首页> 外文会议>2010 5th International Symposium on Health Informatics and Bioinformatics (HIBIT) >Classification of EEG signals in four groups, including healthy subjects with open/closed eyes and epilepsy subjects with/without seizure by PSD estimate (using the multitaper method) and ANN
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Classification of EEG signals in four groups, including healthy subjects with open/closed eyes and epilepsy subjects with/without seizure by PSD estimate (using the multitaper method) and ANN

机译:通过PSD估计值(使用多锥度法)和ANN,将四组脑电信号分类,包括睁开/闭眼的健康受试者和有/无癫痫发作的癫痫受试者

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摘要

Electroencephalography (EEG) analysis by physicians is intricate, time consuming and needs to experience. Therefore automated systems for EEG analysis and classification are able to help physician. EEG signal in the field of time is raw and complex so it's not suitable for automated system. Therefore appropriate features of EEG signal becomes extraction using signal processing methods (in this paper used Thomson multi taper method's (MTM)), then these features becomes classification by ANN. Also we have to correct the ANN outputs by a threshold function. In this study, EEG signals are classified in three groups (including epileptic patients with seizure or without seizure and healthy volunteers) with 98.02% accuracy and in two groups (healthy with closed or open eyes) with 97.7% accuracy.
机译:医生的脑电图(EEG)分析非常复杂,耗时且需要经验。因此,用于脑电图分析和分类的自动化系统能够为医师提供帮助。时间范围内的EEG信号是原始且复杂的,因此不适用于自动化系统。因此,使用信号处理方法(本文使用Thomson多锥度方法(MTM))提取脑电信号的适当特征,然后将这些特征通过ANN进行分类。同样,我们必须通过阈值函数来校正ANN输出。在这项研究中,脑电信号分为三组(包括癫痫发作或无癫痫发作的癫痫患者和健康志愿者),准确度为98.02%,而两组(闭眼或睁眼的健康)准确度为97.7%。

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