Farzane Ezzati

PhD Candidate and Research Assistant



Industrial and Systems Engieering

University of Houston

Engineering Building 1, N393A



(2023) ML Classification for Cardiovascular Risk Prediction


As part of a course project (Engineering Analytics), I implemented machine learning classifiers (Random Forest, Support Vector Classifier, Logistic Regression, Linear Discriminant Analysis) to predict cardiovascular disease using medical patinet data. The model achieved 72% accuracy on gender-specific classes, addressing fairness and bias considerations in prediction. 
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