Hospital Clinical Intelligence MCP Platform
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., "@Hospital Clinical Intelligence MCP PlatformGet clinical context for patient 987654"
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.
Hospital Clinical Intelligence MCP Platform
Production-grade clinical AI platform combining live patient monitoring, Model Context Protocol (MCP) tool execution, RAG-grounded evidence retrieval, and Claude AI synthesis with HIPAA-compliant audit logging.
Architecture-review ready · Interview-demo ready · AI-first · MCP-native · RAG-grounded
Architecture Overview
┌─────────────────────────────────────────────────────────────────────┐
│ Streamlit Enterprise UI (6 pages) │
│ Command Center · Clinical Intelligence · Patient Explorer │
│ AI Copilot · MCP Operations · Compliance & Audit │
└────────────────────────┬────────────────────────────────────────────┘
│
┌───────────────┼───────────────┐
▼ ▼ ▼
┌──────────┐ ┌──────────┐ ┌──────────────┐
│ Simulator│ │ FastAPI │ │ RAG Pipeline │
│ WebSocket│ │ MCP │ │ TF-IDF/ │
│ Port 8001│ │ Server │ │ sklearn │
│ 5 pts │ │ Port 8000│ │ 4 clinical │
│ 5 scenes │ │ 10 tools │ │ protocols │
└──────────┘ └────┬─────┘ └──────────────┘
│
┌────────┴────────┐
▼ ▼
┌──────────┐ ┌──────────────┐
│PostgreSQL│ │ Redis │
│TimescaleDB│ │ Cache + │
│pgvector │ │ Rate Limit │
└──────────┘ └──────────────┘Query pipeline: Intent classification → Parallel MCP tool execution → RAG retrieval → Claude synthesis → Safety guardrails → HIPAA audit log → Response
Related MCP server: MCP Healthcare System
Features
Phase 1 — Frontend (6 pages)
Command Center: Live KPIs, unit risk heatmap, deterioration predictions, CRISIS alarm panel, live ECG/trend sparklines
Clinical Intelligence: AI finding cards with full evidence trail (MCP tools + RAG citations + confidence scores)
Patient Explorer: Per-patient 6-tab deep-dive (vitals, alarms, devices, timeline, AI assessment)
AI Copilot: Claude Haiku chat with real-time MCP tool trace panel + RAG sources + safety guardrails
MCP Operations: Tool registry, p50/p99 latency, health dashboard, recent API call log
Compliance & Audit: HIPAA audit log with PHI masking, compliance score, access analytics, CSV export
Phase 2 — Backend
FastAPI MCP Server with 10 registered clinical tools
PostgreSQL/TimescaleDB for time-series vitals
Redis for session caching and rate limiting
WebSocket endpoint for real-time vital sign streaming (
/api/v1/vitals/stream)REST Copilot endpoint (
POST /api/v1/copilot/query)JWT auth + RBAC with 4 clinician roles
Phase 3 — Patient Monitor Simulator
5 physiologically realistic patients, 5 clinical scenarios
WebSocket streaming: HR, SpO2, RR, BP, Temp, EtCO2, ECG every 2 seconds
NEWS2 calculation (RCP 2017) in real-time
IEC 60601-1-8 alarm tiers: CRISIS / WARNING / ADVISORY
Patient | Scenario | Key Feature |
Carol Williams (PT-001) | Respiratory Deterioration | SpO2 drops 1%/90s, Draeger V500 offline at 60s |
Alice Johnson (PT-002) | Sepsis Risk | Temp rises 0.1°C/60s, MAP drops progressively |
Eleanor Thompson (PT-003) | Arrhythmia | Periodic high-HR bursts, PVC ECG pattern |
Bob Martinez (PT-004) | Post-Op Instability | MAP dip/recovery/second dip pattern |
David Chen (PT-005) | Device Disconnect | All vitals → NaN after 5 minutes |
Phase 4 — MCP Tool Execution
Every AI Copilot response shows:
Tools called (1–4 parallel) with arguments
Per-tool latency in milliseconds
Success/failure status
Structured result summary
10 registered tools: get_patient_clinical_context, get_care_unit_summary, get_device_events_by_patient, get_patient_event_timeline, get_alarm_context, get_diagnostic_exam_context, get_imaging_study_summary, get_anesthesia_case_context, get_neuro_event_context, get_cardiology_event_context
Phase 5 — RAG Pipeline
4 clinical knowledge documents (~800 words each)
Chunked with 200-word windows, 40-word overlap
TF-IDF retrieval (scikit-learn preferred, pure-Python fallback)
Top-3 chunks retrieved per query with confidence scores
Source citations shown in every AI response
Document | Coverage |
| Sepsis-3, SIRS, qSOFA, Sepsis Six Bundle |
| SpO2 targets, O2 devices, NEWS2 scoring |
| IEC 60601-1-8 tiers, thresholds, artefact decision tree |
| SpO2/ECG/NIBP/ventilator/pump troubleshooting |
Phase 6 — AI Copilot Safety Guardrails
Advisory-only framing ("may suggest", "clinical review recommended")
Diagnosis language detection and flagging
Treatment order language detection and flagging
Explicit escalation recommendation when risk = CRITICAL
Confidence score (0.0–1.0) computed from tool success rate + RAG scores
Every response includes human-in-the-loop note
Phase 7 — HIPAA Compliance
PHI masking:
first_name,last_name,date_of_birth,mrn,ssn,addressnever loggedJSONL audit log: one file per day, 7-year retention policy
Every tool call logged with:
timestamp,clinician_id,clinician_role,tool_name,patient_ids_accessed,success,response_time_msJWT authentication with 8-hour session timeout
RBAC: physician / nurse / technician / administrator roles
Quick Start
Option A — Streamlit only (no Docker, no backend)
# Install dependencies
pip install streamlit pandas anthropic scikit-learn
# Run the platform
streamlit run enterprise_platform.pyOpen http://localhost:8501 — the simulator starts automatically.
