首页> 外文会议>2018 International Conference on Applied Science and Technology >Predicting The Risk of Preeclampsia with History of Hypertension Using Logistic Regression and Naive Bayes
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Predicting The Risk of Preeclampsia with History of Hypertension Using Logistic Regression and Naive Bayes

机译:使用Logistic回归和朴素贝叶斯预测高血压史的先兆子痫风险

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摘要

The causes of maternal and infant mortality are high, especially in developing countries other than bleeding, namely preeclampsia because mild preeclampsia increases more sharply than severe preeclampsia. The incidence of preeclampsia varies in each country even in every region. The purpose of this study was to compare two methods in data mining techniques, namely the Logistic Regression method and the Naive Bayes method, to predict the risk level of Preeclampsia on the seventeen existing attributes data. The data obtained in this study were 239 preeclampsia patients who were obtained from Surabaya General Hajj Hospital, by collecting data from 2016 to 2017. This study used performance measurement of the two methods using score with the ROC curve (Receiver Operating Characteristics). In the experimental results, we found that in the term of accuracy and ROC curve, Logistic Regression has a slightly better performance than the Naive Bayes method.
机译:孕产妇和婴儿死亡的原因很高,尤其是在除出血以外的发展中国家,即先兆子痫,因为轻度先兆子痫比严重先兆子痫增加得更为剧烈。子痫前期的发生率在每个国家甚至每个地区都有所不同。这项研究的目的是比较数据挖掘技术中的两种方法,即Logistic回归方法和朴素贝叶斯方法,以根据现有的17种属性数据预测先兆子痫的风险水平。本研究获得的数据是2016年至2017年从泗水朝圣总医院收集的239例先兆子痫患者。本研究使用两种方法的性能测量,并使用ROC曲线评分(受试者工作特征)。在实验结果中,我们发现就准确性和ROC曲线而言,Logistic回归的性能要比Naive Bayes方法稍好。

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