A Review on Prediction of Heart Disease based on Machine Learning and Datamining Techniques

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Durga Bhavani Adla, Pachipala Yellamma

Abstract

Heart is the important organ in human body which supplies blood to all organs of the body. The abnormal situation of heart is considered as heart disease. According to WHO data cardiovascular, respiratory and neonatal conditions are the top three causes of Deaths in the World. In the year 2019 Heart diseases occupies 16%(9 million) of overall deaths happened in World. From two decades there is 4 times increase in the deaths with heart diseases this is because of change in life style, lack of physical activity, food habits, obesity ,stress, cholesterol ,high blood pressure and diabetes.so there is a need  to work on prediction of heart diseases to save many lives because prediction is the only way to prevent the disease. In this paper we will discuss about existing algorithms and existing work done in different machine learning and datamining techniques, which are concentrated more on the classification and prediction. main objective is to evaluate the performance of these algorithms and identify the most accurate and efficient approach for diagnosing heart diseases.


Some of the machine learning and data mining techniques are Artificial Neural Network(ANN),Decision Tree, Naive Bayes, SVM(Support Vector Machine),k-Nearest Neighbours (KNN),J48,SMO,Random forest and classification Tree.

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How to Cite
Durga Bhavani Adla, et al. (2023). A Review on Prediction of Heart Disease based on Machine Learning and Datamining Techniques. International Journal on Recent and Innovation Trends in Computing and Communication, 11(9), 2597–2602. https://doi.org/10.17762/ijritcc.v11i9.9332
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Articles