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Detecting epileptic seizure with different feature extracting strategies using robust machine learning classification techniques by applying advance parameter optimization approach

机译:通过应用预先参数优化方法使用鲁棒机学习分类技术检测不同特征提取策略的癫痫癫痫发作

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摘要

Epilepsy is a neurological disorder produced due to abnormal excitability of neurons in the brain. The research reveals that brain activity is monitored through electroencephalogram (EEG) of patients suffered from seizure to detect the epileptic seizure. The performance of EEG detection based epilepsy require feature extracting strategies. In this research, we have extracted varying features extracting strategies based on time and frequency domain characteristics, nonlinear, wavelet based entropy and few statistical features. A deeper study was undertaken using novel machine learning classifiers by considering multiple factors. The support vector machine kernels are evaluated based on multiclass kernel and box constraint level. Likewise, for K-nearest neighbors (KNN), we computed the different distance metrics, Neighbor weights and Neighbors. Similarly, the decision trees we tuned the paramours based on maximum splits and split criteria and ensemble classifiers are evaluated based on different ensemble methods and learning rate. For training/testing tenfold Cross validation was employed and performance was evaluated in form of TPR, NPR, PPV, accuracy and AUC. In this research, a deeper analysis approach was performed using diverse features extracting strategies using robust machine learning classifiers with more advanced optimal options. Support Vector Machine linear kernel and KNN with City block distance metric give the overall highest accuracy of 99.5% which was higher than using the default parameters for these classifiers. Moreover, highest separation (AUC = 0.9991, 0.9990) were obtained at different kernel scales using SVM. Additionally, the K-nearest neighbors with inverse squared distance weight give higher performance at different Neighbors. Moreover, to distinguish the postictal heart rate oscillations from epileptic ictal subjects, and highest performance of 100% was obtained using different machine learning classifiers.
机译:癫痫是一种由于大脑中神经元的异常兴奋而产生的神经系统疾病。该研究表明,通过癫痫发作患者的脑电图(EEG)监测脑活动,以检测癫痫癫痫发作。基于EEG检测的癫痫的性能需要特征提取策略。在这项研究中,我们提取了基于时间和频域特性,非线性,小波的熵和统计特征的时间和频域特性提取策略的变化特征。通过考虑多个因素,使用小型机器学习分类机进行更深入的研究。基于多字符内核和框约束级别评估支持向量机内核。同样,对于K-CORMALT邻居(KNN),我们计算了不同的距离度量,邻居权重和邻居。类似地,决策树我们根据最大分割和分割标准和集合分类器进行调整参数,并基于不同的集合方法和学习速率进行评估。对于培训/测试,使用十倍交叉验证,并以TPR,NPR,PPV,准确性和AUC的形式评估性能。在这项研究中,使用具有更高级最佳选择的强大机器学习分类器来提取策略来执行更深层次的分析方法。支持向量机线性内核和KNN与城市块距离度量的总体最高精度为99.5%,其高于使用这些分类器的默认参数。此外,使用SVM在不同的核尺度下获得最高分离(AUC = 0.9991,0.9990)。另外,具有逆平方距离重量的K-最近邻居在不同的邻居提供更高的性能。此外,为了区分从癫痫途径受试者中的后心率振荡,并且使用不同的机器学习分类器获得100%的最高性能。

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