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Perform a survival analysis based on the time-to-event (death event) for the subjects. Compare machine learning models to assess the likelihood of a death by heart failure condition. This can be used to help hospitals in assessing the severity of patients with cardiovascular diseases and heart failure condition.
An interactive Power BI dashboard analyzing a heart disease dataset to uncover key patterns and risk factors. Using Power Query for data transformation and Power BI for visualization, this project explores how features like sex, age, chest pain type, and ST segment slope correlate with heart disease outcomes.
We have to predict a person death event using some features:- - Age ,Gender , blood pressure, smoke, diabetes,ejection fraction, creatinine phosphokinase, serum_creatinine, serum_sodium, time
Leveraging machine learning techniques to predict the likelihood of heart failure in patients based on a comprehensive dataset of patient information sourced from Kaggle.