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Cascaded feed forward neural networks and generalized regression for epilepsy risk level classification ??? A study

机译:级联前馈神经网络和广义回归用于癫痫风险等级分类一项研究

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Characterized by transient, sudden and recurrent electrical disturbances in the cortical regions of the brain, epilepsy can be mentioned as one of the most common neurological disorders. Certain disorders in the nervous systems also cause this fatal condition epilepsy. The activities of the brain can be monitored through Electroencephalogram (EEG) and thus it has become a vital tool for the analysis and diagnosis of epilepsy. Approximate Entropy (ApEn) seems to be a very good measure to understand the non linear nature of the biological signals and therefore ApEn is employed as a feature extraction technique and Cascaded Feed Forward Neural Network (CFFNN) and Generalized Regression Neural Network (GRNN) are utilized as Post Classifiers for the study and Classification of Epilepsy from EEG Signals. The important validation parameters taken here are Performance Index (PI), Quality Value (QV), Time Delay, Sensitivity, Specificity and Accuracy.
机译:癫痫病的特征是大脑皮质区域的短暂,突然和复发性电障碍,是最常见的神经系统疾病之一。神经系统的某些疾病也会导致这种致命的癫痫病。大脑的活动可以通过脑电图(EEG)进行监控,因此它已成为分析和诊断癫痫病的重要工具。近似熵(ApEn)似乎是了解生物信号非线性特性的一种很好的方法,因此ApEn被用作特征提取技术,而级联前馈神经网络(CFFNN)和广义回归神经网络(GRNN)用作后期分类器,用于根据脑电信号对癫痫病进行研究和分类。此处采用的重要验证参数是性能指标(PI),质量值(QV),时间延迟,灵敏度,特异性和准确性。

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