The M4 server enables AI assistants to query and analyze multimodal Electronic Health Record (EHR) datasets through natural language using the Model Context Protocol (MCP).
Dataset Management: List available clinical datasets (MIMIC-IV, MIMIC-IV-Note, eICU) with their status and backend configuration, switch between active datasets, and extend with custom PhysioNet datasets or institutional EHR schemas.
Tabular Data Analysis: Discover database schemas, inspect table structures with column details and sample data, and execute SQL SELECT queries on large clinical datasets containing hundreds of thousands of patients.
Clinical Notes Processing: Search notes by keyword with contextual snippets, retrieve full note text by ID (with optional truncation), list patient note metadata (IDs, types, lengths), filter by note type (discharge, radiology), and cross-reference with tabular data using shared patient identifiers.
Multi-Modal Support: Automatically adapts available tools based on the active dataset's modality (tabular vs. notes) and supports switching between datasets for complementary analyses.
Programmatic Access: Python API for complex, multi-step analyses that returns pandas DataFrames for statistical computations, visualization, and reproducible research notebooks.
Integration: Compatible with MCP clients (Claude Desktop, Cursor, LibreChat), supports both local (DuckDB) and cloud (BigQuery) backends, includes OAuth2 authentication for secure access, and provides contextual guidance through Claude Code skills.
Provides SQL query execution and schema exploration capabilities for clinical datasets stored in DuckDB, including MIMIC-IV and eICU tabular data with tools for database schema inspection, table information retrieval, and SELECT query execution.
Enables querying of large-scale clinical datasets hosted on Google Cloud BigQuery, supporting full MIMIC-IV and eICU datasets for cloud-based analysis of electronic health records.
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@M4show me the most common diagnoses in the mimic-iv dataset"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
M4: Infrastructure for AI-Assisted Clinical Research
M4 is infrastructure for AI-assisted clinical research. Initialize MIMIC-IV, eICU, or custom datasets as fast local databases (with optional BigQuery for cloud access). Your AI agents get specialized tools (MCP, Python API) and clinical knowledge (agent skills) to query and analyze them.
Usage example – M4 MCP | Usage example – Code Execution
M4 builds on the M3 project. Please cite their work when using M4!
Why M4?
Clinical research shouldn't require mastering database schemas. Whether you're screening a hypothesis, characterizing a cohort, or running a multi-step survival analysis—you should be able to describe what you want and get clinically meaningful results.
M4 makes this possible by giving AI agents deep clinical knowledge:
Understand clinical semantics. LLMs can write SQL, but have a harder time with (dataset-specific) clinical semantics. M4's comprehensive agent skills encode validated clinical concepts—so "find sepsis patients" produces clinically correct queries on any supported dataset.
Work across modalities. Clinical research with M4 spans structured data, clinical notes, and (soon) waveforms and imaging. M4 dynamically selects tools based on what each dataset contains—query labs in MIMIC-IV, search discharge summaries in MIMIC-IV-Note, all through the same interface.
Go beyond chat. Data exploration and simple research questions work great via MCP. But real research requires iteration: explore a cohort, compute statistics, visualize distributions, refine criteria. M4's Python API returns DataFrames that integrate with pandas, scipy, and matplotlib—turning your AI assistant into a research partner that can execute complete analysis workflows.
Cross-dataset research. You should be able to ask for multi-dataset queries or cross-dataset comparisons. M4 makes this easier than ever as the AI can switch between your initialized datasets on its own, allowing it to do cross-dataset tasks for you.
Interactive exploration. Some research tasks—like cohort definition—benefit from real-time visual feedback rather than iterative text queries. M4 Apps embed purpose-built UIs directly in your AI client, letting you drag sliders, toggle filters, and see instant results without leaving your workflow.
Quickstart (3 steps)
1. Install uv
macOS/Linux:
curl -LsSf https://astral.sh/uv/install.sh | shWindows (PowerShell):
powershell -ExecutionPolicy ByPass -c "irm https://astral.sh/uv/install.ps1 | iex"2. Initialize M4
mkdir my-research && cd my-research
uv init && uv add m4-infra
source .venv/bin/activate # Windows: .venv\Scripts\activate
m4 init mimic-iv-demoThis downloads the free MIMIC-IV demo dataset (~16MB) and sets up a local DuckDB database.
3. Connect your AI client
Claude Desktop:
m4 config claude --quickOther clients (Cursor, LibreChat, etc.):
m4 config --quickCopy the generated JSON into your client's MCP settings, restart, and start asking questions!
