Quality assurance of UMLS semantic type assignments using SNOMED CT hierarchies

Document Type

Article

Publication Date

1-1-2016

Abstract

Background: The Unified Medical Language System (UMLS) is one of the largest biomedical terminological systems, with over 2.5 million concepts in its Metathesaurus repository. The UMLS’s Semantic Network (SN) with its collection of 133 high-level semantic types serves as an abstraction layer on top of the Metathesaurus. In particular, the SN elaborates an aspect of the Metathesaurus’s concepts via the assignment of one or more types to each concept. Due to the scope and complexity of the Metathesaurus, errors are all but inevitable in this semantic-type assignment process. Objectives: To develop a semi-automated methodology to help assure the quality of semantic-type assignments within the UMLS. Methods: The methodology uses a crossvalidation strategy involving SNOMED CT’s hierarchies in combination with UMLS se-mantic types. Semantically uniform, disjoint concept groups are generated programmatically by partitioning the collection of all concepts in the same SNOMED CT hierarchy according to their respective semantic-type assignments in the UMLS. Domain experts are then called upon to review the concepts in any group having a small number of concepts. It is our hypothesis that a semantictype assignment combination applicable only to a very small number of concepts in a SNOMED CT hierarchy is an indicator of potential problems. Results: The methodology was applied to the UMLS 2013AA release along with the SNOMED CT from January 2013. An overall error rate of 33% was found for concepts proposed by the quality-assurance methodology. Supporting our hypothesis, that number was four times higher than the error rate found in control samples. Conclusion: The results show that the quality-assurance methodology can aid in effective and efficient identification of UMLS semantic-type assignment errors.

Identifier

84961784087 (Scopus)

Publication Title

Methods of Information in Medicine

External Full Text Location

https://doi.org/10.3414/ME14-01-0104

ISSN

00261270

PubMed ID

25925776

First Page

158

Last Page

165

Issue

2

Volume

55

Grant

R01CA190779

Fund Ref

National Cancer Institute

This document is currently not available here.

Share

COinS