Comparative Analysis of Data Mining Techniques to Predict Cardiovascular Disease

Md. Al Muzahid Nayim, Fahmidul Alam, Mostafa Rasel, Ragib Shahriar, Dipannyta Nandi
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引用次数: 1

Abstract

Cardiovascular disease is the leading cause of death. In recent days, most people are living with cardiovascular disease because of their unhealthy lifestyle and the most alarming issue is the majority of them do not get any symptoms in the early stage. This is why this disease is becoming more deadly. However, medical science has a large amount of data regarding cardiovascular disease, so this data can be used to apply data mining techniques to predict cardiovascular disease at the early stage to reduce its deadly effect. Here, five data mining classification techniques, such as: Naïve Bayes, K-Nearest Neighbors, Support Vector Machine, Random Forest and Decision Tree were implemented in the WEKA tool to get the best accuracy rate and a dataset of 12 attributes with more than 300 instances was used to apply all the data mining techniques to get the best accuracy rate. After doing this research people who are at the early stage of cardiovascular disease or probably going to be a victim can be identified more accurately.
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数据挖掘技术预测心血管疾病的比较分析
心血管疾病是导致死亡的主要原因。近年来,由于不健康的生活方式,大多数人都患有心血管疾病,最令人担忧的问题是,大多数人在早期没有任何症状。这就是为什么这种疾病变得越来越致命。然而,医学上有大量关于心血管疾病的数据,因此这些数据可以应用数据挖掘技术在早期预测心血管疾病,以减少其致命的影响。本文在WEKA工具中实现了Naïve贝叶斯、k近邻、支持向量机、随机森林和决策树五种数据挖掘分类技术,以获得最佳准确率,并使用一个包含12个属性、300多个实例的数据集应用所有数据挖掘技术以获得最佳准确率。在做了这项研究之后,处于心血管疾病早期阶段或可能成为受害者的人可以更准确地识别出来。
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