Skip to content

MedRaga is a medical assistance application aimed at providing accurate and personalized medical information to healthcare professionals. It uses RAG technology to retrieve the latest medical research from trusted sources, augment it with patient data, and deliver personalized diagnoses and treatment plans.

Notifications You must be signed in to change notification settings

mdimado/MedRaga

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

11 Commits
 
 
 
 
 
 

Repository files navigation

MedRaga - AI Enhanced Diagnostic & Treatment Planning System

Overview

This project utilizes Retrieval-Augmented Generation (RAG) to enhance the quality and relevance of medical information provided to doctors. It combines retrieval-based and generation-based models to offer personalized diagnoses and treatment plans based on the doctor's query and the patient's medical history.

Screenshot 2024-06-03 at 3 26 06 PM-modified

Features

  1. RAG Pipeline: Combines retrieval and generation models to provide comprehensive medical information tailored to each patient's needs.

  2. Latest Medical Information: Utilizes APIs and web scraping to gather the newest medical research from trusted sources, ensuring accuracy and relevance.

  3. Personalization: Takes into account the unique medical history of each patient to offer personalized diagnoses and treatment plans.

  4. Trusted Information Sources: Collects data only from reputable medical journals and websites, ensuring the reliability of the recommendations.

Screenshot 2024-06-03 at 3 25 54 PM-modified

Abstract

The project obtains the latest medical research from trusted sources using APIs and web scraping. PDF files and articles are downloaded, indexed, and converted to text embeddings using Cohere. These embeddings are stored as vectors in a vector database (Qdrant).

When a doctor queries the prototype, it retrieves the most relevant information and adds it to the context window of the Language Model (LLM). The LLM then takes the new context window, the original prompt, and the summarized patient history to generate the output.

Screenshot 2024-06-03 at 3 25 41 PM-modified

Usage

  1. Clone this repository to your local machine:
git clone https://github.com/mdimado/medbot.git
cd medbot

Set up Frontend

  1. Change the current working directory to "frontend"
cd frontend
  1. Install Dependencies:
npm install
  1. Set Up Firebase:

    • Create a Firebase project at Firebase Console.
    • Obtain your Firebase config credentials.
    • Add your Firebase config to src/firebase/firebaseConfig.js.
  2. Start the Development Server:

npm start

This will run the React development server. You can view the website at http://localhost:3000.

Folder Structure

The project folder structure is organized as follows:

  • public/: Contains static assets and the main index.html file.
  • src/: Contains all the source code for the React.js frontend.
    • assets/: Static assets like images, fonts, etc.
    • components/: Reusable components
      • Header/: Header component
      • Helmet/: Helmet component
      • Layout/: Layout components
        • Modal.jsx: Modal component
        • PatientForm.jsx: PatientForm component
        • PatientInfo.jsx: PatientInfo component
    • custom-hooks/: Custom React hooks
    • pages/: Pages of the application
      • ChatBot.jsx: ChatBot page component
      • Home.jsx: Home page component
      • Login.jsx: Login page component
      • Signup.jsx: Signup page component
    • redux/: Redux setup
    • routers/: Router setup
    • styles/: CSS styles
      • App.css: Global styles
    • App.js: Main application component
    • firebase.config.js: Firebase configuration
    • index.js: Entry point

Set up Backend

  1. Change the current working directory to "backend"
cd backend
  1. Create a virtual environment
python -m venv .venv  
  1. Activate .venv
.venv\Scripts\activate  
  1. Install required libraries and install playwright.
pip install -r requirements.txt
playwright install
  1. Download and run Qdrant
    For Windows, run these commands from WSL.
    First, download the latest Qdrant image from Dockerhub:
docker pull qdrant/qdrant

Then, run the service:

docker run -p 6333:6333 -p 6334:6334 \
    -v $(pwd)/qdrant_storage:/qdrant/storage:z \
    qdrant/qdrant

Qdrant is now accessible at localhost:6333

  1. Add API Keys to .env

  2. Check path locations.

For Windows - paths are defined by \\
For Mac OS - paths are defined by /

  1. Start API
uvicorn app:app 

Do not use --reload tag, since the API contains async functions. API will break.

Project Details

  • Frontend:
    • Setup: React.js
    • Dependencies: npm
  • Backend:
    • Language Used: Python 3.9.13
    • API Framework: FastAPI

API Endpoints

/create/req=

<json> - Enter patient json here
Functionality - Creating a new patient bucket

/query/req=

<json> - JSON must contain id and prompt
Functionality - Queries the RAG pipeline

/status

Functionality - Returns 200 OK if API is up

About

MedRaga is a medical assistance application aimed at providing accurate and personalized medical information to healthcare professionals. It uses RAG technology to retrieve the latest medical research from trusted sources, augment it with patient data, and deliver personalized diagnoses and treatment plans.

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published