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Prediction of intrapartum fetal hypoxia considering feature selection algorithms and machine learning models

机译:考虑特征选择算法和机器学习模型的产前胎儿缺氧预测

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Abstract IntroductionCardiotocography (CTG) consists of two biophysical signals that are fetal heart rate (FHR) and uterine contraction (UC). In this research area, the computerized systems are usually utilized to provide more objective and repeatable results.Materials and MethodsFeature selection algorithms are of great importance regarding the computerized systems to not only reduce the dimension of feature set but also to reveal the most relevant features without losing too much information. In this paper, three filters and two wrappers feature selection methods and machine learning models, which are artificial neural network (ANN), k -nearest neighbor ( k NN), decision tree (DT), and support vector machine (SVM), are evaluated on a high dimensional feature set obtained from an open-access CTU-UHB intrapartum CTG database. The signals are divided into two classes as normal and hypoxic considering umbilical artery pH value (pH??7.20) measured after delivery. A comprehensive diagnostic feature set forming the features obtained from morphological, linear, nonlinear, time–frequency and image-based time–frequency domains is generated first. Then, combinations of the feature selection algorithms and machine learning models are evaluated to achieve the most effective features as well as high classification performance.ResultsThe experimental results show that it is possible to achieve better classification performance using lower dimensional feature set that comprises of more related features, instead of the high-dimensional feature set. The most informative feature subset was generated by considering the frequency of selection of the features by feature selection algorithms. As a result, the most efficient results were produced by selected only 12 relevant features instead of a full feature set consisting of 30 diagnostic indices and SVM model. Sensitivity and specificity were achieved as 77.40% and 93.86%, respectively.ConclusionConsequently, the evaluation of multiple feature selection algorithms resulted in achieving the best results.
机译:摘要简介心血管造影(CTG)由两个生物物理信号组成,即胎儿心率(FHR)和子宫收缩(UC)。在这个研究领域中,通常使用计算机系统来提供更客观和可重复的结果。材料和方法特征选择算法对于计算机系统非常重要,它不仅可以减少特征集的维数,而且可以在不降低特征集的情况下显示出最相关的特征丢失太多信息。本文提出了三种滤波器和两种包装特征选择方法和机器学习模型,分别是人工神经网络(ANN),k最近邻(k NN),决策树(DT)和支持向量机(SVM)。对从开放式CTU-UHB产内CTG数据库获得的高维特征集进行了评估。考虑到分娩后脐动脉的pH值(pH≤<7.20),该信号分为正常和低氧两类。首先生成一个综合的诊断特征集,该特征集形成从形态学,线性,非线性,时频域和基于图像的时频域中获得的特征。然后,对特征选择算法和机器学习模型的组合进行评估,以实现最有效的特征以及较高的分类性能。结果实验结果表明,使用包含更多相关特征的低维特征集可以实现更好的分类性能要素,而不是高维要素集。通过考虑特征选择算法选择特征的频率来生成信息最丰富的特征子集。因此,仅选择12个相关特征,而不是由30个诊断指标和SVM模型组成的完整特征集,即可获得最有效的结果。敏感性和特异性分别达到77.40%和93.86%。结论因此,对多特征选择算法的评估获得了最佳结果。

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