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A Unique Approach to Epilepsy Classification from EEG Signals Using Dimensionality Reduction and Neural Networks

机译:使用降维和神经网络从脑电信号进行癫痫分类的独特方法

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Characterized by recurrent and rapid seizures, epilepsy is a great threat to the livelihood of the human beings. Abnormal transient behaviour of neurons in the cortical regions of the brain leads to a seizure which characterizes epilepsy. The physical and mental activities of the patient are totally dampened with this epileptic seizure. A significant clinical tool for the study, analysis and diagnosis of the epilepsy is electroencephalogram (EEG). To detect such seizures, EEG signals aids greatly to the clinical experts and it is used as an important tool for the analysis of brain disorders, especially epilepsy. In this paper, the high dimensional EEG data are reduced to a low dimension by incorporating techniques such as Fuzzy Mutual Information (FMI), Independent Component Analysis (ICA), Linear Graph Embedding (LGE), Linear Discriminant Analysis (LDA) and Variational Bayesian Matrix Factorization (VBMF). After employing them as dimensionality reduction techniques, the Neural Networks (NN) such as Cascaded Feed Forward Neural Network (CFFNN), Time Delay Neural Network (TDNN) and Generalized Regression Neural Network (GRNN) are used as Post Classifiers for the Classification of Epilepsy Risk Levels from EEG signals. The bench mark parameters used here are Performance Index (PI), Quality Values (QV), Time Delay, Accuracy, Specificity and Sensitivity.
机译:癫痫病以反复发作和快速发作为特征,对人类的生计构成巨大威胁。脑皮质区域中神经元的异常瞬时行为会导致癫痫发作,这是癫痫的特征。这种癫痫发作会完全抑制患者的身体和精神活动。脑电图(EEG)是研究,分析和诊断癫痫病的重要临床工具。为了检测这种癫痫发作,EEG信号对临床专家有很大帮助,它被用作分析脑部疾病(尤其是癫痫病)的重要工具。本文通过结合诸如模糊互信息(FMI),独立成分分析(ICA),线性图嵌入(LGE),线性判别分析(LDA)和变分贝叶斯技术将高维EEG数据降低为低维矩阵分解(VBMF)。在将它们用作降维技术之后,级联前馈神经网络(CFFNN),时延神经网络(TDNN)和广义回归神经网络(GRNN)等神经网络被用作癫痫分类的后分类器。脑电信号的风险水平。此处使用的基准参数是性能指标(PI),质量值(QV),时间延迟,准确性,特异性和敏感性。

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