are continuously updated based on the most recent classification or diagnosis result. Our proposed method shows promising results tested using publicly available University of Bonn EEG dataset with overall accuracy up to 100%.
机译:通过视觉检查通过脑电图(EEG)信号,癫痫诊断通常由神经科医生进行。计算机辅助诊断(CAD)系统具有促进神经科医生或医学专家的巨大潜力,从而提高了准确性和缩短诊断时间。在本文中,我们为癫痫诊断提供了一种基于EEG的CAD系统的自适应学习方法。通过自适应学习,CAD系统能够基于神经科医生反馈来加强新知识,以提高其性能。离散小波变换(DWT)和Shannon熵的组合用于从EEG信号中提取特征。 K-CORMALY邻居)KNN)基于“正常”和“癫痫基线”来克定EEG信号。基于最近的分类或诊断结果,两种基线都不断更新。我们所提出的方法显示了使用公开可用的Bonn EEG数据集进行测试的有希望的结果,其总精度高达100%。

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