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Applying Data Preprocessing Methods to Predict Premature Birth

机译:应用数据预处理方法预测早产

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Data mining and pattern classification tools have{enabled prediction of several medical outcomes with high levels of accuracy. This is due to the capability of handling large datasets, even those with missing values. Preterm birth (PTB) can have damaging long-term effects for infants and rates have been increasing over the last two decades worldwide. The purpose of this work was to investigate whether preprocessing methods, when applied to two different prenatal datasets, can improve prediction accuracy of our software tool to predict PTB. The primary software used within this work was R. The software was used to deal with missing values and class imbalances found in these two datasets. The results show that in comparison to our past work, we have managed to increase the performance of the prediction tool using the metrics of sensitivity, specificity, and ROC values.
机译:数据挖掘和模式分类工具{能够高度准确地预测几种医疗结果。这是由于能够处理大型数据集,甚至是那些缺少值的数据集。早产(PTB)对婴儿的长期影响可能有害,并且在过去的二十年中,全球婴儿的发病率一直在上升。这项工作的目的是调查预处理方法在应用于两个不同的产前数据集时是否可以提高我们预测PTB的软件工具的预测准确性。在这项工作中使用的主要软件是R。该软件用于处理在这两个数据集中发现的缺失值和类不平衡现象。结果表明,与我们过去的工作相比,我们已经使用敏感性,特异性和ROC值的指标设法提高了预测工具的性能。

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