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Typical Absence Epilepsy Identification on EEG

机译:eeg上的典型缺失癫痫鉴定

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This paper describes the methodology and results obtained from the classification of EEG signals in two groups: 1) Patients with typical absence seizure; 2) Patients with other kind of epilepsy or healthy. Three main techniques were applied to identify the morphological features from EEG signals in order to evaluate recordings without having to train a model using a database: Continuous Wavelet Transform, Competitive Neural Networks and Correlation. An interface was developed to include clinical information in order to create an auxiliary system for the identification of absence epilepsy. Data from 24 patients, with different types of epilepsy and non-epileptic, were analyzed, and all of them were correctly classified. The system can be used as auxiliary in the identification of typical absence epilepsy either in clinic or in education.
机译:本文介绍了从两组脑电图分类中获得的方法和结果:1)典型缺失癫痫发作的患者; 2)患有其他癫痫或健康的患者。应用三种主要技术来识别来自EEG信号的形态特征,以便评估记录,而无需使用数据库训练模型:连续小波变换,竞争性神经网络和相关性。开发了一个接口,包括临床信息,以便为缺失癫痫鉴定辅助系统。分析来自24例患者的数据,分析了不同类型的癫痫和非癫痫作用,所有这些都被正确分类。该系统可以用作诊所或教育中鉴定典型的缺失癫痫的辅助。

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