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Feature selection using genetic algorithms for fetal heart rate analysis

机译:使用遗传算法进行胎儿心率分析的特征选择

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The fetal heart rate (FHR) is monitored on a paper strip (cardiotocogram) during labour to assess fetal health. If necessary, clinicians can intervene and assist with a prompt delivery of the baby. Data-driven computerized FHR analysis could help clinicians in the decision-making process. However, selecting the best computerized FHR features that relate to labour outcome is a pressing research problem. The objective of this study is to apply genetic algorithms (GA) as a feature selection method to select the best feature subset from 64 FHR features and to integrate these best features to recognize unfavourable FHR patterns. The GA was trained on 404 cases and tested on 106 cases (both balanced datasets) using three classifiers, respectively. Regularization methods and backward selection were used to optimize the GA. Reasonable classification performance is shown on the testing set for the best feature subset (Cohen's kappa values of 0.45 to 0.49 using different classifiers). This is, to our knowledge, the first time that a feature selection method for FHR analysis has been developed on a database of this size. This study indicates that different FHRfeatures,when integrated, can showgood performance in predicting labour outcome. It also gives the importance of each feature, which will be a valuable reference point for further studies.
机译:在分娩过程中用纸条(心电图)监测胎儿心率(FHR)以评估胎儿健康状况。如有必要,临床医生可以进行干预并协助及时分娩。数据驱动的计算机FHR分析可以帮助临床医生进行决策。但是,选择与分娩结果相关的最佳计算机化FHR功能是一个紧迫的研究问题。这项研究的目的是应用遗传算法(GA)作为特征选择方法,从64个FHR特征中选择最佳特征子集,并整合这些最佳特征以识别不利的FHR模式。 GA分别针对404个案例进行了培训,并使用三个分类器分别对106个案例(包括平衡数据集)进行了测试。正则化方法和后向选择用于优化GA。测试集上显示了最佳特征子集的合理分类性能(使用不同的分类器,科恩的kappa值为0.45至0.49)。据我们所知,这是首次在这种规模的数据库上开发出用于FHR分析的特征选择方法。这项研究表明,将不同的FHR功能集成在一起,可以在预测分娩结果方面表现出良好的表现。它还提供了每个功能的重要性,这将是进一步研究的宝贵参考点。

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