Auditing complex concepts in overlapping subsets of SNOMED
- PMID: 18998838
- PMCID: PMC2656006
Auditing complex concepts in overlapping subsets of SNOMED
Abstract
Limited resources and the sheer volume of concepts make auditing a large terminology, such as SNOMED CT, a daunting task. It is essential to devise techniques that can aid an auditor by automatically identifying concepts that deserve attention. A methodology for this purpose based on a previously introduced abstraction network (called the p-area taxonomy) for a SNOMED CT hierarchy is presented. The methodology algorithmically gathers concepts appearing in certain overlapping subsets, defined exclusively with respect to the p-area taxonomy, for review. The results of applying the methodology to SNOMED's Specimen hierarchy are presented. These results are compared against a control sample composed of concepts residing in subsets without the overlaps. With the use of the double bootstrap, the concept group produced by our methodology is shown to yield a statistically significant higher proportion of error discoveries.
Figures
References
-
- IHTSDO: SNOMED CTAvailable at http://www.ihtsdo.org/our-standards/snomed-ct Accessed December 31, 2007.
-
- Wang Y, Halper M, Min H, Perl Y, Chen Y, Spackman KA. Structural methodologies for auditing SNOMED. JBI. 2007;40(5):561–581. - PubMed
-
- Ceusters W, Smith B, Kumar A, Dhaen C. Ontology-based error detection in SNOMED-CT. In: Fieschi M, Coiera E, Li YC, editors. Proc. Med-info 2004; San Francisco, CA. 2004. pp. 482–486. - PubMed
Publication types
MeSH terms
Grants and funding
LinkOut - more resources
Full Text Sources
Other Literature Sources