Prediction of Cardiovascular Disease on Self-Augmented Datasets of Heart Patients Using Multiple Machine Learning Models

Author:

Ahmed Sumaira1ORCID,Shaikh Salahuddin1,Ikram Farwa2,Fayaz Muhammad3ORCID,Alwageed Hathal Salamah4ORCID,Khan Faheem5,Jaskani Fawwad Hassan6

Affiliation:

1. Centre of Computing Research, Department of Computer Science and Software Engineering, Jinnah University for Women, Karachi 74600, Pakistan

2. Department of Computer Engineering, University of Lahore, Pakistan

3. Department of Computer Science, University of Central Asia, Naryn, Kyrgyzstan

4. College of Computer and Information Science, Jouf University, Saudi Arabia

5. Gachon University, Department of Computer Engineering, Republic of Korea

6. Department of Computer Systems Engineering, Islamia University of Bahawalpur, Bahawalpur 63100, Pakistan

Abstract

About 26 million people worldwide experience its effects each year. Both cardiologists and surgeons have a tough time determining when heart failure will occur. Classification and prediction models applied to medical data allow for enhanced insight. Improved heart failure projection is a major goal of the research team using the heart disease dataset. The probability of heart failure is predicted using data mined from a medical database and processed by machine learning methods. It has been shown, through the use of this study and a comparative analysis, that heart disease may be predicted with high precision. In this study, researchers developed a machine learning model to improve the accuracy with which diseases like heart failure (HF) may be predicted. To rank the accuracy of linear models, we find that logistic regression (82.76 percent), SVM (67.24 percent), KNN (60.34 percent), GNB (79.31 percent), and MNB (72.41) perform best. These models are all examples of ensemble learning, with the most accurate being ET (70.31%), RF (87.03%), and GBC (86.21%). DT (ensemble learning models) achieves the highest degree of precision. CatBoost outperforms LGBM, HGBC, and XGB, all of which achieve 84.48% accuracy or better, while XGB achieves 84.48% accuracy using a gradient-based gradient method (GBG). LGBM has the highest accuracy rate (86.21 percent) (hypertuned ensemble learning models). A statistical analysis of all available algorithms found that CatBoost, random forests, and gradient boosting provided the most reliable results for predicting future heart attacks.

Publisher

Hindawi Limited

Subject

Electrical and Electronic Engineering,Instrumentation,Control and Systems Engineering

Cited by 12 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Domain adaptation of transformer-based neural network model for clinical note classification in Indian healthcare;International Journal of Information Technology;2024-08-06

2. Heart Disease Detection Model Using Support Vector Machine with Feature Selection;2024 2nd International Conference on Advancement in Computation & Computer Technologies (InCACCT);2024-05-02

3. Strategic Machine Learning Optimization for Cardiovascular Disease Prediction and High-Risk Patient Identification;Algorithms;2024-04-26

4. Cardiovascular Disease Prediction using Boosting Algorithms;2024 3rd International Conference for Innovation in Technology (INOCON);2024-03-01

5. A Multifactorial Approach to Explain Risk Features for Predicting Survival Rate of Heart Failure;The 6th International Conference on Wireless, Intelligent and Distributed Environment for Communication;2023-12-21

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