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A Survey: Detection of Heart-Related Disorders Using Machine Learning Approaches

Communications in Computer and Information Science, ISSN: 1865-0937, Vol: 2050 CCIS, Page: 178-188
2024
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Conference Paper Description

Heart-related illnesses often known as CVDs (cardiovascular diseases) seem to be the leading cause of mortality globally in recent years. Consequently, a precise, workable, and trustworthy technique is necessary to recognize this disorder before time and begin the suitable treatment course. In this automated analysis of vast and complex health datasets, numerous machine learning methods are employed to scrutinize the information. Various machine learning techniques that have been developed by researchers are now being used by healthcare professionals to aid in the detection of heart-related disorders. Proposed study examines several models based on different methodological approaches, assessing the functionality of each. The Naive-Bayes model, SVM model (Support Vector Machines model), KNN model (K-Nearest Neighbor Model), DT model (Decision Trees Model), Ensemble models, and Supervised learning techniques based on RF model (Random Forest Model) are highly favored by researchers.

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