Course Instructor: Dr. Richa Singh
The World Health Organization (WHO) identifies strokes as the second leading cause of death globally. A stroke happens when a person’s blood supply to their brain is interrupted or reduced, causing brain cells to die within minutes. It prevents the brain tissue from getting the oxygen and nutrients that it needs and is responsible for approximately 11% of total deaths.
The objective is to examine the use of various machine learning classification models on the given dataset that can aid in identifying the chance of stroke. The project aims at classifying the stroke based on the input parameters like gender, age, various diseases, and smoking status. Since, the project is related to medical domain multiple models were trained and their performance was compared considering the sensitivity, accuracy, as well as specificity scores.
- Scikit-learn - ML library used
- Pandas - Python Data Manipulation library used
- Seaborn - Data Visualization library used
- NumPy - Numerical Python library used
- Matplotlib - Data Visualization library used
- Imblearn - ML library used
Name | Year | Branch |
---|---|---|
Dev Goel | Sophomore | CSE |
Ravi Ramavat | Sophomore | CSE |
Sarvesh Kulkarni | Sophomore | EE |