If you don't want to use uv, you can just run pip install m4-infra
If you want to use Docker, look at docs/DEVELOPMENT.md
Code Execution
For complex analysis that goes beyond simple queries, M4 provides a Python API that returns Python data types instead of formatted strings (e.g. pd.DataFrame for SQL queries). This transforms M4 from a query tool into a complete clinical data analysis environment.
from m4 import set_dataset, execute_query, get_schema
set_dataset("mimic-iv")
# Get schema as a dict
schema = get_schema()
print(schema['tables']) # ['mimiciv_hosp.admissions', 'mimiciv_hosp.diagnoses_icd', ...]
# Query returns a pandas DataFrame
df = execute_query("""
SELECT icd_code, COUNT(*) as n
FROM mimiciv_hosp.diagnoses_icd
GROUP BY icd_code
ORDER BY n DESC
LIMIT 10
""")
# Use full pandas power: filter, join, compute statistics
df[df['n'] > 100].plot(kind='bar')The API uses the same tools as the MCP server, so behavior is consistent. But instead of parsing text, you get DataFrames you can immediately analyze, visualize, or feed into downstream pipelines.
When to use code execution:
Multi-step analyses where each query informs the next
Large result sets (thousands of rows) that shouldn't flood your context
Statistical computations, survival analysis, cohort characterization
Building reproducible analysis notebooks
See Code Execution Guide for the full API reference and this example session for a walkthrough.
Agent Skills
M4 ships with a set of skills that teach AI coding assistants clinical research patterns. Skills activate automatically when relevant—ask about "SOFA scores" or "sepsis cohorts" and Claude uses validated SQL from MIT-LCP repositories.
For the canonical list of bundled skills, see src/m4/skills/SKILLS_INDEX.md.
Clinical skills:
Severity Scores: SOFA, APACHE III, SAPS-II, OASIS, LODS, SIRS
Sepsis: Sepsis-3 cohort identification, suspected infection
Organ Failure: KDIGO AKI staging
Measurements: GCS calculation, baseline creatinine, vasopressor equivalents
Cohort Selection: First ICU stay identification
Research Methodology: Common research pitfalls and how to avoid them
System skills:
M4 Framework: Python API usage, research workflow, skill creation guide
Data Structure: MIMIC-IV table relationships, MIMIC-eICU mapping
Supported tools: Claude Code, Cursor, Cline, Codex CLI, Gemini CLI, GitHub Copilot
m4 skills # Interactive tool and skill selection
m4 skills --tools claude,cursor # Install all skills for specific tools
m4 skills --tools claude --tier validated # Only validated skills
m4 skills --tools claude --category clinical # Only clinical skills
m4 skills --tools claude --skills sofa-score,m4-api # Specific skills by name
m4 skills --list # Show installed skills with metadataSee Skills Guide for the full list and how to create custom skills.
M4 Apps
M4 Apps bring interactivity to clinical research. Instead of text-only responses, apps render interactive UIs directly in your AI client—ideal for tasks that benefit from real-time visual feedback.
Cohort Builder: Define patient cohorts with live filtering. Adjust age ranges, add diagnosis codes, and toggle clinical criteria while watching counts update instantly.
User: Help me build a cohort of elderly diabetic patients
Claude: [Launches Cohort Builder UI with interactive filters]M4 Apps require a host that supports the MCP Apps protocol (like Claude Desktop). In other clients, you'll get text-based results instead.
See M4 Apps Guide for details on available apps and how they work.
Example Questions
Once connected, try asking:
Tabular data (mimic-iv, eicu):
"What tables are available in the database?"
"Show me the race distribution in hospital admissions"
"Find all ICU stays longer than 7 days"
"What are the most common lab tests?"
Derived concept tables (mimic-iv, after
"What are the average SOFA scores for patients with sepsis?"
"Show KDIGO AKI staging distribution across ICU stays"
"Find patients on norepinephrine with SOFA > 10"
"What is the 30-day mortality for patients with Charlson index > 5?"
Clinical notes (mimic-iv-note):
"Search for notes mentioning diabetes"
"List all notes for patient 10000032"
"Get the full discharge summary for this patient"
Supported Datasets
Dataset | Modality | Size | Access | Local | BigQuery | Derived Tables |
mimic-iv-demo | Tabular | 100 patients | Free | Yes | No | No |
mimic-iv | Tabular | 365k patients | Yes | Yes | Yes (63 tables) | |
mimic-iv-note | Notes | 331k notes | Yes | Yes | No | |
eicu | Tabular | 200k+ patients | Yes | Yes | No |
These datasets are supported out of the box. However, it is possible to add any other custom dataset by following these instructions.
