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Application of Data Mining Techniques to Predict the Length of Stay of Hospitalized Patients with Diabetes

机译:数据挖掘技术在糖尿病住院患者住院时间预测中的应用

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Diabetes is one of the most critical public health conditions worldwide. It has been shown that patients with diabetes are associated with a longer length of hospital stay (LOS) and increased associated healthcare cost. The uncertainty of diabetic patients' LOS makes it difficult for hospitals to optimize their scheduling process. In this paper, we applied the stacked ensemble method, with deep learning as the meta-learning algorithm, to predict long vs. short LOS for diabetic patients. The obtained results show that stacked ensemble technique is promising in this field because stacking multiple classification learning algorithms resulted in a better predictive performance than that obtained from any of the constituent learning algorithms. Having a reasonable estimate on LOS for patients with diabetes can help in optimizing the use of hospital resources, reducing healthcare cost, and improving diabetic patient satisfaction.
机译:糖尿病是全世界最关键的公共卫生状况之一。已经显示糖尿病患者与更长的住院时间(LOS)和增加的相关医疗费用有关。糖尿病患者服务水平的不确定性使医院难以优化其调度流程。在本文中,我们采用了以深度学习作为元学习算法的堆叠集成方法,来预测糖尿病患者的长期和短期LOS。所获得的结果表明,堆叠集成技术在该领域是有前途的,因为堆叠多个分类学习算法比从任何组成学习算法获得的预测性能更好。对糖尿病患者的LOS进行合理估计可以帮助优化医院资源的使用,降低医疗保健成本并提高糖尿病患者的满意度。

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