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Fetal State Assessment Based on Cardiotocography Parameters Using PCA and AdaBoost

机译:基于使用PCA和Adaboost的心脏插相参数的胎儿状态评估

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Cardiotocography (CTG) is the widely used tool for recording fetal heart rate (FHR) signal and uterine contraction (UC) activity at the same time during pregnancy and delivery. CTG is frequently used for assisting the obstetricians to obtain detailed physiological information of fetal and pregnant woman as a technique of diagnosing fetal well-being. However, the visual analysis of the CTG traces requires a high level of expertise of the obstetricians and can cause inter- and intra-observer variability. Therefore, this research aimed at realizing a clinical decision support system for diagnosing fetal risk through advanced machine learning method applied to relevant features extracted from CTG recordings. In this paper, a CTG dataset consisting of 2126 recordings and 21 features obtained from UCI Machine Learning Repository is used for classification. After selecting more relevant features from total features based on Principle Component Analysis (PCA), data are trained and tested through Adaptive Boosting (AdaBoost) algorithm integrated with Support Vector Machine (SVM) to obtain a strong classifier for classifying the unknown CTG data and predicting the fetal state. Fetal state is divided into two classes as normal and pathological. Based on ten-fold cross-validation, according to the results of this study, a good overall classification accuracy of total and selected features using AdaBoost approach were obtained as 93.0% and 98.6%, computation time of 11.6s and 2.4s, respectively. So this research shows the success of hybrid PCA and AdaBoost for classifying CTG data and assessing fetal state. Furthermore, some criterias of classification performance measure were taken into consideration, including sensitivity, specificity, AUC, etc.
机译:心脏切断(CTG)是在怀孕和交付期间同时记录胎儿心率(FHR)信号和子宫收缩(UC)活性的广泛使用的工具。 CTG经常用于协助产科医生获得胎儿和孕妇的详细生理信息,作为诊断胎儿福祉的技术。然而,CTG迹线的视觉分析需要高层产科医生的专业知识,并且可能导致观察者间和帧内变异性。因此,本研究旨在通过应用于CTG录制提取的相关特征的先进机器学习方法来实现用于诊断胎儿风险的临床决策支持系统。在本文中,由UCI机器学习存储库中获得的2126个录制和21个功能组成的CTG数据集用于分类。通过基于原理分量分析(PCA)的总特征从总特征选择更多相关特征后,通过与支持向量机(SVM)集成的自适应升压(ADABoost)算法进行培训和测试数据,以获得用于对未知CTG数据进行分类和预测的强分类器胎儿。胎儿分为两类正常和病理。根据本研究的结果,基于十倍的交叉验证,获得了使用Adaboost方法的总和和所选特征的良好整体分类精度,分别获得93.0%和98.6%,计算时间为11.6s和2.4s。因此,这项研究表明了混合PCA和Adaboost用于分类CTG数据和评估胎儿的成功。此外,考虑了分类性能措施的一些标准,包括灵敏度,特异性,AUC等。

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