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Modelling Absence Epilepsy seizure data in the NeuCube evolving spiking neural network architecture

机译:在NeuCube进化的尖峰神经网络体系结构中建模缺少癫痫发作数据

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Epilepsy is the most diffuse brain disorder that can affect people's lives even on its early stage. In this paper, we used for the first time the spiking neural networks (SNN) framework called NeuCube for the analysis of electroencephalography (EEG) data recorded from a person affected by Absence Epileptic (AE), using permutation entropy (PE) features. Our results demonstrated that the methodology constitutes a valuable tool for the analysis and understanding of functional changes in the brain in term of its spiking activity and connectivity. Future applications of the model aim at personalised modelling of epileptic data for the analysis and the event prediction.
机译:癫痫病是最广泛的脑部疾病,即使在其早期阶段,也可能影响人们的生活。在本文中,我们首次使用排列神经网络(PE)功能,使用称为神经元(NeuCube)的尖峰神经网络(SNN)框架来分析从缺少癫痫病(AE)影响的人那里记录的脑电图(EEG)数据。我们的研究结果表明,该方法学是分析和了解大脑功能变化的重要工具,以增强其活动性和连通性。该模型的未来应用旨在针对分析和事件预测的癫痫数据进行个性化建模。

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