Performance Improvement with Decision Tree in Predicting Heart Failure

A. Karaoglu, Hasan Caglar, A. Değirmenci, Omer Karal
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引用次数: 6

Abstract

Cardiovascular diseases is a general term given to the group of diseases that includes heart failure, heart attack, stroke. They are quite dangerous for human health. Various studies have been conducted in the literature to predict the survival of patients with heart failure. In this study, user-defined parameters of three different machine learning methods (logistic regression-LR, K nearest neighbor-KNN, and decision tree-DT) used in existing studies are optimized to make predictions with higher accuracy. In terms of objectivity and reliability of the experimental results, k-fold cross validation technique is applied. As a result, the performance results of this study are observed to be 10% and 3% higher than the literature in the DT and KNN algorithms, respectively. In particular, the proposed KNN method has shown that it can guide physicians in the decision-making process.
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决策树在预测心力衰竭中的应用
心血管疾病是一组疾病的总称,包括心力衰竭、心脏病发作、中风。它们对人体健康相当危险。文献中已经进行了各种研究来预测心力衰竭患者的生存率。本研究对现有研究中使用的三种不同机器学习方法(logistic回归- lr、K近邻- knn和决策树- dt)的用户自定义参数进行优化,使预测精度更高。为了保证实验结果的客观性和可靠性,采用了k-fold交叉验证技术。因此,本研究的性能结果分别比DT和KNN算法的文献高10%和3%。特别是,提出的KNN方法已经表明,它可以指导医生的决策过程。
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