A NOVEL CORONARY HEART STROKE PREDICTION SYSTEM USING MACHINE LEARNING TECHNIQUES

Main Article Content

Dr. A. BALAJI
CHIGURUPATI BHARGAVI
MAKKENA VASAVI

Abstract

Over the past few decades, cardiovascular diseases have surpassed all other causes of death as the main killers in industrialised, underdeveloped, and developing nations. Early detection of heart conditions and clinical care can lower the death rate. Based on the patient's various cardiac features, we proposed a model for forecasting heart disease and identifying impending heart disease using machine learning techniques In most cases,input is received through numerical data of various parameters, and output findings are generated in real-time, predicting whether or notthe patient has a disease. We'll use a variety of supervised machine learning methods before deciding which one is best for the model. Existing systems rely on classical deep learning models, which are inefficient and imprecise. They aren't as accurate as the proposed model and take a little longer to process.

Downloads

Download data is not yet available.

Metrics

Metrics Loading ...

Article Details

How to Cite
BALAJI, D. A. ., BHARGAVI, C. ., & VASAVI, M. (2024). A NOVEL CORONARY HEART STROKE PREDICTION SYSTEM USING MACHINE LEARNING TECHNIQUES. Turkish Journal of Computer and Mathematics Education (TURCOMAT), 15(1), 91–95. https://doi.org/10.61841/turcomat.v15i1.14545
Section
Articles

References

Fahd SalehAlotaibi, ˆa Implementation of Machine Learning Model to Predict Heart Failure Diseaseˆa International

Journal of Advanced Computer Science and Applications(IJACSA), 10(6), 2019.

http://dx.doi.org/10.14569/IJACSA.2019.0100637 [2] J. Thomas and R. T. Princy, ”Human heart disease prediction

system using datamining techniques,” 2016 International Conference on Circuit, Power and Computing Technologies

(ICCPCT), 2016, pp. 1-5, doi: 10.1109/ICCPCT.2016.7530265.

J. Thomas and R. T. Princy, ”Human heart disease prediction system using datamining techniques,” 2016

International Conference on Circuit, Power and Computing Technologies (ICCPCT), 2016, pp. 1-5, doi:

1109/ICCPCT.2016.7530265.

Rajdhan, ApurbAgarwal, AviSai, Milan Ghuli, Poonam. (2020). Heart Disease Prediction using Machine

Learning.International Journal of Engineering Research and. V9.10.17577/IJERTV9IS040614.

Suthaharan, S. (2016). Support vector machine. In Machine learning models and algorithms for big data classification

(pp. 207-235).Springer, Boston, MA.

Jiang, L., Cai, Z., Wang, D., Jiang, S. (2007, August). Survey of improving k- nearest-neighbor for classification.In

Fourth international conference on fuzzy systems and knowledge discovery (FSKD 2007) (Vol. 1, pp. 679-683).IEEE.

Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W., ... Liu, T. Y. (2017). Lightgbm: A highly efficient

gradient boosting decision tree. Advances in neural information processing systems, 30, 3146-3154.

Selent, D. (2010). Advanced encryption standard.Rivier Academic Journal, 6(2), 1-14. [9] Yegnanarayana, B.

(2009). Artificial neural networks. PHI Learning Pvt. Ltd.

Amin-Naji, M., Aghagolzadeh, A., Ezoji, M. (2019). CNNs hard voting for multi-focus image fusion. Journal of

Ambient Intelligence and Humanized Computing, 1-21.

Nuttall, F. Q. (2015). Body mass index: obesity, BMI, and health: a critical review. Nutrition today, 50(3), 117.

Zheng, A., Casari, A. (2018). Feature engineering for machine learning:principles and techniques for data

scientists. ” O’Reilly Media, Inc.”.

Cai, J., Luo, J., Wang, S., Yang, S. (2018). Feature selection in machine learning: A new perspective.

Neurocomputing, 300, 70-79.