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GraphRAG

Explainable healthcare intelligence, grounded in your knowledge graph

Care-Intel GraphRAG translates natural language into multi-hop traversals over a governed Biolink / UMLS / SNOMED graph, then synthesizes citation-backed answers for analysts, copilots, and agents.

4Live subgraphs
1,182,733Catalog entities
1,339,060Relationships
Multi-hopGraph-native RAG

GraphRAG starter sample

Designate a sample in Super Admin → Subgraph Marketplace → Listing: Sample, or configure a free download URL in graph-products settings.

Download sample

GraphRAG, visualized

Natural-language questions resolve to multi-hop traversals over a live clinical knowledge graph — every answer traceable to the patients, conditions, drugs, trials, and providers it was grounded in.

Challenges we solve

Healthcare AI teams hit the same walls — GraphRAG on a governed knowledge graph is how we break through.

Hallucinations & unverifiable outputsAnswers without entity lineage or source documents fail regulatory review
Domain & regulatory queries failGeneric LLMs miss CMS, FDA, UMLS, payer, and provider-network context
Fragmented knowledge basesClaims, trials, providers, and ontologies live in disconnected silos
PoCs that never scaleVector-only RAG prototypes without governance, multi-hop depth, or audit trails

Our approach

We combine knowledge graphs, semantic ontologies, hybrid retrieval, and governed LLM orchestration into one enterprise workflow — the same pattern used by leading GraphRAG platforms, applied to healthcare data.

Graph-grounded retrievalEnrich LLM prompts with entities, relationships, and metadata from governed subgraph slices
Semantic enrichmentBiolink, UMLS, SNOMED alignment on every node and edge — not schema-on-read tagging
Context orchestrationFeed the LLM only verified, relevant multi-hop paths — not whole document dumps
Explainable AITrace every answer to entity lineage, relationship paths, and source provenance
Multi-model integrationOpenAI, Anthropic, Gemini, or private LLMs via Monitor API
Federated governanceRBAC, audit trails, rate limiting, and admin-governed subgraph access
Agentic workflowsEmbed GraphRAG in Super Admin agents, FindCare, or your own copilots
Production deliveryParquet, JSONL, API, and schema docs — not months of custom data engineering

The GraphRAG reference architecture

Care-Intel integrates structured healthcare data into a semantic knowledge graph that acts as the factual backbone for AI. Every GraphRAG answer is grounded in multi-hop traversals — reducing hallucinations and enabling audit-ready outputs for payer, provider, and life-sciences teams.

Ready to build a trustworthy AI foundation on governed healthcare intelligence?

Care Intel GraphRAG reference architecture

Our GraphRAG capabilities

Knowledge & semantic foundation
Biolink / UMLS / SNOMED alignment

Domain ontologies, taxonomies, and controlled vocabularies on every node and edge

Multi-hop knowledge graph (Memgraph)

Deterministic builds from CMS, FDA, trials, and payer data via Super Admin

Entity & relationship enrichment

Ownership meshes, referral networks, ontology crosswalks, composite keys

GraphRAG pipeline engineering
Hybrid retrieval

Graph traversal + embeddings over governed subgraph slices

Dynamic prompt orchestration

Verified entities and relationship paths only

Multi-model integration

Monitor API routes to your chosen LLM provider

Governance, compliance & explainability
Claim-level citations

Entity lineage, relationship paths, source documents

Provenance on every edge

Warehouse → graph build → GraphRAG output traceability

RBAC & audit trails

Permission-aware retrieval and admin-governed products

Insights, analytics & agentic workflows
Natural-language querying

Plain English over providers, drugs, conditions, trials

Subgraph products & exports

Parquet + JSONL for Snowflake, Databricks, copilots

Agent-ready API

Super Admin GraphRAG agents + corporate portal integration

GraphRAG in action

Production use cases powered by live subgraph products from our knowledge graph.

Payer & value-based care

ACO networks, provider attribution, county-level reach — multi-hop queries across MSSP participants and geographies.

Request demo →

Provider & facility intelligence

Ownership meshes, SNF-hospital affiliations, referral networks with CMS-quality signals.

Explore subgraphs →

Pharma & clinical trials

Drug–condition–trial evidence chains with MeSH, ICD-10, SNOMED crosswalks for regulatory retrieval.

Schema docs →

AI training & copilots

Parquet/JSONL multi-hop packages — nodes, edges, train.jsonl — ready for RAG fine-tuning.

Talk to us →

How Care-Intel GraphRAG compares

CapabilityTraditional vector RAGCare-Intel GraphRAG
ArchitectureVector-first with optional metadataNative graph + ontology reasoning + LLM grounding
Retrieval depthSingle-hop chunk similarityMulti-hop traversal — entities, relationships, constraints
ExplainabilityDocument citations or noneClaim-level citations, entity lineage, relationship paths
Healthcare ontologiesMinimal taggingBiolink, UMLS, SNOMED, MeSH, ICD-10 built in
Data productsAd-hoc exportsGoverned subgraph SKUs — Parquet, JSONL, schema docs, Stripe licensing
Enterprise integrationPartial, often duplicatedMonitor API · Snowflake · Databricks · Super Admin workbench

Knowledge graph foundation

Care Intel knowledge graph Biolink UMLS SNOMED architecture

GraphRAG sits on top of a production in-memory graph engine (Memgraph) built deterministically from real healthcare sources — with Biolink controlling semantics and UMLS/SNOMED enriching clinical identity.

Enterprise deployment & licensing

GraphRAG endpoints, subgraph delivery, Snowflake/Databricks exports, and custom multi-hop products.