Healthcare RAG
A healthcare-focused RAG server using Groq API and Chroma for information retrieval from patient records.
HealthcareRAGTools Project
Overview
The HealthcareRAGTools project is an agentic AI system designed to assist healthcare professionals by leveraging Retrieval-Augmented Generation (RAG) techniques. This project integrates a Model Context Protocol (MCP) server with a Chroma vector database to log patient symptoms, retrieve similar cases, and search medical documents. It supports interactive queries via a terminal-based client and can also be used within the Cursor IDE’s agent chat interface.
Project Description
This project enables the following key functionalities:
- Log Patient Symptoms: Logs patient symptoms (e.g., "fever and cough") with severity levels (e.g., "Moderate") and retrieves similar cases from a database for comparison.
- Search Documents: Searches a collection of medical documents (e.g., flu or asthma symptom descriptions) to provide relevant information based on user queries. The system uses the Groq API for natural language processing, with the llama-3.3-70b-versatile model. It is built to support real-time healthcare data management and retrieval, making it a valuable tool for clinical decision support.
Tools Used
The project relies on the following tools and technologies:
Python 3.8+: The primary programming language for scripting and server logic. FastMCP: A modular compute platform framework for building and running agentic systems. LangChain: A library for building context-aware language models and agents. LangChain-Groq: Integration with Groq’s API for advanced language model capabilities. Chroma: An open-source vector database for storing and retrieving embeddings of medical documents and patient data. Sentence-Transformers: Used to generate embeddings for text data in the Chroma database. HTTpx: For handling HTTP requests within the system. Python-Dotenv: Manages environment variables, such as the Groq API key. LangChain-Community: Additional community-supported LangChain tools. Requests: For making HTTP requests to external services. UV: A package and virtual environment manager for dependency management. Cursor IDE: The development environment, with plans to enable agent chat functionality.
Directory Structure
The project is organized as follows:
\Desktop\mcpserver\ragmcp
├── .env # Stores the GROQ_API_KEY environment variable
├── .gitignore # Excludes venv, chroma_db, and .env from version control
├── server.py # Main MCP server script with HealthcareRAGTools logic
├── setup_db.py # Script to initialize the Chroma vector database
├── healthcare_client.py # Terminal-based client for interactive queries
├── healthcare.json # Configuration file for the MCP server
├── requirements.txt # Lists project dependencies
├── documents\ # Directory for sample medical documents
│ ├── doc1.txt # Example document: Flu symptoms
│ ├── doc2.txt # Example document: Asthma symptoms
├── patient_records.json # JSON file storing patient symptom data
├── chroma_db\ # Directory for the Chroma vector database
└── ragmcp\ # Virtual environment directory
Setup and Installation
To set up the project on your local machine, follow these steps:
Prerequisites Windows 10/11 with Command Prompt. Python 3.8+ installed. UV (Universal Virtual Environment) installed: pip install uv. A Groq API key from console.groq.com. Steps Create and Activate the Virtual Environment: uv venv ragmcp\Scripts\activate Confirm the prompt shows (ragmcp). Install Dependencies: Ensure requirements.txt exists with the listed dependencies: set UV_LINK_MODE=copy uv pip install -r requirements.txt Configure Environment Variables: Create or edit .env with your Groq API key: GROQ_API_KEY=your-groq-api-key Initialize the Database: Run the setup script to populate the Chroma database with sample documents: uv run python setup_db.py Expected output: Vector database initialized with sample medical documents. Running the Project Terminal-Based Client Start the Client: uv run python healthcare_client.py Expected Output: Loading environment variables... Loading config file: C:\Users\sniki\OneDrive\Desktop\mcpserver\ragmcp\healthcare.json Initializing HealthcareRAGTools chat... MCPClient initialized ChatGroq initialized
===== Interactive HealthcareRAGTools Chat ===== Type 'exit' or 'quit' to end the conversation Type 'clear' to clear conversation history Example queries:
- Log symptoms for patient P123: fever and cough, severity Moderate, show similar cases
- Search documents for flu symptoms ==================================
You:
Test a Query: Type: Log symptoms for patient P123: fever and cough, severity Moderate, show similar cases Expected response: Assistant: Symptoms logged for Patient P123: 'fever and cough' (Moderate). Similar cases: None Exit: Type exit or quit.
To run it in Cursor's Agent chat:
Copy the json code into File>Preferences>Cursor Settings>MCP/MCP Tools and run the server as follows:
uv run python server.py
You can use the same queries here as well.
संबंधित सर्वर
USA Spending MCP
Track government spending, search government spending be agency, explore government spending to communities, and much more.
stella-mcp
MCP server for creating and manipulating Stella system dynamics models (.stmx files in XMILE format)
YouTube Playlist Generator MCP Server
A Model Context Protocol (MCP) server that enables AI applications to search for YouTube music videos and manage playlists using the official YouTube Data API v3.
Nano Currency MCP Server
Send Nano currency and retrieve account and block information using the Nano node RPC.
Bazi MCP
An AI-powered Bazi calculator providing precise data for personality analysis and destiny forecasting.
OpenDART MCP
orean corporate disclosure & financial data from DART (금융감독원 전자공시시스템). Search companies, filings, and financial statements via OpenDART API.
Superlines MCP server
Analyze and optimize for AI search (AIO)
Berlin Transport
Access Berlin's public transport data via the VBB (Verkehrsverbund Berlin-Brandenburg) API.
MCP HUB
The Ultimate Control Plane for MCP Unlock the full power of Model Context Protocol with zero friction. One-Click GPT Integration: Bridge the gap between MCP servers and ChatGPT/LLMs instantly. No more manual config hunting. Pro-Level Orchestration: Manage, monitor, and toggle multiple MCP tools from a single, intuitive dashboard. Secure by Design: Built-in support for complex auth flows and 2FA, making enterprise-grade tool integration seamless. Streamlined Debugging: Test queries and inspect tool responses in real-time without leaving the hub. Stop wrestling with JSON configs. Start building agentic workflows that actually work.
Airplane.Live MCP Server
MCP server that connects to the Airplanes.live API to provide real-time flight and aircraft data for analysis or visualization.