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Statistical features based epileptic seizure EEG detection - an efficacy evaluation

机译:基于统计特征的癫痫癫痫发作EEG检测 - 疗效评估

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Electroencephalographic (EEG) patterns are electrical signals generated in association with neural activities. Most anomalies in brain functioning manifest with their signature characteristics in EEG pattern. Epileptic seizure, which is a brain abnormality well-studied through EEG analysis, is an abnormal harmonious neural activity in the brain characterized by the presence of spikes in EEG. An automated detection of epileptic seizures proves useful to Neurologists in the diagnosis of epileptic patients. This work contributes towards the study of efficacy evaluation of statistical features towards classification of EEG data as Ictal, Inter-Ictal and Normal. The statistical features considered are energy, entropy, median absolute deviation, interquartile range, skewness and kurtosis. The features extracted from a real dataset of 500 time series, comprising of 100 Ictal, 200 Inter-Ictal and 200 Normal are given to classifiers such as Support Vector Machine(SVM), Fuzzy k-Nearest Neighbor (Fuzzy k-NN), k-Nearest Neighbor(k-NN) and Naive Bayes for three class classification. Each of the features were used separately for classification to determine their individual efficacies. Alongside, the popular feature ranking method ‘ReliefF’ has been used to rank the features. Both the evaluations resulted in “entropy” being ranked as the feature with maximum efficacy.
机译:脑电图(EEG)图案是在伴随神经活动产生的电信号。大脑中的异常大部分功能表现与脑电图他们的招牌特色。癫痫发作,其是脑异常通过EEG分析充分研究,是在大脑中,其特征在于尖峰在EEG存在异常和谐的神经活动。癫痫发作的自动检测证明是有用的,以神经学家癫痫患者的诊断。这项工作有助于趋向于朝脑电数据发作期,跨发作期和正常的分类统计功能疗效评价的研究。考虑的统计特征是能量,熵,平均绝对偏差,四分位距,偏度和峰度。从500的时间序列真实数据集提取的特征,其包括100发作期,200间发作期和200正常给予分类诸如支持向量机(SVM),模糊k近邻(模糊K-NN),K -Nearest邻居(K-NN)和三个类别分类朴素贝叶斯。每个特征分别用于分类,以确定它们各自的功效。除了,流行特征排序方法“ReliefF”已被用于排名功能。无论是评估造成了“熵”被评为最大功效的功能。

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