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Data Mining for the Prediction of Fetal Malformation Through Cardiotocography Data

机译:通过心脏切断数据预测胎儿畸形的数据挖掘

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Despite advances in technology and health, the number of maternal and fetal deaths during and after pregnancy and childbirth remains significant. Most of these deaths could be avoided if there was prenatal care before and during pregnancy, which could assist in monitoring the fetal heart rate (FHR). Thus, medical methods have been developed for assisting fetal monitoring, such as cardiotocography (CTG). To collaborate with the methods developed, advances in the field of machine learning and computational intelligence made it possible to increase the effectiveness of classification and recognition systems and, thus, to predict possible maternal or fetal death. To this end, this paper tries to predict fetal well-being, through the classification of data resulting from fetal CTGs using two different types of classification, fetal state and morphological pattern. The classification by fetal state, using methods such as Decision Tree (DT) and k-Nearest Neighbors (kNN), presented high accuracy values, achieving values that range from 93% to 98%. However, although not expected, the classification by morphological standards also showed high accuracy values, achieving the best model a value of 93% of accuracy with the kNN. Therefore, the complementary between both classifications may guarantee success in predicting fetal well-being.
机译:尽管技术和健康有所进步,但怀孕和分娩期间和妊娠期后的孕妇和胎儿死亡人数仍然很大。如果怀孕前和怀孕前和怀孕期间的产前护理,则可以避免这些死亡中的大部分死亡,这可以有助于监测胎儿心率(FHR)。因此,已经开发了用于辅助胎儿监测的医疗方法,例如心脏切断(CTG)。为了与开发的方法进行合作,机器学习领域的进步和计算智能使得可以提高分类和识别系统的有效性,从而可以预测可能的母体或胎儿死亡。为此,本文试图通过使用胎儿CTGS使用两种不同类型的分类,胎儿状态和形态学模式来预测胎儿福祉。胎儿状态的分类,使用诸如决策树(DT)和K-CORMENT邻居(KNN)的方法,提出了高精度值,实现了93%至98%的值。然而,虽然未预期,形态标准的分类也表现出高精度值,实现了最佳模型的最佳型号为knn精度的93%。因此,两种分类之间的互补性可以保证预测胎儿福祉的成功。

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