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A comparative study of classification algorithms for predicting gestational risks in pregnant women

机译:对孕妇妊娠期妊娠期风险的分类算法的比较研究

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Pregnant women must be protected from complications during the period of gestation which is a stage every woman undergoes many physiological changes, sometimes inducing complications that may turn severe and lead to death of both mother and fetus. Classification methods are popularly used method whose algorithms are best suitable in medical diagnosis. Among them C4.5 Decision Tree algorithm and Nai?ve Bayes algorithm are effectively used for classifying medical data. Both algorithms are most capable to classify the pregnancy data of present research study. The main aim of this paper is to highlight concept of standardization of parameters selected for data collection in study to achieve elevated results of classification by selected classification algorithms. The paper also presents how efficiently risk levels can be predicted by the selected algorithms to protect pregnant women from complications in pregnant women health. Pregnancy data of present research study is considered for classifying and predicting complications leading to different risk levels during pregnancy. The best algorithm among selected two algorithms namely C4.5 and Nai?ve Bayes Classifier is identified in the paper for further improving the efficiency of selected classifier. By identifying the risks in pregnancy, present maternal and fetal mortality rate can be efficiently reduced to lower rates thus providing a safe pregnancy period, post natal period and a healthy baby to pregnant mothers.
机译:在妊娠期期间,必须保护孕妇免受并发症的影响,这是每个女性经历许多生理变化的阶段,有时会诱导可能变得严重并导致母亲和胎儿死亡的并发症。分类方法是普遍使用的方法,其算法最适合在医学诊断中。其中C4.5决策树算法和Nai = ve Bayes算法有效地用于分类医疗数据。这两种算法最能够对本研究研究的妊娠数据进行分类。本文的主要目的是突出为学习中选择的参数标准化的概念,以通过所选分类算法实现分类的提高结果。本文还提出了所选算法可以预测有效风险水平,以保护孕妇免受孕妇健康的并发症。目前研究研究的妊娠数据被认为是分类和预测在怀孕期间导致不同风险水平的并发症。选定的两种算法中的最佳算法即C4.5和NaI贝雷斯分类器,用于进一步提高所选分类器的效率。通过鉴定怀孕的风险,目前的母亲和胎儿死亡率可以有效地降低到较低的利率,从而提供安全的妊娠期,产地后时期和健康的母亲对怀孕的母亲。

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