covidence-mcp
Enables Claude to screen studies in Covidence by reading the live page and casting votes based on stored criteria, with all browser navigation handled by Claude itself.
README
covidence-mcp
An MCP connector that lets Claude screen studies in Covidence using its own intelligence — no brittle CSS selectors, no hardcoded click paths.
How it works
Instead of a static Playwright script, Claude navigates Covidence directly using Claude in Chrome. It reads the live page, finds the right buttons by understanding what it sees, and casts votes — the same way a human would. When Covidence updates their UI, nothing breaks.
The MCP server itself is intentionally thin: it stores your inclusion/exclusion criteria per review and keeps a session vote log. All actual browser interaction is handled by Claude.
You ──► Claude ──► covidence_screen (MCP)
│
▼
Returns screening prompt
│
▼
Claude navigates Chrome directly
(read_page → reason → find → click)
│
▼
Votes cast in Covidence
Setup
There are two ways to connect, depending on whether you're using Claude Desktop or the claude.ai web app.
Option A — Claude Desktop (local)
Requirements: Node.js ≥ 18, Claude Desktop app
git clone <this repo>
cd covidence-mcp
npm install
npm run build
Add to your Claude Desktop config:
macOS: ~/Library/Application Support/Claude/claude_desktop_config.json
Windows: %APPDATA%\Claude\claude_desktop_config.json
{
"mcpServers": {
"covidence": {
"command": "node",
"args": ["/absolute/path/to/covidence-mcp/dist/index.js"]
}
}
}
Restart Claude Desktop. Done.
Option B — claude.ai web (remote hosting)
Claude.ai supports remote MCP servers over SSE. You deploy this server somewhere public and give Claude the URL — no desktop app required.
Requirements: A free account on Railway, Render, or any host that can run Node.js
1. Deploy to Railway (easiest)
Or manually:
# Push this folder to a GitHub repo, then:
# 1. Create a new Railway project from that repo
# 2. Railway auto-detects Node.js and runs `npm run build && npm start`
# 3. Set the PORT environment variable (Railway sets this automatically)
The server switches to HTTP mode automatically when PORT is set. Your public URL will look like:
https://covidence-mcp-production.up.railway.app
2. Connect to claude.ai
- Go to claude.ai → Settings → Integrations
- Click Add custom connector
- Enter your server URL:
https://your-deployment.up.railway.app/sse - Save — Claude will confirm the connection
Deploy to Render (alternative)
- Create a new Web Service from your GitHub repo
- Build command:
npm install && npm run build - Start command:
node dist/index.js - Render sets
PORTautomatically
Deploy to Fly.io (alternative)
fly launch
fly deploy
Then connect https://your-app.fly.dev/sse in Claude's integrations settings.
Usage
Once connected (either way), the workflow is the same.
First time — tell Claude your login and criteria:
Log in to Covidence with researcher@university.edu, then save these criteria for review 12345:
Include: RCTs and quasi-experimental studies in adults with type 2 diabetes.
Exclude: animal studies, systematic reviews, non-English publications, studies before 2000.
Screen a batch:
Screen the next 20 studies in review 12345.
Claude calls covidence_screen, opens Covidence in Chrome, reads a batch of abstracts, applies your criteria, and votes on all of them.
Check progress:
How many studies have we screened today?
Tools
| Tool | What it does |
|---|---|
covidence_login |
Starts a session and returns Chrome navigation steps for login |
covidence_set_criteria |
Saves inclusion/exclusion criteria for a review ID |
covidence_screen |
Builds a full screening prompt — Claude uses this to drive Chrome |
covidence_log_vote |
Records a vote in the session log |
covidence_get_session_log |
Returns all votes cast this session with totals |
covidence_nav |
Returns plain-English navigation steps for any specific action |
License
MIT
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