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Emergency Department Readmission Risk Prediction: A Case Study in Chile

机译:紧急部门的再入院风险预测:智利的案例研究

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Short time readmission prediction in Emergency Departments (ED) is a valuable tool to improve both the ED management and the healthcare quality. It helps identifying patients requiring further post-discharge attention as well as reducing healthcare costs. As in many other medical domains, patient readmission data is heavily imbal-anced, i.e. the minority class is very infrequent, which is a challenge for the construction of accurate predictors using machine learning tools. We have carried computational experiments on a dataset composed of ED admission records spanning more than 100000 patients in 3 years, with a highly imbalanced distribution. We employed various approaches for dealing with this highly imbalanced dataset in combination with different classification algorithms and compared their predictive power for the estimation of the ED readmission probability within 72 h after discharge. Results show that random undersampling and Bagging (RUSBagging) in combination with Random Forest achieves the best results in terms of Area Under ROC Curve (AUC).
机译:急诊科(ED)的短期再入院预测是提高ED管理和医疗质量的宝贵工具。它有助于确定需要出院后进一步关注的患者,并降低医疗费用。像在许多其他医学领域一样,患者的再入院数据严重失衡,即少数族裔很少出现,这对于使用机器学习工具构建准确的预测变量是一个挑战。我们对由ED入院记录组成的数据集进行了计算实验,该记录在3年内跨越了100000多名患者,分布高度不平衡。我们采用各种方法结合不同的分类算法来处理这个高度不平衡的数据集,并比较了它们的预测能力,以评估出院后72 h内ED的再入机率。结果表明,就ROC曲线下面积(AUC)而言,随机欠采样和装袋(RUSBagging)与随机森林相结合可获得最佳结果。

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