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A robust methodology for classification of epileptic seizures in EEG signals

机译:EEG信号中癫痫发作分类的鲁棒方法

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摘要

Drug inefficiency in patients with refractory seizures renders epilepsy a life-threatening and challenging brain disorder and stresses the need for accurate seizure detection and prediction methods and more personalized closed-loop treatment systems. In this paper, a multicenter methodology for automated seizure detection based on Discrete Wavelet Transform (DWT) is presented. A decomposition of 5 levels is applied in each EEG segment and five features are extracted from the wavelet coefficients. The extracted feature vector is used to train a Random Forest classifier and discriminate between ictal and interictal data. EEG recordings from the database of University of Bonn and the database of the University Hospital of Freiburg were employed, in an attempt to test the efficiency and robustness of the method. Classification results in both databases are significant, reaching accuracy above 95% and confirming the robustness of the methodology. Sensitivity and False Positive Rate for the Freiburg database reached 99.74% and 0.21/h respectively.
机译:耐火性癫痫发作患者的药物效率促使癫痫危及生命和挑战性的脑障碍,并强调需要准确的癫痫发作检测和预测方法和更个性化的闭环处理系统。本文介绍了基于离散小波变换(DWT)的自动癫痫发作检测的多中心方法。在每个EEG段中应用5个水平的分解,并从小波系数中提取五个特征。提取的特征向量用于培训随机林分类器并区分ICTAL和Interrictal数据。从波恩大学数据库和弗莱堡大学医院数据库的EEG录音,试图测试该方法的效率和稳健性。分类在两个数据库中都有显着,达到高于95%的准确性,并确认方法的稳健性。 Freiburg数据库的敏感性和假阳性率分别达到99.74%和0.21 / h。

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