Optional: enter your sk-ant-… Anthropic API key in the sidebar for real Claude AI responses.
Option B — With FastAPI backend
# Terminal 1 — API server
pip install -r requirements.txt
uvicorn main:app --reload --port 8000
# Terminal 2 — UI
streamlit run enterprise_platform.pyOption C — Full Docker Compose
# Copy and configure environment
cp .env.example .env
# Edit .env: set ANTHROPIC_API_KEY, SECRET_KEY
# Build and start all services
docker compose up --build
# Access:
# UI: http://localhost:8501
# API: http://localhost:8000/api/docsEnvironment Variables
Variable | Default | Description |
| (empty) | Required for real Claude AI responses |
|
| PostgreSQL URL for production |
|
| Redis connection |
| changeme | JWT signing secret (32+ chars for production) |
|
|
|
|
| Enables |
API Reference
MCP Tools
POST /api/v1/tools/invoke — invoke any MCP tool
GET /api/v1/tools/list — list all registered tools
GET /api/v1/tools/stats — tool call statisticsAI Copilot
POST /api/v1/copilot/query — full MCP-RAG-Claude pipeline
GET /api/v1/copilot/rag/documents — list RAG knowledge base
POST /api/v1/copilot/rag/search — raw TF-IDF searchVitals Streaming
WS /api/v1/vitals/stream — WebSocket: all patients every 2s
GET /api/v1/vitals/snapshot — REST fallback: current state
GET /api/v1/vitals/alarms — active alarms across all patientsAuth & Health
POST /api/v1/auth/token — get JWT token
GET /health — service health checkProject Structure
Hospital_MCP/
├── enterprise_platform.py # Streamlit UI — all 6 pages
├── main.py # FastAPI application
├── config.py # Settings / environment
├── requirements.txt
├── docker-compose.yml
├── Dockerfile.ui # Streamlit container
├── Dockerfile.api # FastAPI container
├── DEMO_SCRIPT.md # 10-step respiratory deterioration demo
│
├── simulator/
│ └── patient_monitor.py # Physiological patient simulator
│
├── mcp_server/
│ ├── mcp_server.py # MCPServer core
│ ├── models/schemas.py # Pydantic models
│ ├── tools/tool_registry.py # 10 MCP tools
│ ├── routers/
│ │ ├── auth.py
│ │ ├── health.py
│ │ ├── mcp_tools.py
│ │ ├── vitals_ws.py # WebSocket streaming
│ │ └── copilot_router.py # AI Copilot endpoint
│ ├── copilot/
│ │ └── workflow.py # MCP-RAG-Claude orchestrator
│ ├── rag/
│ │ ├── pipeline.py # TF-IDF retrieval pipeline
│ │ └── knowledge/
│ │ ├── sepsis_protocol.md
│ │ ├── respiratory_protocol.md
│ │ ├── alarm_management_policy.md
│ │ └── device_troubleshooting.md
│ ├── security/
│ │ ├── audit_logger.py # HIPAA audit logging
│ │ └── authorization.py # RBAC
│ └── database/
│ ├── connection.py
│ └── models.py
│
├── tests/
│ ├── test_tools_integration.py
│ ├── test_rag.py
│ ├── test_copilot.py
│ └── test_simulator.py
│
└── demo_audit_logs/ # HIPAA audit JSONL filesDesign Decisions
Simulator over mock data: Real physiological trajectories (1%/90s SpO2 decline, NEWS2 real-time, 5 clinical scenarios) make the demo verifiable and interview-ready.
TF-IDF RAG over embeddings: Zero-latency at import, no external API calls, deterministic retrieval. Scikit-learn when available, pure Python fallback. Embeddings (pgvector) can replace this for production without changing the interface.
Safety guardrails as code not prompt: Advisory framing and prohibited language detection are Python functions that run on every response regardless of LLM output. The LLM cannot bypass them.
HIPAA audit logging first: Every tool call is logged before the response is sent. Audit completeness is guaranteed even if the response itself fails.
Demo
See DEMO_SCRIPT.md for the full 10-step respiratory deterioration walkthrough.
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