IronHack Machine Learning Project by team Google Brain ( Jussara Gaspar, Rodrigo Quintiliano and Sana Aarsman)
Our goal was to explore whether machine learning can help identify patients at risk earlier, while also considering diagnostic cost and accessibility. We analyzed a heart disease dataset and developed several models to test how well different types of clinical information can predict heart disease. To demonstrate a potential real-world application, we also built a Streamlit app that allows users to estimate heart disease risk based on the model.
Presentation link:
Age: age of the patient [years] Sex: sex of the patient [M: Male, F: Female] ChestPainType: chest pain type [TA: Typical Angina, ATA: Atypical Angina, NAP: Non-Anginal Pain, ASY: Asymptomatic] RestingBP: resting blood pressure [mm Hg] Cholesterol: serum cholesterol [mm/dl] FastingBS: fasting blood sugar [1: if FastingBS > 120 mg/dl, 0: otherwise] RestingECG: resting electrocardiogram results [Normal: Normal, ST: having ST-T wave abnormality (T wave inversions and/or ST elevation or depression of > 0.05 mV), LVH: showing probable or definite left ventricular hypertrophy by Estes' criteria] MaxHR: maximum heart rate achieved [Numeric value between 60 and 202] ExerciseAngina: exercise-induced angina [Y: Yes, N: No] Oldpeak: oldpeak = ST [Numeric value measured in depression] ST_Slope: the slope of the peak exercise ST segment [Up: upsloping, Flat: flat, Down: downsloping] HeartDisease: output class [1: heart disease, 0: Normal]