• Menü menu
  • menu Menü öffnen
Publikationen
Health

Semantic Mapping of German Nursing Diagnoses in SNOMED CT: Risks and Challenges.

Beteiligte Autor*innen der JOANNEUM RESEARCH:
Autor*innen:
da Silva Marques J, Beeck E, Schnelnast A, Ammenwerth E, Stampfer P
Abstract:
BACKGROUND Nursing diagnoses and interventions are essential components of clinical documentation and patient-centered care, yet nursing data in German-speaking healthcare settings are commonly documented using local terminologies. OBJECTIVES This paper aims to analyze translation- and modeling-related challenges when mapping German nursing diagnoses to SNOMED CT. METHODS Nursing diagnoses from the DiZiMa® catalog were translated and mapped to SNOMED CT using a structured semantic mapping approach. Two large language models (ChatGPT and Microsoft Copilot) were used in parallel to support translation, guided by established principles of scientific translation. RESULTS While 98.6% of the diagnoses could be mapped to SNOMED CT, 27.2% showed semantic precision loss, particularly for risk diagnoses and context-dependent nursing concepts, often requiring postcoordination, or remaining unmapped (1.4%). CONCLUSION Semantic interoperability of nursing data requires more than direct translation or simple 1:1 mapping, highlighting the need for nursing-specific modeling strategies.
Titel:
Semantic Mapping of German Nursing Diagnoses in SNOMED CT: Risks and Challenges.
Seiten:
147-152

Publikationsreihe

Name
Studies in Health Technology and Informatics
Nummer
335
ISSN
1879-8365
Weitere Dateien und links
Jahr/Monat:
2026
/ 5

Ähnliche Publikationen

Zum Inhalt springen