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The use of graph databases, semantic technologies, and knowledge graphs for health data integration, clinical decision support, and longitudinal patient records. | The use of graph databases, semantic technologies, and knowledge graphs for health data integration, clinical decision support, and longitudinal patient records. | ||
Revision as of 17:29, 13 April 2026
The use of graph databases, semantic technologies, and knowledge graphs for health data integration, clinical decision support, and longitudinal patient records.
Overview
Knowledge graphs are increasingly recognized as a foundational technology for healthcare AI. Neo4j's research shows "healthcare leads in knowledge graphs" and CIOs "can't afford to scale AI without a knowledge graph foundation."[1] Towards Data Science notes that healthcare leads other industries in knowledge graph adoption.[2]
Key Projects
AIDAVA (EU)
AIDAVA — €7.7M Horizon Europe project (2022–2026) creating a virtual assistant for automated curation and publishing of personal health data. Uses Personal Health Knowledge Graphs (PHKG) based on SNOMED, FHIR, and LOINC ontologies. 13 partners from 9 countries. Coordinator: Maastricht University. Knowledge graph technology by Ontotext.[3]
AllegroGraph (Franz Inc.)
Franz Inc.'s AllegroGraph is a semantic graph database widely used in life sciences and healthcare. Supports RDF, SPARQL, and knowledge graph applications for clinical data integration and linked health data.[4]
Neo4j Health Applications
Neo4j, the leading graph database, has published extensively on healthcare knowledge graphs including MedQGraph (Temporal Medical Knowledge Graphs for AI-Driven Healthcare Insights) and clinical data integration patterns.[5]
GraphDB (Ontotext)
GraphDB by Ontotext (now part of Graphwise) is an enterprise knowledge graph database used in health data integration. Powers the knowledge graph backbone of AIDAVA.[6]
OHDSI / OMOP Common Data Model
The OHDSI (Observational Health Data Sciences and Informatics) community uses the OMOP Common Data Model with graph-based approaches for observational health research. Recent work includes graph visualization and validation of drug mappings using LLMs.[7]
PubMed Knowledge Graph 2.0
Connects papers, patents, and clinical trials in biomedical science using graph structures.[8]
i-HD Projects
i-HD participates in multiple projects using knowledge graph approaches for health data, including IDERHA (integration of heterogeneous data), QUANTUM (data quality labels), and SYNTHEMA (synthetic data generation).[9]
LLM + Knowledge Graphs
Large language models are increasingly used to construct and query health knowledge graphs. Nature published on "Large language model powered knowledge graph construction for mental health exploration."[10] Frontiers published on "Unlocking electronic health records: a hybrid graph RAG approach to safe clinical AI."[11]
Technology Stack
Common technologies used in health knowledge graphs:
- Graph Databases: Neo4j, GraphDB (Ontotext), AllegroGraph (Franz Inc.), Amazon Neptune
- Standards: RDF, OWL, SPARQL, SHACL
- Health Ontologies: SNOMED CT, LOINC, HL7 FHIR, ICD-10, OMOP CDM
- Integration: ETL pipelines, FHIR APIs, NLP extractors
- AI/ML: Graph neural networks, LLMs for KG construction, embedding models
See Also
- ↑ Neo4j (2025): "Why Healthcare CIOs Can't Afford to Scale AI Without a Knowledge Graph Foundation" — neo4j.com
- ↑ Towards Data Science: "Why Healthcare Leads in Knowledge Graphs"
- ↑ aidava.eu / OpenAIRE grant 101057062
- ↑ Franz Inc. — franz.com/agraph
- ↑ Neo4j — neo4j.com, MedQGraph
- ↑ PR Newswire (2024): "Semantic Web Company and Ontotext Merge to Create Knowledge Graph and AI Powerhouse Graphwise"
- ↑ medRxiv (2025): "Rx Norm for Europe — Toward the representation of medicinal products in the OMOP CDM"
- ↑ Nature (2025): "PubMed knowledge graph 2.0"
- ↑ i-hd.eu/projects
- ↑ Nature (2025)
- ↑ Frontiers (2025)