Cardiovascular Syndrome Prediction Using Machine Learning Algorithms
Keywords:
cardiovascular disease, Decision Tree, Data Mining, rpart Random Forest, Linear and Logistic Regressions.Abstract
Cardiovascular disease can be caused by a variety of factors. Researchers can predict cardiovascular infirmity using a variety of methods, regardless of whether a person has the condition or not. The heart disease has been placed via extracting significant qualities and most relevant features using a variety of research methods, such as pulse, cholesterol levels, and other symptoms. The major goal of the study is to use the data to forecast whether the person has a cardiovascular condition. As a result, data mining is employed, which makes it simple to analyse the data collection. Null values and duplicate values are eliminated. The data is subjected to regression analyses utilising decision trees with party and rpart, random forests, linear regression, and logistic regression. The data set is trained and tested using regressions. The regressions are compared, and the outcome for the data set is reliable. All comparisons within the data set are then made using the regression. Therefore, the findings indicate whether or not the individual will eventually develop cardiovascular disease.
Downloads
References
Abdul Saboor, Muhammad Usman, Sikandar Ali, Ali Samad, Muhmmad Faisal Abrar, Najeeb Ullah, "A Method for Improving Prediction of Human Heart Disease Using Machine Learning Algorithms", Mobile Information Systems, vol. 2022, Article ID 1410169, 9 pages, 2022.
Danish Hamid, Syed Sajid Ullah, Jawaid Iqbal, Saddam Hussain, Ch. Anwar ul Hassan, Fazlullah Umar, "A Machine Learning in Binary and Multi classification Results on Imbalanced Heart Disease Data Stream", Journal of Sensors, vol. 2022, Article ID 8400622, 13 pages, 2022.
Farhat Ullah, Xin Chen, Khairan Rajab, Mana Saleh Al Reshan, Asadullah Shaikh, Muhammad Abul Hassan, Muhammad Rizwan, Monika Davidekova, "An Efficient Machine Learning Model Based on Improved Features Selections for Early and Accurate Heart Disease Predication", Computational Intelligence and Neuroscience, vol. 2022, Article ID 1906466, 12 pages, 2022.
K. S. Archana, B. Sivakumar, Ramya Kuppusamy, Yuvaraja Teekaraman, Arun Radhakrishnan, "Automated Cardio ailment Identification and Prevention by Hybrid Machine Learning Models", Computational and Mathematical Methods in Medicine, vol. 2022, Article ID 9797844, 8 pages, 2022.
Kaushalya Dissanayake, Md Gapar Md Johar, "Comparative Study on Heart Disease Prediction Using Feature Selection Techniques on Classification Algorithms", Applied Computational Intelligence and Soft Computing, vol. 2021, Article ID 5581806, 17 pages, 2021.
Amin Ul Haq, Jian Ping Li, Muhammad Hammad Memon, Shah Nazir, Ruinan Sun, "A Hybrid Intelligent System Framework for the Prediction of Heart Disease Using Machine Learning Algorithms", Mobile Information Systems, vol. 2018, Article ID 3860146, 21 pages, 2018. https://doi.org/10.1155/2018/3860146.
Avijit Chaudhuri et.al , “EarlyPrediction of Heart Disease Using the Most Significant Features of Diabetes by Machine Learning Techniques” . drafted on,may-2021, https://www.researchgate.net/publication/351437170_E.
Harshit Jindal et al,” Heart disease predictin using machine learning algorithms”, 2021 IOP Conf. Ser.: Mater. Sci. Eng. 1022 012072 , Doi: 10.1088/1757-899X/1022/1/012072.
Salim S.Virani et.al,” Heart Disease and Stroke Statistics—2021 Update”, published on 27 jan 2021, https://www.ahajournals.org/doi/full/10.1161/CIR.0000000000000950.
K. K. Baseer, S. B. A. Nas, S. Dharani, S. Sravani, P. Yashwanth and P. Jyothirmai, "Medical Diagnosis of Human Heart Diseases with and without Hyperparameter tuning through Machine Learning," 2023 7th International Conference on Computing Methodologies and Communication (ICCMC), Erode, India,2023,pp.1-8,doi: 10.1109/ICCMC56507.2023.10084156.
Adam S. Vaughan, published, Widespread recent increases in county-level heart disease mortality across age groups”. on 27 dec 2017.
Ramal Moone singhe, Muin j Khoury ,published on July 2019 Prevalence and Cardiovascular Health Impact of Family History of Premature Heart Disease in the United States: Analysis of the National Health and Nutrition Examination Survey, 2007–2014.
Mohammad Monirujjaman Khan ,Supervised Machine Learning-Based Cardiovascular Disease Analysis and Prediction, published on 10 dec 2021.
K. K. Baseer, Dr M Jahir Pasha, Telkapalli Murali Krishna, Jeribanda Mohan Kumar, Silpa C, “COVID-19 Patient Count Prediction using Classification Algorithm”, International Journal of Early Childhood Special Education (INT-JECSE), DOI:10.9756/INTJECSE/V14I7.7 ISSN: 1308-5581 Vol 14, Issue 07, 2022.
Vijeta Sharma; ShrinkhalaYadav; Manjari Gupta, “Heart Disease Prediction using Machine learning Techniques“, published on 01 march 2021 https://ieeexplore.ieee.org/document/9362842.
vineet Sharma; Akhtar Rasool; Gaurav Hajela; “Prediction of Heart disease using DNN”, published on 01-september-2020. https://ieeexplore.ieee.org/document/9182991.
Manmohan Singh et.al, “A Drug-Target Interaction Prediction Based on Supervised Probabilistic Classification”, Journal of Computer Science, 19(10), 1203-1211.Sep-2023, https://doi.org/10.3844/jcssp.2023.1203.1211.
Abdul Saboor; Muhammad Usman; Sikandar Ali, Method for Improving Prediction of Human Heart Disease Using Machine Learning Algorithms. published on march 2022.
Silpa C, Dr. S Srinivasa Chakravarthi, Jagadeesh kumar G, Dr. K.K. Baseer, E. Sandhya, “Health Monitoring System Using IoT Sensors”, Journal of Algebraic Statistics, Volume 13, No. 3, June, 2022, p. 3051-3056, ISSN: 1309-3452.
Downloads
Published
How to Cite
Issue
Section
License
This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.
All papers should be submitted electronically. All submitted manuscripts must be original work that is not under submission at another journal or under consideration for publication in another form, such as a monograph or chapter of a book. Authors of submitted papers are obligated not to submit their paper for publication elsewhere until an editorial decision is rendered on their submission. Further, authors of accepted papers are prohibited from publishing the results in other publications that appear before the paper is published in the Journal unless they receive approval for doing so from the Editor-In-Chief.
IJISAE open access articles are licensed under a Creative Commons Attribution-ShareAlike 4.0 International License. This license lets the audience to give appropriate credit, provide a link to the license, and indicate if changes were made and if they remix, transform, or build upon the material, they must distribute contributions under the same license as the original.