Heart Disease Prediction Using Machine Learning Algorithms

Mahammad Sahil Khan, Asst.Prof. Archana Panda
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Abstract

Heart disease is a major issue that has become increasingly prevalent. According to current statistics, heart disease claims the life of one person every minute. In the last several years, one of the hardest problems facing the medical field is predicting heart disease. Reducing the death rate can be achieved with early detection of cardiac disease. Machine learning is the most effective approach to forecasting heart disease. This paper aims to create a lightweight, straightforward solution to detecting cardiac disease using machine learning. Machine learning can aid in heart disease prediction. This study analyzes several machine learning algorithms and performance indicators. This study compares cardiac disease detection methods using a publicly available dataset from the UCI machine learning repository. There are other datasets accessible, including the Switzerland and Cleveland databases. Here the dataset contains 303 patient records and 18 characteristics. The analysis shows that out of six machine learning algorithms, the Random Forest algorithm gives the best result with 94.50%. Keywords- cardiac disease detection, datasets, heart disease prediction, Machine Learning, Random Forest algorithm.
利用机器学习算法预测心脏病
心脏病是一个日益普遍的重大问题。根据目前的统计数据,心脏病每分钟夺走一个人的生命。近几年来,医学界面临的最棘手的问题之一就是预测心脏病。降低死亡率可以通过早期发现心脏病来实现。机器学习是预测心脏病最有效的方法。本文旨在利用机器学习创建一个轻量级、直接的心脏病检测解决方案。机器学习有助于心脏病预测。本研究分析了几种机器学习算法和性能指标。本研究使用 UCI 机器学习资料库中的公开数据集对心脏病检测方法进行了比较。还可以访问其他数据集,包括瑞士和克利夫兰数据库。这里的数据集包含 303 份患者记录和 18 个特征。分析表明,在六种机器学习算法中,随机森林算法的结果最好,达到94.50%。关键词: 心脏病检测、数据集、心脏病预测、机器学习、随机森林算法。
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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