Login / Signup

A Querying Method over RDF-ized Health Level Seven v2.5 Messages Using Life Science Knowledge Resources.

Yoshimasa KawazoeTakeshi ImaiKazuhiko Ohe
Published in: JMIR medical informatics (2016)
The proposed methods enabled query expressions that separate knowledge resources and clinical data, thereby suggesting the feasibility for improving the usability of clinical data by enhancing the knowledge resources. We also demonstrate that when HL7 v2.5 messages are automatically converted into RDF, searches are still possible through SPARQL without modifying the structure. As such, the proposed method benefits not only our hospitals, but also numerous hospitals that handle HL7 v2.5 messages. Our approach highlights a potential of large-scale data federation techniques to retrieve clinical information, which could be applied as applications of clinical intelligence to improve clinical practices, such as adverse drug event monitoring and cohort selection for a clinical study as well as discovering new knowledge from clinical information.
Keyphrases
  • healthcare
  • electronic health record
  • adverse drug
  • primary care
  • clinical trial
  • emergency department
  • machine learning
  • big data
  • mental health
  • climate change