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Feature selection using swarm-based relative reduct technique for fetal heart rate

机译:使用基于群体的相对归约技术对胎儿心率进行特征选择

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Fetal heart rate helps in diagnosing the well-being and also the distress of fetal. Cardiotocograph (CTG) monitors the fetal heart activity to estimate the fetal tachogram based on the evaluation of ultrasound pulses reflected from the fetal heart. It consists in a simultaneous recording and analysis of fetal heart rate signal, uterine contraction activity and fetal movements. Generally CTG comprises more number of features. Feature selection also called as attribute selection is a process of selecting a subset of highly relevant features which is responsible for future analysis. In general, medical datasets require more number of features to predict an activity. This paper aims at identifying the relevant and ignores the redundant features, consequently reducing the number of features to assess the fetal heart rate. The features are selected by using unsupervised particle swarm optimization (PSO)-based relative reduct (US-PSO-RR) and compared with unsupervised relative reduct and principal component analysis. The proposed method is then tested by applying various classification algorithms such as single decision tree, multilayer perceptron neural network, probabilistic neural network and random forest for maximum number of classes and clustering accuracies like root mean square error, mean absolute error, Davies-Bouldin index and Xie-Beni index for minimum number of classes. Empirical results show that the US-PSO-RR feature selection technique outperforms the existing methods by producing sensitivity of 72.72%, specificity of 97.66%, F-measure of 74.19% which is remarkable, and clustering results demonstrate error rate produced by US-PSO-RR is less as well.
机译:胎儿心率有助于诊断胎儿的健康状况和痛苦。心电图仪(CTG)会根据对胎儿心脏反射的超声脉冲的评估来监视胎儿心脏活动,以估计胎儿的行车记录。它包括同时记录和分析胎儿心率信号,子宫收缩活动和胎儿运动。通常,CTG包含更多功能。特征选择也称为属性选择,是选择负责将来分析的高度相关特征子集的过程。通常,医学数据集需要更多数量的特征来预测活动。本文旨在识别相关的特征并忽略其多余特征,因此减少了评估胎儿心率的特征数量。使用基于无监督粒子群优化(PSO)的相对归约(US-PSO-RR)选择特征,并与无监督相对归约和主成分分析进行比较。然后通过应用各种分类算法(例如单决策树,多层感知器神经网络,概率神经网络和随机森林)对所提出的方法进行测试,以获取最大类数和聚类精度,例如均方根误差,平均绝对误差,Davies-Bouldin指数以及Xie-Beni指数以获取最少的课程数量。实验结果表明,US-PSO-RR特征选择技术优于现有方法,其灵敏度为72.72%,特异性为97.66%,F测度为74.19%,显着,聚类结果表明US-PSO产生的错误率-RR也较少。

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