Seizure Prediction on EEG Signals using Feature Augmentation based Multi Model Ensemble

Q3 Engineering
A. Anandaraj, P.J.A. Alphonse
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引用次数: 0

Abstract

Background:: Epilepsy is a neurological disorder that leads to seizures. This occurs due to excessive electrical discharge by the brain cells. An effective seizure prediction model can aid in improving the lifestyle of epilepsy patients. After analyzing various patents related to seizure prediction, it is observed that monitoring electroencephalography (EEG) signals of epileptic patients is an important task for the early diagnosis of seizures. Objective:: The main objective of this paper is to assist epileptic patients to enhance their way of living by predicting the seizure in advance. Methods:: This paper builds a feature augmentation-based multi-model ensemble-based architecture for seizure prediction. The proposed technique is divided into 2 broad categories; feature augmentation and ensemble modeling. The feature augmentation process builds temporal features while the multi-model ensemble has been designed to handle the high complexity levels of the EEG data. The first phase of the multi-model ensemble has been designed with heterogeneous classifier models. The second phase is based on the prediction results obtained from the first phase. Experiments were performed using the seizure prediction dataset from the University Hospital of Bonn. Results:: Comparison indicates 98.7% accuracy, with improvement of 5% from the existing model. High prediction levels indicate that the model is highly capable of providing accurate seizure predictions, hence ensuring its applicability in real time. Conclusion:: The result of this paper has been compared with existing methods of predicting seizures and it indicated that the proposed model has better enhancement in the accuracy levels. other: .
基于特征增强的多模型集成脑电信号癫痫发作预测
背景:癫痫是一种导致癫痫发作的神经系统疾病。这是由于脑细胞过度放电造成的。有效的癫痫发作预测模型有助于改善癫痫患者的生活方式。通过对癫痫发作预测相关专利的分析,发现监测癫痫患者的脑电图信号是癫痫发作早期诊断的重要任务。目的:本文的主要目的是通过对癫痫发作的提前预测,帮助癫痫患者改善生活方式。方法:建立基于特征增强的多模型集成的癫痫发作预测体系结构。所提出的技术分为两大类;特征增强和集成建模。特征增强过程构建时间特征,而多模型集成设计用于处理高复杂度的脑电数据。多模型集成的第一阶段设计了异构分类器模型。第二阶段以第一阶段的预测结果为基础。实验使用来自波恩大学医院的癫痫发作预测数据集进行。结果:准确率为98.7%,比现有模型提高5%。高预测水平表明该模型能够提供准确的癫痫发作预测,从而确保其实时适用性。结论:与已有的癫痫发作预测方法进行了比较,表明本文模型的预测准确率有较好的提高。其他:。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Recent Patents on Engineering
Recent Patents on Engineering Engineering-Engineering (all)
CiteScore
1.40
自引率
0.00%
发文量
100
期刊介绍: Recent Patents on Engineering publishes review articles by experts on recent patents in the major fields of engineering. A selection of important and recent patents on engineering is also included in the journal. The journal is essential reading for all researchers involved in engineering sciences.
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