Modelling a Risk-based Network Model for Epileptic Seizure Prediction using Learning Approaches

Anandaraj A, P. Alphonse
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Abstract

The process of developing across space and time in the networks of a person with epilepsy occurs through Epileptic seizures. The generalizable technique is developed in this research to predict a particular patient seizure using the evaluation of featurerepresentation to obtain the features from the signals of multichannel EEG. The features are revealed for the signals of EEG using the available parameters. The features are input to the Risk-based Elman learning model (r - ELM) to evaluate feature representation to collectively train the data. The suggested model of r-ELM obtains 0. 096/h as the rate of false prediction, 85% as sensitivity, and 10% as the time in warning to perform the tests from the EEG dataset of CHB-Mn scalp using 10 patients. The suggested method has superiority over the existing results. Various metrics are used in the experiment which shows the epileptic stage as the essential factor affecting seizures’ performance. A subject-oriented method for seizure prediction is presented in the proposed system, which is powerful for the unbalanced data and created for any dataset of scalp EEG with no requirement of subject-oriented engineering.
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利用学习方法建立基于风险的癫痫发作预测网络模型
在癫痫患者的网络中,跨越空间和时间的发展过程通过癫痫发作发生。本研究提出了一种基于特征表征的多通道脑电图特征预测技术,用于预测特定患者的癫痫发作。利用可用的参数揭示脑电信号的特征。这些特征被输入到基于风险的Elman学习模型(r - ELM)中,以评估特征表示,从而对数据进行集体训练。建议的r-ELM模型得到0。对10例CHB-Mn头皮脑电图数据集进行测试,错误预测率为096/h,灵敏度为85%,预警时间为10%。所提出的方法比已有的结果具有优越性。实验中使用了各种指标,表明癫痫发作阶段是影响癫痫发作表现的重要因素。提出了一种面向对象的癫痫发作预测方法,该方法对不平衡数据具有强大的预测能力,可用于任何头皮脑电数据集,不需要面向对象的工程。
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