Machine Learning Models for Cardiovascular Disease Prediction: A Comparative Study
Chao Yan,
Yiluan Xing,
Sensen Liu
et al.
Abstract:Cardiovascular diseases (CVDs) pose a significant threat to global public health, affecting individuals across various age groups. Factors such as cholesterol levels, smoking, alcohol consumption, and physical inactivity contribute to their onset and progression. Enhancing our understanding of CVD etiology and informing targeted interventions for disease prevention and management remains a critical challenge. In this study, we address the task of predicting the likelihood of individuals developing CVDs using m… Show more
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