AIHCDec 3, 2013

A semi-automatic semantic method for mapping SNOMED CT concepts to VCM Icons

arXiv:1312.0750v116 citations
Originality Synthesis-oriented
AI Analysis

This addresses the challenge of integrating medical terminologies with visual languages for healthcare professionals, but it is incremental as it builds on existing compositional frameworks.

The authors tackled the problem of mapping SNOMED CT medical concepts to VCM icons by developing a semi-automatic semantic method, achieving 82 out of 100 correct mappings in expert evaluation.

VCM (Visualization of Concept in Medicine) is an iconic language for representing key medical concepts by icons. However, the use of this language with reference terminologies, such as SNOMED CT, will require the mapping of its icons to the terms of these terminologies. Here, we present and evaluate a semi-automatic semantic method for the mapping of SNOMED CT concepts to VCM icons. Both SNOMED CT and VCM are compositional in nature; SNOMED CT is expressed in description logic and VCM semantics are formalized in an OWL ontology. The proposed method involves the manual mapping of a limited number of underlying concepts from the VCM ontology, followed by automatic generation of the rest of the mapping. We applied this method to the clinical findings of the SNOMED CT CORE subset, and 100 randomly-selected mappings were evaluated by three experts. The results obtained were promising, with 82 of the SNOMED CT concepts correctly linked to VCM icons according to the experts. Most of the errors were easy to fix.

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