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Dynamic learning framework for epileptic seizure prediction using sparsity based EEG Reconstruction with Optimized CNN classifier

机译:利用稀疏基于CNN分类器使用稀疏性EEG重建的癫痫癫痫发作预测动态学习框架

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摘要

The World Health Organization (WHO) recently stated that epilepsy affects nearly 65 million people of the world population. Early forecast of the oncoming seizures is of paramount importance in saving the life of epileptic patients. This paper demonstrates a phase transition-based seizure prediction approach from multi-channel scalp electroencephalogram (EEG) recordings. The primary focus of this work is to discriminate the seizure and seizure-free EEG signals by learning the dynamics of preictal, interictal and ictal period. We propose an adaptive optimization approach using non-linear conjugate gradient technique in conjunction with Sparsity based EEG Reconstruction (SER) and three-dimensional Optimized Convolutional Neural Network (3D OCNN) classifier, based on Fletcher Reeves (FR) algorithm. Sparsity based artifact removal approach along with a 3D OCNN classifier, classifies the various states of seizures. FR algorithm is deployed with the deep neural network architecture to accelerate the convergence rate and to reduce the complexity of the proposed non-linear model. The Principle Component Analysis (PCA) algorithm replacing the Singular Value Decomposition (SVD) in the K-SVD algorithm, further reduces the time and complexity of the pre-processing stage. We further propose a Phase Transition based Kullback-Leibler divergence (PTB-KL) predictor for obtaining the Optimal Seizure Prediction Horizon (OSPH). The proposed model is evaluated using three diverse databases such as CHB-MIT, NINC and SRM respectively. Empirical results on the three EEG databases of 300 recordings outperforms the state-of-art approaches with an accuracy score of 0.98, sensitivity score of 0.99 and False Prediction Rate (FPR) of 0.07 FP/h. Statistical assessment of the proposed predictor gains an OSPH of about 1.1 h prior to the seizure onset. Experimental results prove that the phase transition-based seizure prediction approach is a promising one for accurate real-time prediction of epilepsy using scalp EEG data.
机译:世界卫生组织(世卫组织)最近表示,癫痫影响了近6500万人的人口。迎面而来的缉获预测是拯救癫痫患者的生活至关重要。本文展示了来自多通道头皮脑电图(EEG)录像的相位转换的癫痫发作预测方法。这项工作的主要焦点是通过学习预警,嵌入和ICTAL期的动态来区分癫痫发作和癫痫发作的脑电图。我们提出了一种使用非线性共轭梯度技术的自适应优化方法,与基于稀稀基的EEG重建(SER)和三维优化的卷积神经网络(3D OCNN)分类器,基于闪光灯REEVES(FR)算法。基于稀疏的工件删除方法以及3D OCNN分类器,对癫痫发作的各种状态进行分类。 FR算法用深神经网络架构部署,加速收敛速度并降低所提出的非线性模型的复杂性。替换K-SVD算法中的奇异值分解(SVD)的原理分量分析(PCA)算法进一步降低了预处理阶段的时间和复杂性。我们进一步提出了一种基于相转变的Kullback-Leibler发散(PTB-K1)预测器,用于获得最佳癫痫发作预测地平线(μlosh)。使用三种不同数据库(如CHB-MIT,NINC和SRM)评估所提出的模型。 300次录音的三个脑电图数据库的经验结果优于最先进的方法,精度得分为0.98,灵敏度得分为0.099,误报率(FPR)为0.07 fp / h。在癫痫发作之前,所提出的预测器的统计评估在癫痫发作之前获得约1.1h的溶液。实验结果证明了基于阶段转换的癫痫发布预测方法是使用ScalP EEG数据准确的癫痫实时预测的承诺。

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