Agent2Agent OMCP
MCP Server
The MCP (Model-Context-Protocol) server provides a set of tools for interacting with OMOP CDM databases and generating SQL queries using natural language processing. The server is built using FastMCP and integrates with Ollama for LLM capabilities.
Features
SQL Server Tools
Execute_SQL_Query: Execute SQL queries against an OMOP database and return results in CSV formatTest_Connection: Test if a database connection is validGet_OMOP_Schema: Get the OMOP CDM schema information for prompting
Validation Server Tools
Validate_SQL_Query: Validate SQL queries against OMOP CDM validation rules
Ollama Server Tools
Generate_SQL: Generate SQL from natural language using an LLM, incorporating medical concept codesGenerate_Explanation: Generate an explanation for an SQL queryGenerate_Answer: Generate a natural language answer based on query, SQL, and resultsList_Available_Models: List available LLM models from Ollama
Configuration
The server uses a configuration file (config/config.json) that specifies:
- Database connection strings
- Schema directory location
- Ollama API settings
- OMOP CDM validation rules and schema files
Medical Concept Integration
The SQL generation tool accepts medical concepts in the following format:
{
"conditions": [
{
"concept_id": 12345,
"concept_name": "Diabetes",
"vocabulary_id": "SNOMED"
}
],
"drugs": [
{
"concept_id": 11111,
"concept_name": "Metformin",
"vocabulary_id": "RxNorm"
}
],
"measurements": [
{
"concept_id": 22222,
"concept_name": "Blood Pressure",
"vocabulary_id": "LOINC"
}
]
}
Requirements
- Python 3.13 or higher
- PostgreSQL database with OMOP CDM schema
- Ollama running locally for LLM capabilities
Dependencies
- mcp
- httpx
- sqlalchemy
- pydantic
- pydantic-settings
- python-multipart
- sse-starlette
Usage
The MCP server can be used as a standalone service or integrated into other applications. To use it:
- Ensure all dependencies are installed:
uv pip install -e .
-
Configure the database connection and other settings in
config/config.json -
Start the server:
from src.unified_mcp import mcp
mcp.run(transport="stdio")
Example
# Generate SQL with medical concepts
medical_concepts = {
"conditions": [
{"concept_id": 12345, "concept_name": "Diabetes", "vocabulary_id": "SNOMED"}
]
}
schema = mcp.tools["Get_OMOP_Schema"]()
sql_query, confidence = await mcp.tools["Generate_SQL"](https://github.com/fastomop/omcp_a2a/blob/main/
prompt="Find all patients with diabetes",
medical_concepts=medical_concepts,
schema=schema
)
# Validate the generated SQL
validation_result = mcp.tools["Validate_SQL_Query"](https://github.com/fastomop/omcp_a2a/blob/main/sql_query)
# Execute the query if valid
if validation_result["is_valid"]:
results = mcp.tools["Execute_SQL_Query"](https://github.com/fastomop/omcp_a2a/blob/main/sql_query)
Recommend MCP Servers 💡
mcp-mongo-server
A Model Context Protocol server that enables LLMs to interact with MongoDB databases, providing capabilities for inspecting collection schemas and executing MongoDB operations.
mcp_sqlite_poc
An MCP server implementation for SQLite databases, enabling AI models to interact with SQLite through standardized tools for query execution, schema discovery, and data management.
Nocodb-MCP-Server
MCP server enabling CRUD operations on Nocodb databases via Model Context Protocol
influxdata/influxdb3_mcp_server
MCP Server for integrating InfluxDB 3 (Core/Enterprise/Cloud Dedicated) with MCP clients
PostgresSchemaServer
An MCP server built with Spring Boot and Spring AI that provides tools to inspect PostgreSQL database schema using SSE transport
achrekarom12/mcp-mongo
A Model Context Protocol (MCP) server enabling large language models (LLMs) to communicate directly with MongoDB, supporting natural language database queries, schema exploration, and data operations.