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Predicting healthcare associated infections using patients' experiences

机译:预测使用患者的经验预测医疗保健相关感染

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Healthcare associated infections (HAI) are a major threat to patient safety and are costly to health systems. Our goal is to predict the HAI performance of a hospital using the patients' experience responses as input. We use four classifiers, viz. random forest, naive Bayes, artificial feedforward neural networks, and the support vector machine, to perform the prediction of six types of HAI. The six types include blood stream, urinary tract, surgical site, and intestinal infections. Experiments show that the random forest and support vector machine perform well across the six types of HAI.
机译:医疗保健相关感染(HAI)是对患者安全的重大威胁,对卫生系统昂贵。我们的目标是使用患者的经验响应预测医院的HAI性能作为投入。我们使用四个分类器,viz。随机森林,天真贝叶斯,人工前馈神经网络和支持向量机,执行六种六种海的预测。六种类型包括血流,尿路,手术部位和肠道感染。实验表明,随机森林和支持向量机在六种类型的海上表现良好。

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