https://www.kaggle.com/code/dvaser/heart-attact-analysis-prediction/
- EDA
- Missing Value Analysis
- Categoric and Numeric Features
- Standardization
- Box - Swarm - Cat - Correlation
- Outlier Detection
- ML Modelling and Tuning Machine Learning Model
- A heart attact, also called a myocardial infarction, happens when a part of the heart muscle doesn't get enough blood.
- The more time that passes without treatment to restore blood flow, the greater the damage to the heart muscle.
- Coronary artery disease (CAD) is the main cause of heart attack.
- Python Libraries
- Data Content
- Read & Analyse Data
- Missing Value Analysis
- Unique Value Analysis
- Categorical Feature Analysis
- Numeric Feature Analysis
- Standardization
- Box Plot Analysis
- Swarm Plot Analysis
- Cat Plot Analysis
- Correlation Analysis
- Outlier Detection
- Modelling
- Conclusion
- Age : Age of the patient
- Sex : Sex of the patient
- exang: exercise induced angina (1 = yes; 0 = no)
- ca: number of major vessels (0-3)
- cp : Chest Pain type chest pain type
- Value 1: typical angina
- Value 2: atypical angina
- Value 3: non-anginal pain
- Value 4: asymptomatic
- trtbps : resting blood pressure (in mm Hg)
- chol : cholestoral in mg/dl fetched via BMI sensor
- fbs : (fasting blood sugar > 120 mg/dl) (1 = true; 0 = false)
- rest_ecg : resting electrocardiographic results
- Value 0: normal
- Value 1: having ST-T wave abnormality (T wave inversions and/or ST elevation or depression of > 0.05 mV)
- Value 2: showing probable or definite left ventricular hypertrophy by Estes' criteria
- thalach : maximum heart rate achieved
- target : 0= less chance of heart attack 1= more chance of heart attack