


Volume 20 No 12 (2022)
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ANALYSIS AND PREDICTION OF CARDIO VASCULAR DISEASE
MUNTHA SUPRIYA VANI, KAMBHAM SALIVAHANA REDDY
Abstract
Cardio Vascular Disease (CVD) is, for the most part, alluding to conditions that include limited or blocked
veins that can prompt a heart attack, chest torment (angina) or stroke. The machine learning classifier
predicts the ailment dependent on the state of the side effect endured by the patient. This paper
intends to look at the presentation of the Machine learning tree classifiers in anticipating Cardio
Vascular Disease (CVD). Machine learning tree classifiers, for example, Random Forest, Decision Tree,
Logistic Regression, Support vector machine (SVM), K-nearest neighbors (KNN) were broke down
dependent on their precision and AUC ROC scores. In this investigation of foreseeing Cardiovascular
Disease, the Random woodland Machine learning classifier accomplished a higher precision of 85%, ROC
AUC score of 0.8675 and execution time of 1.09 sec.
Keywords
SVM, KNN, CVD, ROC, AUC
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