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HealthLedger

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A local-first, model-agnostic MCP server that stores personal health data in a SQLite file and provides analysis-ready views for any AI client to log, retrieve,

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A local-first, model-agnostic MCP server that stores personal health data in a SQLite file and provides analysis-ready views for any AI client to log, retrieve, and reason over health records.

README

🩺 HealthLedger MCP

Your health record, on your machine. Let any AI read and reason over it — on your terms.

A local-first, model-agnostic Model Context Protocol server that stores your personal health data in a local SQLite file and hands back analysis-ready views, so any MCP client — and any LLM behind it — can log, retrieve, and reason over that record on demand.

Python MCP Tools Local-first Model-agnostic Storage

[!WARNING] Not a medical device. HealthLedger stores and summarizes what you record. Its analysis tools return descriptive statistics, trends, and associations — not diagnosis. For any clinical decision, consult a licensed professional.


✨ What it does

HealthLedger is a personal health ledger you run yourself. Install it wherever you want, point your AI client at it, and start adding your data. By default it runs as a local stdio server — nothing binds to the network and the record never leaves your machine.

🏠 Local-first Runs as a stdio subprocess of your MCP client. No server to host, no account, no network — your data lives in a local SQLite file.
🤖 Model-agnostic It's a plain MCP server. Works with any MCP-capable client (Claude Desktop, Cline, Cursor, Zed, Continue, LibreChat, custom agents…) and any model behind it.
🧱 Structured clinical schema 20+ dedicated tables (conditions, meds, labs, biomarkers, oncology, imaging, wearables, …) rather than a bag of notes.
📈 Analysis-ready Trend tools compute count / min / max / mean / median plus a slope with uncertainty over dated numeric values.
🔗 Cross-signal reasoning Correlate two signals, estimate before/after change around an event, align many signals onto one time grid, and reconcile units & reference ranges.
📐 Trend intelligence Slopes with a confidence interval and p-value (real trend vs noise), robust outlier flags, latest-vs-baseline framing, non-linear/cyclical warnings, and change-point detection.
🔎 Retrieval & grounding Ranked full-text search over all free text (local FTS5, no embeddings), an explicit "what's present / absent / stale" coverage view, and source_ids + get_record so every computed claim traces to a specific row.
🧑‍🤝‍🧑 Multi-person Every tool takes an optional user label, so one instance can hold a whole household.
🌐 Optional remote mode If you want a shared instance, it can run as an OAuth-protected HTTP server behind a tunnel. Entirely opt-in — see Remote mode.

🚀 Quick start

You need Python 3.11+. The fastest path uses uv (uvx runs it with zero install):

# Try it directly from the repo — no clone, no install:
uvx --from git+https://github.com/Cole-Will-I-Am/HealthLedger-MCP healthledger-mcp

Prefer a persistent install?

pipx install git+https://github.com/Cole-Will-I-Am/HealthLedger-MCP
# or, from a clone:
git clone https://github.com/Cole-Will-I-Am/HealthLedger-MCP && cd HealthLedger-MCP
pip install .
healthledger-mcp        # starts a local stdio server

That's it — no OAuth, no tunnel, no account. Your data is written to ~/.healthledger/health.db (override with HEALTH_MCP_DB).


🔌 Use it with any client / any model

HealthLedger speaks stdio MCP, so it drops into the standard mcpServers config that virtually every MCP client uses. Point your client at it and you're done — the model on the other side can be Claude, a local Llama, GPT-something, whatever your client runs.

Zero-install (uvx):

{
  "mcpServers": {
    "healthledger": {
      "command": "uvx",
      "args": ["--from", "git+https://github.com/Cole-Will-I-Am/HealthLedger-MCP", "healthledger-mcp"]
    }
  }
}

After pipx/pip install:

{
  "mcpServers": {
    "healthledger": { "command": "healthledger-mcp" }
  }
}
  • Claude Desktopclaude_desktop_config.json
  • Cursor.cursor/mcp.json · Zedcontext_servers · Cline / Continue / LibreChat → their MCP settings
  • Any other MCP client → the same command/args shape

Want it to hold more than one person? Pass a user label on any tool call (defaults to me, from HEALTH_MCP_DEFAULT_USER).


🗄️ Storage

  • SQLite at ~/.healthledger/health.db — mode 0600, WAL journaling. Override with HEALTH_MCP_DB.
  • Schema v4 covers quantitative metrics, events, notes, profile facts, conditions, allergies, medications & dose logs, lab reports/results, biomarkers, tumor/cancer records, encounters/physicals, procedures, imaging, immunizations, care tasks, documents, enriched family history, genomic/PGx records, reproductive-health records, substance-use logs, wearable/app sources, wearable samples, and a generic health_records catch-all.
  • ~/.healthledger/audit.log records every tool call (override with HEALTH_MCP_AUDIT_LOG).
  • It's just a SQLite file — back it up, sync it, or delete it like any other file.

