BioMCP
Enhances large language models with protein structure analysis capabilities, including active site analysis and disease-protein searches, by connecting to the RCSB Protein Data Bank.
BioMCP: Enabling agent-based biomedical R&D
Overview
BioMCP is a Model Context Protocol (MCP) server designed to enhance large language models with protein structure analysis capabilities. It provides tools for analyzing protein active sites and searching for disease-related proteins by interfacing with established protein databases.
Future work will be centered around enabling agents to utilize the BioMCP.
Features
- Active Site Analysis: Examine the binding sites and functional residues of proteins using PDB IDs
- Disease-Protein Search: Find protein structures associated with specific diseases or medical conditions
- Integrated Data Access: Connect seamlessly with RCSB Protein Data Bank (PDB)
Technical Details
BioMCP implements the Model Context Protocol, allowing language models to access specialized protein structure knowledge without requiring this information to be part of their training data. The server handles API connections, data formatting, and error handling to provide reliable protein structure insights.
API Endpoints
BioMCP exposes two primary tools:
analyze-active-site: Provides detailed information about protein binding sites using a PDB IDsearch-disease-proteins: Returns proteins related to specified diseases or medical conditions
Getting Started
Installing via Smithery
To install BioMCP for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @acashmoney/bio-mcp --client claude
Manual Installation
# Clone the repository
git clone https://github.com/acashmoney/bio-mcp.git
# Install dependencies
npm install
# Start the server
npm start
Setup Instructions
Running the MCP Inspector
-
Start the BioMCP server:
npm start -
In a separate terminal, install the MCP Inspector globally (if not already installed):
npm install -g @anthropic-ai/mcp-inspector -
Launch the MCP Inspector and connect to your local BioMCP server:
npx @modelcontextprotocol/inspector node build/index.js -
Use the inspector interface to test tools and view responses.
Using with Claude Desktop
-
Build the BioMCP server:
npm run build -
Configure Claude Desktop to launch the MCP server:
a. Locate your Claude Desktop config.json file (typically in your user directory)
b. Edit the config.json to include the BioMCP server build path. Example configuration:
{ "globalShortcut": "", "mcpServers": { "bio-mcp": { "command": "node", "args": [ "/path/to/your/build/index.js" ] } } }c. Replace
/path/to/your/buildwith your actual path to the project directory. -
Restart Claude Desktop for the changes to take effect.
-
You can now ask Claude questions that utilize the BioMCP tools:
- "What are the key residues in the active site of PDB structure 6LU7?"
- "Find proteins related to Alzheimer's disease"
Example Usage
When integrated with a compatible language model, Bio-MCP enables queries like:
- "What are the key residues in the active site of PDB structure 6LU7?"
- "Find proteins related to Alzheimer's disease"
Requirements
- Node.js 20.0.0 or higher
- TypeScript 5.0+
- Compatible MCP client implementation
Testing
BioMCP includes a comprehensive testing suite with unit, integration, and end-to-end tests.
Running Tests
Run all tests:
npm test
Run specific test suites:
# Unit tests only
npm run test:unit
# Integration tests only (API interactions)
npm run test:integration
# End-to-end tests only
npm run test:e2e
Linting
Check code quality:
npm run lint
Fix linting issues automatically:
npm run lint:fix
Roadmap
- Expand level of detail for active site descriptions
- Leverage 3-D coordinates
- Tools for interfacing with literature
- Tools for interfacing with computational biology models:
- RFdiffusion
- ProteinMPNN
- ColabFold
- Additional protein design and structure prediction tools
- Agent-based research pipelines
- Introduce client with protein visualization tools
관련 서버
Scout Monitoring MCP
스폰서Put performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
스폰서Access financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
MCP Jenkins
Enables secure, contextual AI interactions with Jenkins tools via the Model Context Protocol.
MCP Servers
A collection of reference implementations for the Model Context Protocol (MCP), demonstrating how to give LLMs secure access to tools and data using Typescript and Python SDKs.
Typst MCP Server
Provides Typst documentation to MCP clients like Claude Code.
Feishu API
Fetches API information from Feishu OpenAPI for seamless integration and management within an IDE.
Code-Index-MCP
A local-first code indexer that enhances LLMs with deep code understanding. It integrates with AI assistants via the Model Context Protocol (MCP) and supports AI-powered semantic search.
MCP SeriesGenerator
A .NET server for generating and validating vehicle serial numbers.
MCP Servers
A collection of MCP servers for browser automation and database interaction, supporting Puppeteer, Postgres, MySQL, and Parquet.
Remote MCP Server (Authless)
An example of a remote MCP server deployable on Cloudflare Workers without authentication, allowing for custom tool integration.
GenCodeDoc
Intelligent code versioning (snapshots) and automatic documentation generator. With CLI, REST API, and MCP support.
SDD MCP
Provides Seam-Driven Development tools for AI-assisted software development.
