Ensemble Learning for Heart Disease Diagnosis: AVoting Classifier Approach

Yogesh S, Paneer Thanu Swaroop C, Ruba Soundar K
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Abstract

Cardiovascular disease remains a serious public health problem internationally, responsible for a considerable number of fatalities. Early and correct detection of cardiovascular illness is crucial for optimal care and control of the condition. In this paper, we present an ensemble learning technique that includes voting classifiers to increase the reliability of cardiovascular disease diagnosis. We obtained a set of data from five cardiology databases, which included the Cleveland, Hungary, Switzerland, Long Beach VA and Statlog (Heart) datasets, which supplied us with a total of 1189 entries. We employed a feature engineering approach to extract relevant features from the dataset, enabling us to acquire vital information to enhance our model's performance. We trained and evaluated several machine learning algorithms, such as Random Forests, MLP, K-Nearest Neighbors, Extra Trees, XGBoost, Support Vector Machines, AdaBoost, Decision Trees, Linear Discriminant Analysis, and Gradient Boosting, and then incorporated these models using voting classifiers to produce more reliable and accurate models. Our findings reveal that the proposed ensemble learning process outperforms standalone models and conventional ensemble approaches, obtaining an accuracy rate of 91.4%. Our technique is likely to benefit clinicians in the early diagnosis of heart problems and improve patient outcomes. This work has major significance for the area of cardiology, indicating the possibility for machine learning approaches to boost both the reliability and accuracy of heart disease identification. The recommended ensemble learning technique may be adopted in hospitals to enhance patient care and eventually lessen the worldwide impact of cardiovascular disease. Further study is required to investigate the uses of predictive modeling in cardiology and other medical domains.
心脏病诊断的集合学习:AVoting 分类器方法
心血管疾病仍然是国际上一个严重的公共卫生问题,造成了大量死亡。早期正确检测心血管疾病对于优化治疗和控制病情至关重要。在本文中,我们提出了一种包含投票分类器的集合学习技术,以提高心血管疾病诊断的可靠性。我们从克利夫兰、匈牙利、瑞士、长滩 VA 和 Statlog (Heart) 五个心脏病学数据库中获取了一组数据,共提供了 1189 个条目。我们采用了特征工程方法从数据集中提取相关特征,从而获得了提高模型性能的重要信息。我们训练并评估了几种机器学习算法,如随机森林、MLP、K-近邻、额外树、XGBoost、支持向量机、AdaBoost、决策树、线性判别分析和梯度提升,然后将这些模型与投票分类器相结合,以生成更可靠、更准确的模型。我们的研究结果表明,提议的集合学习过程优于独立模型和传统集合方法,准确率达到 91.4%。我们的技术可能有利于临床医生早期诊断心脏问题,并改善患者的预后。这项工作对心脏病学领域具有重大意义,表明机器学习方法有可能提高心脏病识别的可靠性和准确性。医院可采用推荐的集合学习技术来加强对病人的护理,最终减轻心血管疾病对全世界的影响。还需要进一步研究预测建模在心脏病学和其他医学领域的应用。
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