Open Source Literature MCP
Enables automatic literature discovery, screening, and ranking across OpenAlex, Semantic Scholar, and arXiv, with tools for exporting to Zotero and generating research ideas.
README
Open Source Literature MCP
An MCP server for automatic literature discovery and screening across OpenAlex, Semantic Scholar, and arXiv.
The server keeps intermediate raw results, normalized records, and deduped candidates internal. MCP clients receive only the final selected papers plus structured metadata.
Tools
auto_literature_screen: Searches selected sources, dedupes by DOI/arXiv ID/title, screens, ranks, and returns final papers.discover_papers: Alias forauto_literature_screen.expand_related_papers: Expands a Semantic Scholar seed paper with related recommendations, then screens and ranks.export_to_zotero: Exports final selected papers to a Zotero user or group library.generate_research_ideas: Generates evidence-backed research ideas from a topic and selected papers.review_research_idea: Reviews one proposed idea against selected papers for novelty, feasibility, and evidence fit.literature_mcp_health: Shows server metadata and whether a Semantic Scholar API key is configured.
Setup
npm install
npm run build
npm test
Optional environment variables (PowerShell):
$env:SEMANTIC_SCHOLAR_API_KEY = "your_key"
$env:OPENALEX_MAILTO = "you@example.com"
Or with bash:
export SEMANTIC_SCHOLAR_API_KEY=your_key
export OPENALEX_MAILTO=you@example.com
Semantic Scholar works without a key, but a key usually improves rate limits.
OPENALEX_MAILTO opts into OpenAlex's faster "polite pool"; set it to a real contact email.
MCP Client Config
Use the built server:
{
"mcpServers": {
"opensource-literature": {
"command": "node",
"args": ["D:/demo/opensourse-mcp/dist/index.js"]
}
}
}
Zotero Export
Call export_to_zotero with the results array returned by auto_literature_screen.
{
"papers": [],
"zoteroApiKey": "your_zotero_key",
"zoteroUserId": "123456"
}
Use zoteroGroupId instead of zoteroUserId for a group library.
Research Ideas
These two tools are heuristic scaffolding, not a language-model judgment. Ideas come from keyword/term overlap and research-gap templates, and the scores are relative heuristics meant to triage, not to rank definitively. The method and gap vocabularies default to a biomedical bias; override them with candidateMethods and focusGaps for other fields.
Use the results array returned by auto_literature_screen as selected_papers.
{
"topic": "single-cell multi-omics integration cancer prognosis",
"selected_papers": [],
"count": 5
}
Then review a specific idea:
{
"topic": "single-cell multi-omics integration cancer prognosis",
"idea": "Build a cell-type aware survival prediction benchmark for missing-modality single-cell multi-omics data.",
"selected_papers": []
}
For development:
{
"mcpServers": {
"opensource-literature-dev": {
"command": "npm",
"args": ["run", "dev"],
"cwd": "D:/demo/opensourse-mcp"
}
}
}
Example Call
{
"topic": "single-cell multi-omics integration cancer prognosis",
"yearFrom": 2020,
"limit": 10,
"sources": ["openalex", "semantic_scholar", "arxiv"],
"includePreprints": true,
"screeningCriteria": {
"mustInclude": ["single-cell"],
"prefer": ["multi-omics", "cancer prognosis", "survival prediction"],
"exclude": ["review", "editorial", "protocol"],
"minCitations": 5
}
}
Implementation Notes
Scoring combines:
- query term overlap in title/abstract
- required and preferred phrases
- DOI/arXiv metadata quality
- cross-source confirmation
- citation counts
- recency
Intermediate candidate tables are intentionally not exposed as a workflow step.
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