A study on predicting and diagnosing non-communicable diseases: case of cardiovascular diseases

F. Ngom, Ibrahima Fall, M. Camara, A. Bah
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引用次数: 2

Abstract

Heart disease causes millions of deaths worldwide. Many approaches have been proposed for the prediction of heart disease. Several machine learning, deep learning, and data mining algorithms are used in the detection and diagnosis of heart disease based on parameters or risk factors. The most used algorithms are Naïve Bayes, Machine Vector Support, decision tree, KNNs, and artificial neural networks. The most frequently used parameters or risk factors are the 14 attributes of the UCI Cleveland standard. In this article, a study on these different approaches is carried out. This study shows diversity in relation to the choices and the use of different attributes in the prediction of cardiovascular diseases.
非传染性疾病的预测和诊断研究:以心血管疾病为例
全世界有数百万人死于心脏病。人们提出了许多预测心脏病的方法。几种机器学习、深度学习和数据挖掘算法被用于基于参数或风险因素的心脏病检测和诊断。最常用的算法是Naïve贝叶斯,机器向量支持,决策树,knn和人工神经网络。最常用的参数或风险因素是UCI克利夫兰标准的14个属性。本文对这些不同的方法进行了研究。本研究显示了在心血管疾病预测中不同属性的选择和使用的多样性。
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