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Classification and Comparison of Cardiotocography Signals with Artificial Neural Network and Extreme Learning Machine

机译:人工神经网络和极端学习机的心脏切叉信号的分类与比较

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Cardiotocography (CTG) is a monitoring technique that is used routinely during pregnancy and labor to assess fetal well-being. CTG consists of two signals which are fetal heart rate (FHR) and uterine contraction (UC). Twenty-one features representing the characteristic of FHR have been used in this work. The features are obtained from a large dataset consisting of 2126 records in UCI Machine Learning Repository. The prominent features, such as baseline, the number of acceleration and deceleration patterns, and variability recommended by International Federation of Gynecology and Obstetrics (FIGO) have also taken into account during CTG analysis. The features were applied as the input to feedforward neural network (ANN) and Extreme Learning Machine (ELM) to classify FHR patterns in this study. FHR is recently divided into three classes as normal, suspicious and pathological. According to the results of this study, the accuracy of classification of ANN and ELM were obtained as 91.84% and 93.42%, respectively.
机译:心脏剖视图(CTG)是一种监测技术,在怀孕期间经常使用,以评估胎儿福祉。 CTG由两个信号组成,这是胎儿心率(FHR)和子宫收缩(UC)。这项工作中已经使用了代表FHR特征的二十一项特征。该特征是从UCI机器学习存储库中的2126个记录组成的大型数据集。在CTG分析期间,也考虑了突出的特征,例如基线,加速度和减速模式,以及国际妇科和妇产科(FIGO)建议的变异性(妇产科(FICO)。将该功能应用于前馈神经网络(ANN)和极端学习机(ELM)的输入,以对本研究进行分类的FHR模式。 FHR最近分为三个课程,作为正常,可疑和病理。根据本研究的结果,分别获得ANN和ELM分类的准确性,分别为91.84%和93.42%。

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