Skip to content

Latest commit

 

History

History
29 lines (19 loc) · 1.72 KB

README.md

File metadata and controls

29 lines (19 loc) · 1.72 KB

Multiple Disease Prediction Webapp

Abstract : The designed web app employs the Streamlit Python library for frontend design and communicates with backend ML models to predict the probability of diseases. Multiple Disease Prediction has many machine learning models used in prediction. We will be able to choose the diseases from the navigation bar or a sidebar for which we want to make a prediction using various input values. These input values will be the symptoms, physical health data, or blood test results. We will first trained our model from historic data, so it can make accurate predictions. It's capable of predicting whether someone has Diabetes, Heart issues, Parkinson's, Liver conditions, Hepatitis, Jaundice, and more based on the provided symptoms, medical history, and results.

Deployment Steps

Please follow the below steps to run this project.

  1. pip install -r requirements.txt
  2. cd frontend
  3. streamlit run multiple_disease_prediction.py

Platform, Libraries and Frameworks used

  1. Streamlit
  2. Python
  3. Sklearn

Dataset Used

  1. Diabetes disease dataset
  2. Heart disease dataset
  3. Parkinsons disease dataset
  4. Liver disease dataset
  5. Hepatities disease dataset
  6. Jaundice disease dataset