Abstract:
A condition of the heart or blood vessels is referred to as cardiovascular disease (CVD).
Globally, cardiovascular diseases (CVDs) constitute the primary cause of mortality.
Coronary heart disease is among the most frequent cardiovascular conditions. Additional
examples of coronary heart disease include aortic disease, peripheral artery disease,
strokes, and decreased or obstructed blood supply to the heart muscle. Another important
fact regarding cardiovascular disorders is that they are typically linked to an
accumulation of fatty deposits within the arteries and a heightened risk of blood clots. In
this work, I developed a cardiovascular disease prediction model using machine learning
techniques, with accuracy rates of 92.62% and 89.05%, respectively, for the Stacking
Classifier and k-Nearest Neighbors algorithms. This models are performed particularly
well and demonstrating the potential utility of machine learning as a tool for
cardiovascular disease. In addition to Random Forest and Decision Tree and I evaluated
several other algorithms, including Support Vector Machine and Logistic Regression and
an ensemble model using Voting Classifier. Here Support Vector Machine does not
provide very good accuracy. Our findings show that Stacking Classifiers, KNN, machine
learning have the potential to predict cardiovascular disease and imply that these
technologies may prove beneficial in enhancing the disease's detection and management.