Switch datasets or backends anytime:
m4 use mimic-iv # Switch to full MIMIC-IV
m4 backend bigquery # Switch to BigQuery (or duckdb)
m4 status # Show active dataset and backend
m4 status --all # List all available datasets
m4 status --derived # Show per-table derived materialization statusDerived concept tables (MIMIC-IV only):
m4 init-derived mimic-iv # Materialize ~63 derived tables (SOFA, sepsis3, KDIGO, etc.)
m4 init-derived mimic-iv --list # List available derived tables without materializingAfter running m4 init mimic-iv, you are prompted whether to materialize derived tables. You can also run m4 init-derived separately at any time. Derived tables are created in the mimiciv_derived schema (e.g., mimiciv_derived.sofa) and are immediately queryable. The SQL is vendored from the mimic-code repository -- production-tested and DuckDB-compatible. BigQuery users already have these tables available via physionet-data.mimiciv_derived and do not need to run init-derived.
Get PhysioNet credentials: Complete the credentialing process and sign the data use agreement for the dataset.
Download the data:
# For MIMIC-IV wget -r -N -c -np --cut-dirs=2 -nH --user YOUR_USERNAME --ask-password \ https://physionet.org/files/mimiciv/3.1/ \ -P m4_data/raw_files/mimic-iv # For eICU wget -r -N -c -np --cut-dirs=2 -nH --user YOUR_USERNAME --ask-password \ https://physionet.org/files/eicu-crd/2.0/ \ -P m4_data/raw_files/eicuThe
--cut-dirs=2 -nHflags ensure CSV files land directly inm4_data/raw_files/mimic-iv/rather than a nestedphysionet.org/files/...structure.Initialize:
m4 init mimic-iv # or: m4 init eicu
This converts the CSV files to Parquet format and creates a local DuckDB database.
Available Tools
M4 exposes these tools to your AI client. Tools are filtered based on the active dataset's modality.
Dataset Management:
Tool | Description |
| List available datasets and their status |
| Switch the active dataset |
Tabular Data Tools (mimic-iv, mimic-iv-demo, eicu):
Tool | Description |
| List all available tables |
| Get column details and sample data |
| Run SQL SELECT queries |
Clinical Notes Tools (mimic-iv-note):
Tool | Description |
| Full-text search with snippets |
| Retrieve a single note by ID |
| List notes for a patient (metadata only) |
More Documentation
Guide | Description |
Design philosophy, system overview, clinical semantics | |
Python API for programmatic access | |
Interactive UIs for clinical research tasks | |
Clinical and system skills for AI-assisted research | |
MCP tool documentation | |
Google Cloud for full datasets | |
Add your own PhysioNet datasets | |
Contributing, testing, code style | |
Enterprise security setup |
Roadmap
M4 is infrastructure for AI-assisted clinical research. Current priorities:
Clinical Semantics
More concept mappings (comorbidity indices, medication classes)
Semantic search over clinical notes (beyond keyword matching)
More agent skills that provide meaningful clinical knowledge
New Modalities
Waveforms (ECG, arterial blood pressure)
Imaging (chest X-rays)
Clinical Research Agents
Skills and guardrails that enforce scientific integrity and best practices (documentation, etc.)
Query logging and session export
Result fingerprints for audit trails
Troubleshooting
"Parquet not found" error:
m4 init mimic-iv-demo --forceMCP client won't connect: Check client logs (Claude Desktop: Help → View Logs) and ensure the config JSON is valid.
m4
On macOS/Linux, m4 is a built-in system utility. Make sure your virtual environment is activated (source .venv/bin/activate) so that the correct m4 binary is found first. Alternatively, use uv run m4 [command] to run within the project environment without activating it.
Need to reconfigure:
m4 config claude --quick # Regenerate Claude Desktop config
m4 config --quick # Regenerate generic configCitation
M4 builds on the M3 project. Please cite:
@article{attrach2025conversational,
title={Conversational LLMs Simplify Secure Clinical Data Access, Understanding, and Analysis},
author={Attrach, Rafi Al and Moreira, Pedro and Fani, Rajna and Umeton, Renato and Celi, Leo Anthony},
journal={arXiv preprint arXiv:2507.01053},
year={2025}
}