Semantic features of an enterprise interface terminology for SNOMED RT.

Research output: Chapter in Book/Report/Conference proceedingChapter

7 Citations (Scopus)

Abstract

OBJECTIVE: To evaluate the utility of SNOMED RT in support of a natural language interface for encoding of clinical assessments. METHOD: Using a random sample of clinical terms from the UNMC Lexicon, I mapped the terminology into canonical data entries using SNOMED RT. Working from the source term language, I evaluated lexical mapping to the SNOMED term set, and the function of the SNOMED RT semantic network in support of a language-based clinical coding interface. RESULTS: Ambiguity in the source terms was low at 0.3%. Lexical (language-based) mapping could account for only 48.8% of meaning from the source terms. The RT semantic network accounted for 39.5% of meaning, and supplementing the lexical map this led to 80.2% capture of source content. Error rates in the segment of RT which I reviewed were low at 0.6%. 97.6% of source content could be accurately captured in SNOMED RT. CONCLUSION: SNOMED RT supported an accurate and reliable representation of clinical assessment data in this sample. The semantic network of RT substantially enhanced the encoding of concepts relative to lexical mapping. However these data suggest that natural language encoding with SNOMED RT in an enterprise environment is unlikely at this time.

Original languageEnglish (US)
Title of host publicationMedinfo. MEDINFO
Pages82-85
Number of pages4
Volume10
EditionPt 1
StatePublished - 2001

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Systematized Nomenclature of Medicine
Semantics
Terminology
Language
Clinical Coding

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Campbell, J. R. (2001). Semantic features of an enterprise interface terminology for SNOMED RT. In Medinfo. MEDINFO (Pt 1 ed., Vol. 10, pp. 82-85)

Semantic features of an enterprise interface terminology for SNOMED RT. / Campbell, James R.

Medinfo. MEDINFO. Vol. 10 Pt 1. ed. 2001. p. 82-85.

Research output: Chapter in Book/Report/Conference proceedingChapter

Campbell, JR 2001, Semantic features of an enterprise interface terminology for SNOMED RT. in Medinfo. MEDINFO. Pt 1 edn, vol. 10, pp. 82-85.
Campbell JR. Semantic features of an enterprise interface terminology for SNOMED RT. In Medinfo. MEDINFO. Pt 1 ed. Vol. 10. 2001. p. 82-85
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