Author : Sadiyamole P A 1
Date of Publication :6th August 2022
Abstract: Heart disease is one of the critical reasons behind the majority of the human loss.Heart failure has proven as the major health issue in both men and women.This causes human life very dreadful.Diagnosing heart issues in advance is a tedious task as it requires enormous amount of clinical tests.Data mining techniques like machine learning and deep learning have proven to be fruitful in making decisions and diagnose various diseases in advance.In this paper,various machine learning techniques have been used along with stacking ensemble method that focus to improve the prediction of heart failure.The accuracy of diagnosis is very important in the case of heart disease.Due to the inadequacy of prediction and diagnosis, traditional approaches fail to discover various heart failures. Health care organizations collect heart data sets which can be used to apply machine learning models for prognosis.
Reference :
-
- C.A.Devi,S.P.Rajamhoana, K.Umamaheswari , R. Kiruba, K. Karunya, and R. Deepika, „„Analysis of neural networks based heart disease prediction system,‟‟ in Proc. 11th Int. Conf. Hum. Syst. Interact. (HSI), Gdansk, Poland, (2018), pp. 233– 239.
- V. Kirubha1 , S. Manju Priya-Comparison of Classification Algorithms in Lung Cancer Risk Factor Analysis-International Journal of Science and Research (IJSR) ISSN (Online): 2319-7064
- Abed Mohammed, Mazin Khanapi Abd Ghani, Mohd Mostafa, Salama Taha Al-Dhief, FahadIbrahim Obaid, Omar Mostafa, Salama A Taha AL-Dhief, Fahad-“Evaluating the Performance of Machine Learning Techniques in the Classification of Wisconsin Breast Cancer” -Article in International Journal of Engineering and Technology:V7-P 160-166(2018).
- Mohan, SenthilkumarThirumalai, Chandrasegar Srivastava, Gautam-Effective heart disease prediction using hybrid machine learning techniques-IEEE Access Volume 7-Pages-81542-81554 (2019)
- Sharma, Sumit Parmar, Mahesh-Heart Diseases Prediction using Deep Learning Neural Network Model-International Journal of Innovative Technology and Exploring Engineering-Volume 9,Issue 3,Pages- 2244-2248(2020)
- Sharma, Vijeta Yadav, Shrinkhala Gupta, Manjari-Heart Disease Prediction using Machine Learning Techniques-Proceedings - IEEE 2nd International Conference on Advances in Computing, Communication Control and Networking, ICACCCN 2020-Volume 29,Issue 3 pages-177-181
- Fredrick David, Benjamin H Benjamin Fredrick David, H Antony Belcy, S- HEART DISEASE PREDICTION USING DATA MINING TECHNIQUES Content Based Image
- R. Indrakumari, T. Poongodi, Soumya Ranjan Jena- Heart Disease Prediction using Exploratory Data Analysis- Procedia Computer Science,Volume 173,Issue C,Pages-130-139(2020)
- Basma Saleh *, Ahmed Saeidi, Ali al-Aqbi, Lamees Salman - MEDICAL REVIEWS Analysis of Weka Data Mining Techniques for Heart Disease Prediction System- Int J Med Rev,Volume 7,Issue 1,Pages 15-24(2020
- Krishnani, Divya Kumari, Anjali Dewangan, Akash Singh, Aditya Naik, Nenavath Srinivas- Prediction of Coronary Heart Disease using Supervised Machine Learning AlgorithmsEEE Region 10 Annual International Conference, Proceedings/TENCON,Volume October,Pages:367-372 (2019)
- Wolpert, David H.- Stacked generalization-Neural Networks,Volume 5-Issue 2-Pages-241-259.
- Detrano R, Salcedo EE, Hobbs RE, Yiannikas J. Cardiac cinefluoroscopy as an inexpensive aid in the diagnosis of coronary artery disease. Am J Cardiol 1986;57 (13):1041–6.
- Detrano R, Janosi A, Steinbrunn W, Pfisterer M, Schmid JJ, Sandhu S, et al. International application of a new probability algorithm for the diagnosis of coronary artery disease. Am J Cardiol 1989;64(5):304–10.
- Gokulnath Chandra Babu1 , S. P. Shantharajah, Optimal body mass index cutoff point for cardiovascular disease and high blood pressure, Neural Computing and Applications
- Fida, Benish Nazir, Muhammad Naveed, Nawazish Akram, Sheeraz-Proceedings of the 14th IEEE International Multitopic Conference 2011, INMIC 2011-Pages19-24.
- Singh, Mayank Gupta, P.K. Tyagi, Vipin Flusser, Jan Oren, Tuncer-Advances in Computing and Data Sciences: Third International Conference-Volume 2, Pages752(2019)