A Metaphoric Investigation on Prediction of Heart Disease using Machine Learning

Debabrata Swain, S. Pani, Debabala Swain
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引用次数: 15

Abstract

Nowadays, heart diseases are considered as the biggest concern in the field of healthcare. Heart diseases mostly lead to death when a patient gets a heart attack. Most of the times, it becomes difficult for the medical practitioner to accurately identify the presence of heart disease with a particular patient. If the disease can be identified at an early stage then it becomes easy to cure it. As medical diagnosing is a decision-making technique, an intelligent decision system can be implemented by using various machine learning classification models which will help the medical practitioner to accurately diagnose the heart disease. In this survey, we have analysed the performance of various heart disease prediction techniques, namely ABC-SVM, ANFIS, SVM-ANN, SVM-SSVM, Genetic Algorithm, Neural Network Ensemble, FNN, Majority Vote Based Ensemble Classifier etc. All these techniques have used Cleveland Heart Disease dataset of UCI Machine Learning Repository.
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利用机器学习预测心脏病的隐喻研究
如今,心脏病被认为是医疗保健领域最受关注的问题。当病人心脏病发作时,心脏病大多会导致死亡。大多数时候,医生很难准确地识别出特定病人是否患有心脏病。如果这种疾病能在早期被发现,那么就很容易治愈。医疗诊断是一种决策技术,通过使用各种机器学习分类模型,可以实现智能决策系统,帮助医生准确诊断心脏病。在这项调查中,我们分析了各种心脏病预测技术的性能,即ABC-SVM, ANFIS, SVM-ANN, SVM-SSVM,遗传算法,神经网络集成,FNN,基于多数投票的集成分类器等。所有这些技术都使用了UCI机器学习库的克利夫兰心脏病数据集。
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