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Predication of premature neonates prognosis based on their electroencephalogram using artificial neural network

机译:基于人工脑网络的脑电图预测早产儿的预后

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The electroencephalogram (EEG) is a signal that measures the electrical activity of the brain. In this paper, we proposed an artificial neural network (ANN) having as output the category of the newborn (healthy, sick or risky) and as input 14 parameters taken from inter-burst intervals of EEG signal. These parameters are detected using a Java application called EEGDiag dedicated to the analysis of EEG. We used a dataset of 397 EEG records detected at birth of premature newborns and their classification two years after birth: healthy, sick or risky. The aim of our work is to provide an automated predication of their prognosis based on their EEG using an ANN. We obtained satisfying results concerning sick class (performance 85.5%) and risky class (performance 90.3%), and we demonstrated the need of extracting new characteristics concerning healthy ones.
机译:脑电图(EEG)是一种测量大脑电活动的信号。在本文中,我们提出了一种人工神经网络(ANN),其输出为新生儿的类别(健康,患病或有风险),并作为输入14个参数,这些参数取自脑电信号的突发间隔。使用名为EEGDiag的Java应用程序检测这些参数,该应用程序专用于EEG分析。我们使用了397个脑电图记录的数据集,该记录在早产儿出生时以及出生后两年内被分类:健康,患病或有风险。我们的工作目标是使用ANN根据其脑电图自动预测其预后。我们在患病等级(绩效85.5%)和危险等级(绩效90.3%)方面获得了令人满意的结果,并且我们证明了有必要提取与健康等级有关的新特征。

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