Scopus Indexed Publications
Paper Details
- Title
-
Cardiovascular Disease Forecast using Machine Learning Paradigms
- Author
-
Saiful Islam,
Mst. Eshita Khatun ,
Nusrat Jahan,
- Email
-
saiful.cse@diu.edu.bd
- Abstract
-
In this recent era, Cardiovascular
disease (CVD) propagation rate has been intensifying the cause of death
worldwide among the non-communicable disease. In particular the south
asian countries have a tremendous risk of cardiovascular disease at an
early age than any other ethnic group. Most often it's challenging for
medical practitioners to predict cardiovascular disease as it requires
experience and knowledge which is a complex task to accomplish. This
health industry has enormous amounts of data which is useful for making
effective conclusions using their hidden information. So, using
appropriate results and making effective decisions on data, some
superior data analysis techniques are used, for example Naive Bayes,
Decision Tree. By using some properties like (age, gender, bp, stress,
etc) it can be predicted the chances of cardiovascular disease. In this
study, we collected 301 sample data with 12 clinical attributes.
Logistic regression, Decision tree, SVM, and Naive bayes classification
algorithms have been applied to predict heart disease. In this case,
logistic regression provided 86.25% accuracy. However, we also compared
the UCI dataset based results with our model.
- Keywords
-
Classification Algorithm, Heart Diseases, Decision Tree, SVM, Logistic Regression, Naive Bayes, UCI dataset
- Journal or Conference Name
- Proceedings of the 4th International Conference on Computing Methodologies and Communication, ICCMC 2020
- Publication Year
-
2020
- Indexing
-
scopus