Prediction of heart attack risk using linear discriminant analysis methods

Esra Sivari, Selim Sürücü
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Abstract

Aims: The interruption of blood flow to the heart muscle is called a heart attack. During a heart attack, the risk of permanent damage increases with every second the heart tissue cannot receive enough blood. If early and appropriate intervention is not performed, loss of heart tissue occurs. Causes such as smoking, cholesterol, diabetes, high blood pressure, old age, obesity, genetics, and high levels of certain substances produced in the liver are the main risk factors for heart attack. This study aims to predict the risk of heart attack with machine learning methods using a dataset created by considering risk factors. Methods: The performances of three types of Linear Discriminant Analysis classifiers, Normal, Ledoit-Wolf, and Oracle Shrinkage Approximating, were compared on the Cleveland dataset. Results: Normal Linear Discriminant Analysis made the best classification with 83.60% accuracy and performed better than regularized versions. Conclusion: Linear Discriminant Analysis methods are a promising classifier for heart attack prediction and can be applied in hospitals as an objective and automated system that eases specialists' workload and helps reduce diagnostic costs.
用线性判别分析方法预测心脏病发作风险
目的:血液流向心肌的中断被称为心脏病发作。在心脏病发作时,心脏组织无法获得足够的血液,永久性损伤的风险每秒钟都在增加。如果不进行早期和适当的干预,心脏组织的损失就会发生。吸烟、胆固醇、糖尿病、高血压、年老、肥胖、遗传和肝脏产生的某些物质水平过高等原因是心脏病发作的主要危险因素。本研究旨在使用考虑风险因素创建的数据集,通过机器学习方法预测心脏病发作的风险。方法:在Cleveland数据集上比较Normal、Ledoit-Wolf和Oracle收缩近似这三种线性判别分析分类器的性能。结果:正态线性判别分析的分类准确率为83.60%,优于正则化分类。结论:线性判别分析方法是一种很有前景的心脏病发作预测分类方法,可以作为一种客观、自动化的系统在医院中应用,减轻了专家的工作量,有助于降低诊断成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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