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Bispectrum and Recurrent Neural Networks: Improved Classification of Interictal and Preictal States

机译:双谱和递归神经网络:改善间壁和壁前状态的分类

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摘要

This work proposes a novel approach for the classification of interictal and preictal brain states based on bispectrum analysis and recurrent Long Short-Term Memory (LSTM) neural networks. Two features were first extracted from bilateral intracranial electroencephalography (iEEG) recordings of dogs with naturally occurring focal epilepsy. Single-layer LSTM networks were trained to classify 5-min long feature vectors as preictal or interictal. Classification performances were compared to previous work involving multilayer perceptron networks and higher-order spectral (HOS) features on the same dataset. The proposed LSTM network proved superior to the multilayer perceptron network and achieved an average classification accuracy of 86.29% on held-out data. Results imply the possibility of forecasting epileptic seizures using recurrent neural networks, with minimal feature extraction.
机译:这项工作提出了一种基于双谱分析和循环长期短期记忆(LSTM)神经网络的分类室间和室前脑状态的新方法。首先从患有自然局灶性癫痫的犬的双侧颅内脑电图(iEEG)记录中提取了两个特征。对单层LSTM网络进行了训练,以将5分钟长的特征向量分类为前期或发作期。将分类性能与涉及多层感知器网络和同一数据集上的高阶光谱(HOS)特征的先前工作进行了比较。所提出的LSTM网络被证明优于多层感知器网络,并且根据保留的数据实现了86.29%的平均分类精度。结果暗示使用递归神经网络以最少的特征提取来预测癫痫发作的可能性。

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