(Publisher of Peer Reviewed Open Access Journals)

International Journal of Advanced Computer Research (IJACR)

ISSN (Print):2249-7277    ISSN (Online):2277-7970
Volume-12 Issue-58 January-2022
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Paper Title : A review and methodological analysis of cardiovascular disease prediction and detection
Author Name : Bhavana Jauhari, Animesh Dubey and Mohd Zuber
Abstract :

According to the world health organization (WHO) cardiovascular diseases (CVDs) are the leading cause of death globally. This paper examines and explores different methodological contribution in the detection and prediction of CVDs. This paper mainly covers the ways of applicability of the approaches, domain of applicability, results, advantages, challenges and limitations. It also investigated the datasets from different repository. The exploration clearly discusses the major challenges along with the suggestive measures. The results indicate the combination of approaches and it may vary according to the symptoms and its nature.

Keywords : CVD, SVM, DT, LR, KNN.
Cite this article : Jauhari B, Dubey A, Zuber M. A review and methodological analysis of cardiovascular disease prediction and detection. International Journal of Advanced Computer Research. 2022; 12(58):1-11. DOI:10.19101/IJACR.2021.1152057.
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