Does a hybrid random forest with a linear model improve the accuracy of cardiovascular disease prediction?
Clinical data for cardiovascular disease prediction
Hybrid random forest with a linear model (HRFLM)
Several known classification techniques
Accuracy in the prediction of cardiovascular disease
A hybrid machine learning model combining random forest and a linear model achieved 88.7% accuracy in predicting cardiovascular disease.
Heart disease is one of the most significant causes of mortality in the world today. Prediction of cardiovascular disease is a critical challenge in the area of clinical data analysis. Machine learning (ML) has been shown to be effective in assisting in making decisions and predictions from the large quantity of data produced by the healthcare industry. We have also seen ML techniques being used in recent developments in different areas of the Internet of Things (IoT). Various studies give only a glimpse into predicting heart disease with ML techniques. In this paper, we propose a novel method that aims at finding significant features by applying machine learning techniques resulting in improving the accuracy in the prediction of cardiovascular disease. The prediction model is introduced with different combinations of features and several known classification techniques. We produce an enhanced performance level with an accuracy level of 88.7% through the prediction model for heart disease with the hybrid random forest with a linear model (HRFLM).
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Senthilkumar Mohan
Chandrasegar Thirumalai
Gautam Srivastava
IEEE Access
SHILAP Revista de lepidopterología
Vellore Institute of Technology University
Brandon University
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Mohan et al. (Tue,) studied this question.
www.synapsesocial.com/papers/69d56c5775589c71d767cda9 — DOI: https://doi.org/10.1109/access.2019.2923707
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