Heart Disease Prediction Using Hybrid Machine Learning Model Based on Decision Tree and Neural Network

Mostafa Bakhshi, S. L. Mirtaheri, S. Greco
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Abstract

Cardiovascular disease is the leading cause of death in the world. Nowadays, tremendous amount of data is collected on heart disease. Investigating the data and obtaining insight using data mining can improve the detection and prevention rate, especially in early stages. So far, many researches are performed on data mining models for diagnoses. In this paper, we intend to present a model for the diagnosis of heart disease using a feature-based approach as a preprocessing step. The proposed solution include four main steps as preprocessing the data, selecting effective features, clustering by using the K-Means algorithm and proposing a hybrid model of decision tree and neural network to determine the disease. In selecting the effective features, we use three methods as Pearson correlation coefficient, information gain, and component analysis. The evaluation results confirm that the proposed hybrid model outperforms the existing methods by 0.97 accuracy.
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基于决策树和神经网络的混合机器学习模型的心脏病预测
心血管疾病是世界上导致死亡的主要原因。如今,人们收集了大量关于心脏病的数据。使用数据挖掘对数据进行调查并获得洞察力可以提高检测和预防率,特别是在早期阶段。目前,针对诊断数据挖掘模型的研究较多。在本文中,我们打算使用基于特征的方法作为预处理步骤,提出一个心脏病诊断模型。该方案主要包括数据预处理、选择有效特征、K-Means算法聚类以及提出决策树和神经网络混合模型进行疾病诊断四个主要步骤。在选择有效特征时,我们使用了Pearson相关系数、信息增益和成分分析三种方法。评价结果表明,所提混合模型的准确率比现有方法提高了0.97。
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