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Deep learning approach to detect seizure using reconstructed phase space images

机译:使用重构相空间图像检测癫痫发作的深度学习方法

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摘要

Epilepsy is a chronic neurological disorder that affects the function of the brain in people of all ages. It manifests in the electroencephalogram (EEG) signal which records the electrical activity of the brain. Various image processing, signal processing, and machine-learning based techniques are employed to analyze epilepsy, using spatial and temporal features. The nervous system that generates the EEG signal is considered nonlinear and the EEG signals exhibit chaotic behavior. In order to capture these nonlinear dynamics, we use reconstructed phase space (RPS) representation of the signal. Earlier studies have primarily addressed seizure detection as a binary classification (normal . ictal) problem and rarely as a ternary class (normal . interictal . ictal) problem. We employ transfer learning on a pre-trained deep neural network model and retrain it using RPS images of the EEG signal. The classification accuracy of the model for the binary classes is (98.5±1.5)% and (95±2)% for the ternary classes. The performance of the convolution neural network (CNN) model is better than the other existing statistical approach for all performance indicators such as accuracy, sensitivity, and specificity. The result of the proposed approach shows the prospect of employing RPS images with CNN for predicting epileptic seizures.
机译:癫痫病是一种慢性神经系统疾病,会影响各个年龄段的人的大脑功能。它以记录脑电活动的脑电图(EEG)信号形式出现。利用各种图像处理,信号处理和基于机器学习的技术,利用空间和时间特征来分析癫痫病。产生EEG信号的神经系统被认为是非线性的,并且EEG信号表现出混沌行为。为了捕获这些非线性动力学,我们使用信号的重构相空间(RPS)表示。较早的研究主要将癫痫发作检测作为二元分类(正常.ictal)问题,很少将其作为三元分类(正常.icictal.ictal)问题。我们在预训练的深度神经网络模型上应用转移学习,并使用EEG信号的RPS图像对其进行重新训练。该模型对二元类的分类精度为(98.5±1.5)%,对三元类为(95±2)%。对于所有性能指标(例如准确性,敏感性和特异性),卷积神经网络(CNN)模型的性能优于其他现有的统计方法。提出的方法的结果显示了将RPS图像与CNN一起用于预测癫痫发作的前景。

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