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Automatic detection of epileptiform events in EEG by a three-stage procedure based on artificial neural networks

机译:基于人工神经网络的三阶段过程自动检测脑电图中的癫痫样事件

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This paper introduces a three-stage procedure based on artificial neural networks for the automatic detection of epileptiform events (EVs) in a multichannel electroencephalogram (EEG) signal. In the first stage, two discrete perceptrons fed by six features are used to classify EEG peaks into three subgroups: 1) definite epileptiform transients (ETs); 2) definite non-ETs; and 3) possible ETs and possible non-ETs. The pre-classification done in the first stage not only reduces the computation time but also increases the overall detection performance of the procedure. In the second stage, the peaks falling into the third group are aimed to be separated from each other by a nonlinear artificial neural network that would function as a postclassifier whose input is a vector of 41 consecutive sample values obtained from each peak. Different networks, i.e., a backpropagation multilayer perceptron and two radial basis function networks trained by a hybrid method and a support vector method, respectively, are constructed as the postclassifier and then compared in terms of their classification performances. In the third stage, multichannel information is integrated into the system for contributing to the process of identifying an EV by the electroencephalographers (EEGers). After the integration of multichannel information, the overall performance of the system is determined with respect to EVs. Visual evaluation, by two EEGers, of 19 channel EEG records of 10 epileptic patients showed that the best performance is obtained with a radial basis support vector machine providing an average sensitivity of 89.1%, an average selectivity of 85.9%, and a false detection rate (per hour) of 7.5.
机译:本文介绍了一种基于人工神经网络的三阶段过程,用于自动检测多通道脑电图(EEG)信号中的癫痫样事件(EVs)。在第一阶段,由六个特征馈送的两个离散感知器被用于将脑电图峰分为三个亚组:1)明确的癫痫样瞬变(ET); 2)确定的非ETs; 3)可能的ET和可能的非ET。在第一阶段完成的预分类不仅减少了计算时间,而且还提高了过程的整体检测性能。在第二阶段中,目标是通过非线性人工神经网络将属于第三组的峰彼此分离,该神经网络将充当后分类器,其输入是从每个峰获取的41个连续样本值的向量。将分别通过混合方法和支持向量法训练的不同网络(即,反向传播多层感知器和两个径向基函数网络)构建为后分类器,然后根据分类性能进行比较。在第三阶段,将多通道信息集成到系统中,以帮助脑电图师(EEGers)识别EV。集成多通道信息后,系统将针对EV确定系统的整体性能。通过两个EEG者对10个癫痫患者的19个通道EEG记录进行的视觉评估表明,使用径向基支持向量机可获得最佳性能,其平均灵敏度为89.1%,平均选择性为85.9%,错误检测率(每小时)为7.5。

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