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Random Forest-based predictive modelling on Hungarian Myocardial Infarction Registry

机译:匈牙利心肌梗死登记处基于森林的随机预测模型

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The objective of the current study is to compare how our two tree-based machine learning algorithms can predict 30-day and 1-year mortality of patients hospitalized with acute myocardial infarction. The two algorithms were decision tree and random forest, and the source of dataset is Hungarian Myocardial Infarction Registry (n=47,391). As a result, we found that the ROC AUC values of Random Forest models for predicting 30-day mortality were 0.843 and 0.847 (training and validation set), while for the 1-year models these were 0.835 and 0.836, respectively. These numbers mean that, the Random Forest models were at least 5-6% better than the decision tree models, but in some cases the improvement is above 9%.
机译:当前研究的目的是比较我们两种基于树的机器学习算法如何预测急性心肌梗塞住院患者的30天和1年死亡率。两种算法分别是决策树和随机森林,数据集的来源是匈牙利心肌梗塞注册中心(n = 47,391)。结果,我们发现用于预测30天死亡率的随机森林模型的ROC AUC值分别为0.843和0.847(训练和验证集),而对于1年模型,它们的ROC AUC值分别为0.835和0.836。这些数字意味着,随机森林模型至少比决策树模型好5-6%,但在某些情况下,改进超过9%。

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