As part of our MINI Project, our team created a disease prediction website which predicts 6 diseases as per the information entered or provided by the user
Presentation : https://drive.google.com/file/d/1OmMfwq-APNHQKwyEkk06l9PbLyEVzHT0/view?usp=sharing
Our web app aims to predict whether the user has a certain disease or not. The prediction will be done on the basis of general questions asked in the form of multiple-choice questions. Some models will also be based on the X-ray and scan images provided by the users. The user can choose among 6 diseases and on choosing a certain disease general information about that disease and informative facts are provided to the user.
- Front End: HTML, CSS, Bootstrap, JavaScript
- Back End: Flask
- ML models: Python libraries like TensorFlow, random forest, logistic regression
Our ML MODELS
- Lung Cancer : XGBoost 93%
- Diabetes : Random Forest 80%
- Heart Diseases : Random Forest 88%
- Urinary Inflammation : Logistic Regression 100%
- Alzheimer's : InceptionV3 and Transfer learning 79%
- Tuberculosis : InceptionV3 and Transfer learning 94%
Average Accuracy : 89-90%
Sr No. | Name | Roll No. | |
---|---|---|---|
1. | Varshaah Karkala | varshaah.k@somaiya.edu | 16010120193 |
2. | Shruti Tyagi | shruti.tyagi@somaiya.edu | 16010120202 |
3. | Ridhiman Dhariwal | ridhiman.dhariwal@somaiya.edu | 16010120190 |
4. | Pyanshi Jain | pyanshi.jain@somaiya.edu | 16010120201 |