cellrank-mcp
If you are the rightful owner of cellrank-mcp and would like to certify it and/or have it hosted online, please leave a comment on the right or send an email to henry@mcphub.com.
cellrank-MCP is a natural language interface for scRNA-Seq analysis using cellrank through the Model Context Protocol (MCP).
cellrank-MCP
Natural language interface for scRNA-Seq analysis with cellrank through MCP.
đĒŠ What can it do?
- IO module like read and write scRNA-Seq data
- Preprocessing module,like filtering, quality control, normalization, scaling, highly-variable genes, PCA, Neighbors,...
- Tool module, like clustering, differential expression etc.
- Plotting module, like violin, heatmap, dotplot
â Who is this for?
- Anyone who wants to do scRNA-Seq analysis natural language!
- Agent developers who want to call cellrank's functions for their applications
đ Where to use it?
You can use cellrank-mcp in most AI clients, plugins, or agent frameworks that support the MCP:
- AI clients, like Cherry Studio
- Plugins, like Cline
- Agent frameworks, like Agno
đ Documentation
scmcphub's complete documentation is available at https://docs.scmcphub.org
đŦ Demo
A demo showing scRNA-Seq cell cluster analysis in a AI client Cherry Studio using natural language based on cellrank-mcp
đī¸ Quickstart
Install
Install from PyPI
pip install cellrank-mcp
you can test it by running
cellrank-mcp run
run cellrank-mcp locally
Refer to the following configuration in your MCP client:
check path
$ which cellrank
/home/test/bin/cellrank-mcp
"mcpServers": {
"cellrank-mcp": {
"command": "/home/test/bin/cellrank-mcp",
"args": [
"run"
]
}
}
run cellrank-server remotely
Refer to the following configuration in your MCP client:
run it in your server
cellrank-mcp run --transport shttp --port 8000
Then configure your MCP client in local AI client, like this:
"mcpServers": {
"cellrank-mcp": {
"url": "http://localhost:8000/mcp"
}
}
đ¤ Contributing
If you have any questions, welcome to submit an issue, or contact me(). Contributions to the code are also welcome!
Citing
If you use cellRank-mcp in for your research, please consider citing following work:
Weiler, P., Lange, M., Klein, M. et al. CellRank 2: unified fate mapping in multiview single-cell data. Nat Methods 21, 1196â1205 (2024). https://doi.org/10.1038/s41592-024-02303-9