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Hospitalization Cost Prediction for Cardiovascular Disease by Effective Feature Selection

机译:有效特征选择,心血管疾病住院成本预测

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The burden of cardiovascular diseases is increasing, and the annual growth rate of hospitalization expenses for cardiovascular diseases is much higher than that of GDP. Therefore, researchers have developed a number of intelligent systems to predict hospitalization costs for cardiovascular disease. However, there are some problems with these methods, such as the performance of real world data sets and the differences between the feature selection and the actual selection of doctors. This paper proposes a method to construct a Medical Concept Knowledge Graph (MCKG) by combining open source knowledge graphs such as Wikidata and OpenKG, open source knowledge bases such as UMLS, and doctors' prior medical knowledge. A Medical Instance Knowledge Graph (MIKG) is constructed based on MCKG and the data of cardiovascular disease related medical records from the cooperative hospital. We conduct feature selection according to MIKG, draw feature alternatives, and combine with doctor-defined rules to arrive at final feature selection. We predict hospitalization costs with random forest algorithm. Experimental results show that the average error rate of our method is lower than that of the baseline algorithms.
机译:心血管疾病的负担正在增加,心血管疾病的住院费用年增长率远高于GDP。因此,研究人员开发了许多智能系统,以预测心血管疾病的住院成本。然而,这些方法存在一些问题,例如现实世界数据集的性能以及特征选择与实际选择的医生之间的差异。本文提出了一种通过组合Wikidata和OpenKG等开源知识图来构建医学概念知识图(MCKG)的方法,例如UML,以及医生的先前医学知识。基于Mckg和合作医院的心血管疾病相关医疗记录的数据构建了医学实例知识图(MIKG)。我们根据Mikg,绘制特征替代方案进行功能选择,并与Doctor定义的规则相结合,以到最终特征选择。我们通过随机林算法预测住院费用。实验结果表明,我们的方法的平均误差率低于基线算法。

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