心脏病数据集的机器学习技术:一项调查

Younas Khan, Usman Qamar, Nazish Yousaf, Aimal Khan
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引用次数: 29

摘要

心衰(HF)已被证明是导致死亡的主要原因之一,这就是为什么准确和及时地预测心衰风险是极其重要的。临床方法,例如,血管造影是诊断心衰最好和最有效的方法,然而,研究表明,它不仅昂贵而且有副作用。最近,机器学习技术已被用于上述目的。本调查论文旨在根据2012年以来发表的35篇期刊文章进行系统的文献综述,其中最先进的机器学习分类技术已经在心脏病数据集上实现。本研究对选定的论文进行了批判性分析,并发现了现有文献中的空白,对于打算将机器学习应用于医学领域,特别是心脏病数据集的研究人员来说,这是一种辅助。调查发现,最流行的分类技术是支持向量机、神经网络和集成分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Techniques for Heart Disease Datasets: A Survey
Heart Failure (HF) has been proven one of the leading causes of death that is why an accurate and timely prediction of HF risks is extremely essential. Clinical methods, for instance, angiography is the best and most effective way of diagnosing HF, however, studies show that it is not only costly but has side effects as well. Lately, machine learning techniques have been used for the stated purpose. This survey paper aims to present a systematic literature review based on 35 journal articles published since 2012, where state of the art machine learning classification techniques have been implemented on heart disease datasets. This study critically analyzes the selected papers and finds gaps in the existing literature and is assistive for researchers who intend to apply machine learning in medical domains, particularly on heart disease datasets. The survey finds out that the most popular classification techniques are Support Vector Machine, Neural Networks, and ensemble classifiers.
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