Profile keys (stable facts only)

Recommended keys for clients: birth_date, sex, gender, height_cm, blood_type, emergency_contact, primary_care_provider, preferred_pharmacy, insurance, advance_directive_on_file, plus stable preferences/goals.

Time-varying data belongs in the dedicated tables, not in profile keys.


🧰 Tool catalog

79 tools, grouped by purpose. Every tool accepts an optional user label (default me, from HEALTH_MCP_DEFAULT_USER).

📥 Core capture & retrieval

log_metric · get_metrics · list_metrics · analyze_metric · log_event · get_events · log_note · get_notes · set_profile · get_profile · delete_profile

🏥 Structured clinical history

add_condition · list_conditions · add_allergy · list_allergies · add_medication · list_medications · log_medication_taken · list_medication_schedule · list_medication_logs · add_encounter · list_encounters · add_procedure · list_procedures · add_imaging_report · list_imaging_reports · add_immunization · list_immunizations

🧪 Labs, biomarkers, oncology & documents

add_lab_report · list_lab_reports · add_lab_result · list_lab_results · analyze_lab_trend · add_biomarker · list_biomarkers · analyze_biomarker_trend · add_tumor_record · list_tumor_records · add_document · list_documents · add_family_history · list_family_history · add_health_record · list_health_records

🔬 Reproductive, substance & wearable data

add_reproductive_record · list_reproductive_records · analyze_reproductive_trend · add_substance_use_log · list_substance_use_logs · analyze_substance_trend · add_wearable_source · list_wearable_sources · add_wearable_sample · import_wearable_samples · list_wearable_samples · analyze_wearable_trend

🧬 Genomics & pharmacogenomics

add_genomic_record · list_genomic_records

🔗 Cross-signal reasoning & trend intelligence

correlate_metrics · analyze_event_impact · align_series · normalize_series · analyze_trend

🔎 Retrieval & grounding

semantic_search · get_record · data_coverage

🎓 Skills & output contracts

get_reasoning_guide returns the packaged reasoning guide; clients with MCP resource support can also read healthledger://skill/reasoning. Analysis tools guarantee top-level value, reference_range, recency, and source_ids keys; source_ids are table/id citations suitable for get_record. Analysis, summary, care-gap, and clinician-packet tools advertise statementType: descriptive.

🗓️ Planning, whole-record views & operations

add_care_task · complete_care_task · list_care_tasks · list_due_tasks · health_agenda · care_gap_report · summarize_health · build_clinician_packet · search_records · delete_record · export_data · health_status

How the "smart" tools behave

Tool What it returns
analyze_*_trend / analyze_metric count · min · max · mean · median · least-squares slope over dated numeric values — the slope now carries a standard error, 95% CI, p-value, and R² so a trend can be told from noise
analyze_trend full trend intelligence for one signal: slope with uncertainty (SE, 95% CI, p-value, "distinguishable from flat / treat as noise") · robust median/MAD outlier flags · baseline framing (latest vs your own median & Q1–Q3) · rate-of-change (recent vs earlier slope) · shape check warning when a straight line is the wrong model for a bounded/cyclical signal · single change-point detection
correlate_metrics Pearson & Spearman between two signals aligned on a common time grid, with paired sample size, a two-sided p-value, and significance caveats
analyze_event_impact before/after descriptive stats around a discrete event (med start, procedure) plus the difference in means and a Welch t-test
align_series 2+ signals resampled onto one shared day/week/month grid — one row per bucket, one column per signal (inner or outer join)
normalize_series one signal's readings converted to a common unit (incl. mg/dL↔mmol/L via analyte molar mass) with reference ranges reconciled and a unitless in-range position
semantic_search relevance-ranked (BM25) full-text over all free text — notes, event details, encounter reasons/plans, lab flags, imaging findings, document text, … — stemmed, best-first; each hit carries source_table + record_id + a highlighted snippet. Local FTS5, no embeddings/network.
data_coverage what's present / absent / stale, as data: per-domain counts with latest date & staleness, an explicit list of empty domains, and a per-signal inventory — so the model checks before asserting instead of confabulating
get_record fetch one exact row by table + id — resolves a source_ids citation to the underlying data
analyze_* (grounding) analysis tools now return source_ids as {"table", "id"} citations (the rows behind the numbers) and the latest value's days_stale, so every claim is traceable and recency is explicit
summarize_health compact cross-domain digest of the record
build_clinician_packet source-cited visit-prep packet with current snapshot, changed signals, stored follow-ups, genomic/PGx records, reason-for-visit matches, Markdown output, and no clinical recommendations
health_agenda stored upcoming tasks, refills, follow-ups, immunizations, reproductive due dates
care_gap_report missing/stale stored data and unresolved follow-ups — without clinical screening claims
export_data paginated & capped; use table, limit, offset (table=all → one capped page per table)

Wearables, on purpose

Wearable imports are kept separate from ordinary metrics:

  • wearable_sources identify the device / app / feed.
  • wearable_samples store high-volume typed samples — steps, HRV, resting HR, workouts, sleep, SpO₂, calories, temperature, and similar.
  • Use import_wearable_samples for bulk. Per call: up to HEALTH_MCP_MAX_WEARABLE_IMPORT_ROWS=500 samples and HEALTH_MCP_MAX_BULK_JSON_CHARS=200000 bytes of JSON.

