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Decision Trees Based Classification of Cardiotocograms Using Bagging Approach

机译:使用袋装法的基于决策树的心电图分类

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Cardiotocography (CTG) is a worldwide method used for recording fetal heart rate and uterine contractions during pregnancy and delivery. The consistent visual assessment of the CTG is not only time consuming but also requires expertise and clinical knowledge of the obstetricians. The inconsistency in visual evaluation can be eliminated by developing clinical decision support systems. During last few decades various data mining and machine learning techniques have been proposed for developing such systems. In present study, bagging approach in combination with three traditional decision trees algorithms (random forest, Reduced Error Pruning Tree (REPTree) and J48) has been applied to identify normal and pathological fetal state using CTG data. Studies show that decision trees algorithms and bagging have separately shown tremendous improvements in the classification of healthy and pathological subjects in medical domain. The parameters of classifiers were optimized before applying on the data sets. The ten folds cross validation is used for examining the robust of the classifiers. The degree of separation was quantified using Precision, Recall and F-Measure. At first full feature space have been analyzed using proposed bagging based decision trees algorithms. Then by using correlation feature selection - subset evaluation (cfs) method, a reduced feature space has been obtained and analyzed using proposed method. The overall classification accuracy of more than 90% has been obtained by the classifiers on the test set when full feature space is used. For all three performance measures, values greater than 0.90 has been achieved with full and reduced feature space. The proposed methodology showed better classification in both full and reduced feature space scenarios.
机译:心动描记法(CTG)是一种全球性的方法,用于记录怀孕和分娩期间的胎儿心率和子宫收缩。对CTG进行一致的视觉评估不仅费时,而且还需要产科医生的专业知识和临床知识。通过开发临床决策支持系统,可以消除视觉评估中的不一致。在过去的几十年中,已经提出了各种数据挖掘和机器学习技术来开发这样的系统。在本研究中,套袋方法与三种传统决策树算法(随机森林,减少错误修剪树(REPTree)和J48)相结合已被用于使用CTG数据识别胎儿的正常状态和病理状态。研究表明,决策树算法和装袋法分别显示了医学领域健康和病理学受试者分类的巨大进步。在将分类器的参数应用于数据集之前对其进行了优化。十折交叉验证用于检查分类器的鲁棒性。分离度使用Precision,Recall和F-Measure进行定量。首先,已经使用建议的基于袋的决策树算法分析了全功能空间。然后,通过使用相关特征选择-子集评估(cfs)方法,获得了减少的特征空间,并使用提出的方法进行了分析。当使用完整特征空间时,测试集上的分类器已获得90%以上的总体分类精度。对于所有这三种性能指标,在具有完整且缩小的功能空间的情况下都可以实现大于0.90的值。所提出的方法在完整和缩小特征空间方案中均显示出更好的分类。

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