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Detection of pseudosinusoidal epileptic seizure segments in the neonatal EEG by cascading a rule-based algorithm with a neural network

机译:通过级联基于规则的神经网络算法检测新生儿脑电图中的假正弦癫痫发作片段

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摘要

This paper presents an approach to detect epileptic seizure segments in the neonatal electroencephalogram (EEG) by characterizing the spectral features of the EEG waveform using a rule-based algorithm cascaded with a neural network. A rule-based algorithm screens out short segments of pseudosinusoidal EEG patterns as epileptic based on features in the power spectrum. The output of the rule-based algorithm is used to train and compare the performance of conventional feedforward neural networks and quantum neural networks. The results indicate that the trained neural networks, cascaded with the rule-based algorithm, improved the performance of the rule-based algorithm acting by itself. The evaluation of the proposed cascaded scheme for the detection of pseudosinusoidal seizure segments reveals its potential as a building block of the automated seizure detection system under development.
机译:本文提出了一种方法,通过使用与神经网络级联的基于规则的算法表征脑电图波形的频谱特征,来检测新生儿脑电图(EEG)中的癫痫发作片段。基于规则的算法根据功率谱中的特征筛选出假正弦脑电图模式的短段作为癫痫病。基于规则的算法的输出用于训练和比较常规前馈神经网络和量子神经网络的性能。结果表明,训练有素的神经网络与基于规则的算法级联,提高了基于规则的算法本身的性能。拟议的级联方案用于检测假正弦癫痫发作节段的评估显示了其作为正在开发的自动癫痫发作检测系统的基础。

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