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Efficient Prediction of Cardiovascular Disease Using Machine Learning Algorithms with Relief and LASSO Feature Selection Techniques

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dc.contributor.author Ghosh, Pronab
dc.contributor.author Azam, Sami
dc.contributor.author Jonkman, Mirjam
dc.contributor.author Karim, Asif
dc.contributor.author Shamrat, F. M. Javed Mehedi
dc.contributor.author Ignatious, Eva
dc.contributor.author Shultana, Shahana
dc.date.accessioned 2021-07-10T08:18:47Z
dc.date.available 2021-07-10T08:18:47Z
dc.date.issued 2021-01-22
dc.identifier.uri http://dspace.daffodilvarsity.edu.bd:8080/handle/123456789/5873
dc.description.abstract Cardiovascular diseases (CVD) are among the most common serious illnesses affecting human health. CVDs may be prevented or mitigated by early diagnosis, and this may reduce mortality rates. Identifying risk factors using machine learning models is a promising approach. We would like to propose a model that incorporates different methods to achieve effective prediction of heart disease. For our proposed model to be successful, we have used efficient Data Collection, Data Pre-processing and Data Transformation methods to create accurate information for the training model. We have used a combined dataset (Cleveland, Long Beach VA, Switzerland, Hungarian and Stat log). Suitable features are selected by using the Relief, and Least Absolute Shrinkage and Selection Operator (LASSO) techniques. New hybrid classifiers like Decision Tree Bagging Method (DTBM), Random Forest Bagging Method (RFBM), K-Nearest Neighbors Bagging Method (KNNBM), AdaBoost Boosting Method (ABBM), and Gradient Boosting Boosting Method (GBBM) are developed by integrating the traditional classifiers with bagging and boosting methods, which are used in the training process. We have also instrumented some machine learning algorithms to calculate the Accuracy (ACC), Sensitivity (SEN), Error Rate, Precision (PRE) and F1 Score (F1) of our model, along with the Negative Predictive Value (NPR), False Positive Rate (FPR), and False Negative Rate (FNR). The results are shown separately to provide comparisons. Based on the result analysis, we can conclude that our proposed model produced the highest accuracy while using RFBM and Relief feature selection methods (99.05%). en_US
dc.language.iso en_US en_US
dc.publisher IEEE en_US
dc.subject Heart en_US
dc.subject Predictive models en_US
dc.subject Boosting en_US
dc.subject Support vector machines en_US
dc.subject Classification algorithms en_US
dc.title Efficient Prediction of Cardiovascular Disease Using Machine Learning Algorithms with Relief and LASSO Feature Selection Techniques en_US
dc.type Article en_US


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