Heart Disease Identification Method Using Machine Learning Classification in E-Healthcare

Authors

  • Dodla Narasimha Department of Artificial Intelligence and Machine Learning, Dr K V Subba Reddy Institute of Technology, Kurnool, Andhra Pradesh, India Author
  • Panchangam Nagendra Department of Artificial Intelligence and Machine Learning, Dr K V Subba Reddy Institute of Technology, Kurnool, Andhra Pradesh, India Author
  • Pinjari Chandu Department of Artificial Intelligence and Machine Learning, Dr K V Subba Reddy Institute of Technology, Kurnool, Andhra Pradesh, India Author
  • Sanapa Vinod Kumar Department of Artificial Intelligence and Machine Learning, Dr K V Subba Reddy Institute of Technology, Kurnool, Andhra Pradesh, India Author
  • Dr. K. Pavan Kumar Department of Artificial Intelligence and Machine Learning, Dr K V Subba Reddy Institute of Technology, Kurnool, Andhra Pradesh, India Author

DOI:

https://doi.org/10.32628/IJSRSET2512315

Keywords:

Heart disease prediction Machine learning, Classification algorithms, E-healthcare, Medical data analysis, Predictive modelling, Health informatics

Abstract

Heart disease is one of the complex diseases and globally many people suffered from this disease. On time and efficient identification of heart disease plays a key role in healthcare, particularly in the field of cardiology. In this article, we proposed an efficient and accurate system to diagnosis heart disease and the system is based on machine learning techniques. The system is developed based on classification algorithms includes Support vector machine, Logistic regression, Artificial neural network, K-nearest neighbor, Naïve bays, and Decision tree while standard features selection algorithms have been used such as Relief, Minimal redundancy maximal relevance, Least absolute shrinkage selection operator and Local learning for removing irrelevant and redundant features. We also proposed novel fast conditional mutual information feature selection algorithm to solve feature selection problem. The features selection algorithms are used for features selection to increase the classification accuracy and reduce the execution time of classification system. Furthermore, the leave one subject out cross-validation method has been used for learning the best practices of model assessment and for hyper parameter tuning. The performance measuring metrics are used for assessment of the performances of the classifiers. The performances of the classifiers have been checked on the selected features as selected by features selection algorithms. The experimental results show that the proposed feature selection algorithm (FCMIM) is feasible with classifier support vector machine for designing a high-level intelligent system to identify heart disease. The suggested diagnosis system (FCMIM-SVM) achieved good accuracy as compared to previously proposed methods. Additionally, the proposed system can easily be implemented in healthcare for the identification of heart disease.

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References

Gudadhe, S., & Mishra, D. (2018). Heart disease classification using machine learning techniques: A systematic review. In 2018 2nd International Conference on Computing Methodologies and Communication (ICCMC) (pp. 972-977). IEEE.

Humar, R. S., & Jha, R. K. (2019). Heart disease prediction using machine learning techniques: A systematic review. In 2019 IEEE International Conference on Big Data, Cloud Computing, and Data Science Engineering (BCD). IEEE.

Resul, R., Islam, M. M., & Islam, M. Z. (2020). An ensemble based machine learning approach for heart disease prediction. In 2020 2nd International Conference on Advances in Science, Engineering and Robotics Technology (ICASERT) (pp. 1-5). IEEE.

Akil, M. A., & Mustapha, A. (2018). Heart disease prediction using machine learning algorithms. In 2018 International Conference on Innovative Trends in Communication and Computer Engineering (ITCE) (pp. 114-119). IEEE.

Palaniappan, S., & Awang, R. (2019). A hybrid intelligent system framework for heart disease classification. In 2019 International Conference on Advanced Science and Engineering (ICOASE) (pp. 1-6). IEEE.

Olaniyi, E. O., & Adedeji, O. S. (2018). Heart disease prediction using artificial neural network. In 2018 3rd International Conference on Advanced Research in Engineering Science and Management (ICARESM) (pp. 7-11). IEEE.

Samuel, O. T., & Okonkwo, U. C. (2020). A fuzzy AHP and neural network-based medical decision support system for heart disease diagnosis. In 2020 7th International Conference on Systems and Control (ICSC) (pp. 151-156). IEEE.

Liu, H., & Yuan, Y. (2018). Heart disease classification using relief and rough set techniques. In 2018 International Conference on Artificial Intelligence and Computer Engineering (ICAICE) (pp. 174-179). IEEE.

Mohan, B., & Yadav, S. (2019). Heart disease prediction using hybrid machine learning techniques. In 2019 International Conference on Recent Trends in Electronics, Information & Communication Technology (RTEICT) (pp. 2232-2236). IEEE.

Yashu, F., Saqib, M., Malhotra, S., Mehta, D., Jangid, J., & Dixit, S. (2021). Thread mitigation in cloud native application development. Webology, 18(6), 10160–10161. https://www.webology.org/abstract.php?id=5338s

Geweid, N., &ElBarashy, H. (2018). Heart disease identification using improved SVM based duality optimization technique. In 2018 4th International Conference on Computer and Technology Applications (ICCTA) (pp. 451-456). IEEE..

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Published

09-05-2025

Issue

Section

Research Articles

How to Cite

[1]
Dodla Narasimha, Panchangam Nagendra, Pinjari Chandu, Sanapa Vinod Kumar, and Dr. K. Pavan Kumar, “Heart Disease Identification Method Using Machine Learning Classification in E-Healthcare”, Int J Sci Res Sci Eng Technol, vol. 12, no. 3, pp. 72–78, May 2025, doi: 10.32628/IJSRSET2512315.

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