Heart Disease Prediction under Machine Learning and Association Rules under Neutrosophic Environment

None Ahmed A. El-Douh, None SongFeng Lu, None Ahmed Abdelhafeez, None Ahmed M. Ali, None Alber S. Aziz
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Abstract

Early identification and precise prediction of heart disease have important implications for preventative measures and better patient outcomes since cardiovascular disease is a leading cause of death globally. By analyzing massive amounts of data and seeing patterns that might aid in risk stratification and individualized treatment planning, machine learning algorithms have emerged as valuable tools for heart disease prediction. Predictive modeling is considered for many forms of heart illness, such as coronary artery disease, myocardial infarction, heart failure, arrhythmias, and valvar heart disease. Resource allocation, preventative care planning, workflow optimization, patient involvement, quality improvement, risk-based contracting, and research progress are all discussed as management implications of heart disease prediction. The effective application of machine learning-based cardiac disease prediction models requires collaboration between healthcare organizations, providers, and data scientists. This paper used three tools such as the neutrosophic analytical hierarchy process (AHP) as a feature selection, association rules, and machine learning models to predict heart disease. The neutrosophic AHP method is used to compute the weights of features and select the highest features. The association rules are used to give rules between values in all datasets. Then, we used the neutrosophic AHP as feature selection to select the best feature to input in machine learning models. We used nine machine learning models to predict heart disease. We obtained the random forest (RF) and decision tree (DT) have the highest accuracy with 100%, followed by Bagging, k-nearest neighbors (KNN), and gradient boosting have 99%, 98%, and 97%, then AdaBoosting has 89%, then logistic regression and Naïve Bayes have 84%, then the least accuracy is support vector machine (SVM) has 68%.
基于机器学习的心脏病预测与中性粒细胞环境下的关联规则
由于心血管疾病是全球死亡的主要原因,因此心脏病的早期识别和准确预测对预防措施和改善患者预后具有重要意义。通过分析大量数据并发现可能有助于风险分层和个性化治疗计划的模式,机器学习算法已成为心脏病预测的宝贵工具。预测建模被认为是许多形式的心脏病,如冠状动脉疾病、心肌梗死、心力衰竭、心律失常和瓣膜病。资源分配、预防保健计划、工作流程优化、患者参与、质量改进、基于风险的合同和研究进展都作为心脏病预测的管理意义进行了讨论。基于机器学习的心脏病预测模型的有效应用需要医疗机构、提供者和数据科学家之间的协作。本文使用了三种工具,如中性粒细胞分析层次分析法(AHP)作为特征选择,关联规则和机器学习模型来预测心脏病。采用嗜中性层次分析法计算特征权重,选择最高特征。关联规则用于在所有数据集中的值之间给出规则。然后,我们使用嗜中性AHP作为特征选择,选择最佳特征输入到机器学习模型中。我们使用了9个机器学习模型来预测心脏病。我们得到随机森林(RF)和决策树(DT)的准确率最高,为100%,其次是Bagging、k近邻(KNN)和梯度增强(分别为99%、98%和97%),其次是AdaBoosting(89%),其次是逻辑回归和Naïve贝叶斯(84%),最后是支持向量机(SVM)的准确率最低,为68%。
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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