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Genetic algorithm optimization of fuzzy outputs for classification of epilepsy risk levels from EEG signals

机译:基于脑电信号的癫痫风险等级分类的模糊输出遗传算法优化

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This paper aims to optimize the output of diagnosis of the epilepsy activity in EEG (electroencephalogram) signal by fuzzy logic techniques using genetic algorithms (GA). The fuzzy techniques are used to classify the risk levels of epilepsy based on extracted parameters like energy, variance, peaks, sharp and spike waves, duration, events and covariance obtained from the EEG of the patient. A binary GA and continuous GA are then applied on the classified risk levels to obtain the optimized risk level that characterizes the patient's epilepsy risk level. The performance index (PI) and quality value (QV) are calculated for both the method. A group of eight patients with known epilepsy findings are used for this study. High PI such as 92% (BGA) and 96% (CGA) were obtained at QV's of 80% and 90% respectively. We find that the continuous genetic algorithm provides a good tool for optimizing the epilepsy risk levels.
机译:本文旨在通过遗传算法(GA)的模糊逻辑技术优化脑电图(EEG)信号中癫痫活动诊断的输出。基于提取的参数(例如能量,方差,峰值,尖锐波和尖峰波,持续时间,事件和协方差),使用模糊技术将癫痫风险级别进行分类,方法是从患者的脑电图获得。然后将二元GA和连续GA应用于分类的风险级别,以获得表征患者癫痫风险级别的最佳风险级别。两种方法均会计算出性能指标(PI)和质量值(QV)。八名具有已知癫痫病发现的患者用于该研究。 QV分别为80%和90%时,可获得高PI,例如92%(BGA)和96%(CGA)。我们发现连续遗传算法为优化癫痫风险水平提供了一个很好的工具。

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