⚙️ Configuration

Everything is environment variables. Defaults shown; the local-mode defaults need no setup.

Variable Default Purpose
HEALTH_MCP_TRANSPORT stdio stdio (local) or http (remote, opt-in)
HEALTH_MCP_DB ~/.healthledger/health.db SQLite database path
HEALTH_MCP_AUDIT_LOG ~/.healthledger/audit.log audit log path
HEALTH_MCP_DEFAULT_USER me default user label when none is passed
HEALTH_MCP_MAX_ROWS 1000 max rows returned by a list query
HEALTH_MCP_MAX_EXPORT_ROWS 500 max rows per export page
HEALTH_MCP_MAX_TEXT_CHARS 20000 max chars per free-text field
HEALTH_MCP_MAX_WEARABLE_IMPORT_ROWS 500 max wearable samples per import call
HEALTH_MCP_MAX_BULK_JSON_CHARS 200000 max JSON payload size for bulk import
HEALTH_MCP_RATE_LIMIT_CALLS 240 calls allowed per window
HEALTH_MCP_RATE_LIMIT_WINDOW_SECONDS 60 rate-limit window length

Remote-mode-only (HEALTH_MCP_TRANSPORT=http): HEALTH_MCP_GITHUB_CLIENT_ID, HEALTH_MCP_GITHUB_CLIENT_SECRET, HEALTH_MCP_ALLOWED_LOGINS, HEALTH_MCP_PUBLIC_URL, HEALTH_MCP_HOST (127.0.0.1), HEALTH_MCP_PORT (8800), HEALTH_MCP_PATH (/mcp).


✅ Offline tests

From a clone (these touch neither your real database nor real GitHub credentials — they use a temp DB and dummy config):

python test_tools.py     # exercises the tools end-to-end
python test_wiring.py    # exercises the optional remote (OAuth) wiring

🌐 Remote mode (optional)

You don't need any of this to use HealthLedger — it's for people who want to reach one instance from a networked client (e.g. a web-based assistant) instead of running it locally. Set HEALTH_MCP_TRANSPORT=http and it becomes an OAuth-protected HTTP server:

client ──HTTPS──► reverse proxy / tunnel ──► 127.0.0.1:8800  (HealthLedger, http mode)
                        │                            │
                  GitHub OAuth                SQLite 0600 / WAL
                 (allow-list only)             + audit.log
  • Binds 127.0.0.1 only; expose it via your own reverse proxy or a Cloudflare Tunnel.
  • Auth: OAuth 2.1 via FastMCP's GitHub OAuth proxy. Only the GitHub logins in HEALTH_MCP_ALLOWED_LOGINS may connect — everyone else gets 401.
  • Fail-closed: in http mode the process refuses to start without client id/secret and at least one allow-listed login. There is no open networked mode.
  • Health check: an unauthenticated request returns 401 (up and guarded).

Live demo: a single-tenant instance runs at https://health-mcp.manticthink.com/mcp (allow-listed to the maintainer). It's there to show the remote path working — to actually use HealthLedger, run your own local copy per Quick start.


Local-first · model-agnostic · built on the Model Context Protocol & SQLite.

from github.com/Cole-Will-I-Am/HealthLedger-MCP

Install HealthLedger in Claude Desktop, Claude Code & Cursor

Recommended · one command, every IDE
unyly install healthledger-mcp

Installs into Claude Desktop, Claude Code, Cursor & VS Code — handles npx, uvx and build-from-source repos for you.

First time? Get the CLI: curl -fsSL https://unyly.org/install | sh

Or configure manually

Run in your terminal:

claude mcp add healthledger-mcp -- uvx --from git+https://github.com/Cole-Will-I-Am/HealthLedger-MCP healthledger-mcp

FAQ

Is HealthLedger MCP free?

Yes, HealthLedger MCP is free — one-click install via Unyly at no cost.

Does HealthLedger need an API key?

No, HealthLedger runs without API keys or environment variables.

Is HealthLedger hosted or self-hosted?

Self-hosted: the server runs locally on your machine via the install command above.

How do I install HealthLedger in Claude Desktop, Claude Code or Cursor?

Open HealthLedger on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.

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