FEATURE-BASED IMPLEMENTATION OF MACHINE LEARNING ALGORITHMS FOR CARDIOVASCULAR DISEASE PREDICTION

Authors:

H. Singh,R. Tripathy,P. Kumar Sarangi,U. Giri,S. Kumar Mohapatra,N. Rameshbhai Amin,

DOI NO:

https://doi.org/10.26782/jmcms.2024.11.00008

Keywords:

Cardiovascular Disease,Decision Tree,KNN,ML Algorithms,SVM,Naïve Bayes,Random Forest,Logistic Regression,

Abstract

In eukaryotic organisms, each and every organ takes a major role in ensuring the seamless functioning of the entire system. If we consider about heart then it is treated as a vital part of every human being. Heart-associated ailments are very frequent at present so it is essential to predict such illnesses. This prognosis and prediction of coronary heart-associated illnesses require a lot of accuracy so it must be finished in an environment-friendly manner due to the fact a small mistake can motivate the death of the person. To deal with this hassle there ought to be a gadget which can predict and create consciousness about diseases. It is challenging to decide the ailment manually primarily based on signs and hazard factors. But this ought to be solved with the use of Machine mastering techniques. Artificial brain (AI) in the shape of desktop studying (ML) allows software program purposes to predict results greater precisely whilst functioning unbiased of human input. This study employs various machine learning algorithms, including K-Nearest Neighbors, Support Vector Machine, Logistic Regression, Random Forest, Decision Tree, and Naïve Bayes, to assess their accuracy in predicting cardiovascular disease and related conditions This paper makes use of the UCI repository dataset for coaching and testing including some basic parameters such as age and sex. After applying all algorithms to our data set, the experimental results concluded that the Logistic Regression model has predicted well with highest accuracy of 92% in comparison with other algorithms.

Refference:

I. Kaur, B., Kaur, G., Heart Disease Prediction Using Modified Machine Learning Algorithm. International Conference on Innovative Computing and Communications. Lecture Notes in Networks and Systems, vol 473. Springer, Singapore. (2023)
II. V. Rawat, K. Gulati, U. Kaur, J.K Seth, V. Solanki, A.N. Venkatesh, D.P. Singh, N. Singh, M. Loganathan, “A Supervised Learning Identification System for Prognosis of Breast Cancer”, Mathematical Problems in Engineering, vol. 2022, Article ID 7459455, 8 pages, 2022.
III. WHO Data – https://www.who.int/health-topics/cardiovascular-diseases#tab=tab_1
IV. Heart Disease Dataset – https://www.kaggle.com/c/heart-disease dated: Sept 2018
V. J. Patel, Tejal Upadhyay, D., and S. Patel, “Predicting heart condition using machine learning and data mining techniques”. (2015)
VI. Soni, J., Ansari, U., Sharma, D., & Soni, S. “Intelligent and effective heart disease prediction system using weighted associative classifiers”. International Journal on Computer Science and Engineering. (2011)
VII. Y. E. Shao, C.-D. Hou, and C.-C. Chiu, “Hybrid intelligent modelling, schemes for heart disease classification,” Applied Soft Computing, vol. 14, pp. (2014).
VIII. V. Chauraisa and S. Pal, “Data Mining Approach to Detect Heart Diseases,” International Journal of Advanced Computer Science and Information Technology (IJACSIT), (2013).
IX. Mrs. G. Subba lakshmi “Decision Support in Heart Disease Prediction System using Naive Bayes”, Indian Journal of Computer Science and Engineering (IJCSE) (2011)
X. Sonam Nikhar, and A. M. Karandikar. “Prediction of Heart Disease Using Machine Learning Algorithms.” International Journal of Advanced Engineering, Management and Science, vol. 2, no. 6, Jun. 2016.
XI. PE Rubini, Dr.C.A. Subasini, A. Vanitha Katharine, V. Kumaresan, S. Gowdham Kumar, T.M. Nithya. “A Cardiovascular Disease Prediction using Machine Learning Algorithms” Annals of R.S.C.B. (2021)
XII. 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, (2018).
XIII. Syed Nawaz Pasha, Dadi Ramesh, Sallauddin Mohmmad, A. Harshavardhan and Shabana “cardiovascular disease prediction using deep learning techniques” IOP Conf. Series: Materials Science and Engineering (2020)
XIV. Abhijeet Jagtap, Priya Malewadkar, Omkar Baswat, Harshali Rambade “Heart Disease Prediction Using Machine Learning” International Journal of Research in Engineering, Science and Management (2019)
XV. Rohit Bharti, Aditya Khamparia, Mohammad Shabaz, Gaurav Dhiman, Sagar Pande, Parneet Singh, “Prediction of Heart Disease Using a Combination of Machine Learning and Deep Learning”, Computational Intelligence and Neuroscience (2021).
XVI. Bhavesh Dhande, Kartik Bamble, Sahil Chavan, Tabassum Maktum “Diabetes & Heart Disease Prediction” ITM Web of Conferences ICACC-(2022)

View Download