首页> 外文期刊>BMC Medical Informatics and Decision Making >Analysis of readability and structural accuracy in SNOMED CT
【24h】

Analysis of readability and structural accuracy in SNOMED CT

机译:Snomed CT中可读性和结构精度分析

获取原文
           

摘要

The increasing adoption of ontologies in biomedical research and the growing number of ontologies available have made it necessary to assure the quality of these resources. Most of the well-established ontologies, such as the Gene Ontology or SNOMED CT, have their own quality assurance processes. These have demonstrated their usefulness for the maintenance of the resources but are unable to detect all of the modelling flaws in the ontologies. Consequently, the development of efficient and effective quality assurance methods is needed. Here, we propose a series of quantitative metrics based on the processing of the lexical regularities existing in the content of the ontology, to analyse readability and structural accuracy. The readability metrics account for the ratio of labels, descriptions, and synonyms associated with the ontology entities. The structural accuracy metrics evaluate how two ontology modelling best practices are followed: (1) lexically suggest locally define (LSLD), that is, if what is expressed in natural language for humans is available as logical axioms for machines; and (2) systematic naming, which accounts for the amount of label content of the classes in a given taxonomy shared. We applied the metrics to different versions of SNOMED CT. Both readability and structural accuracy metrics remained stable in time but could capture some changes in the modelling decisions in SNOMED CT. The value of the LSLD metric increased from 0.27 to 0.31, and the value of the systematic naming metric was around 0.17. We analysed the readability and structural accuracy in the SNOMED CT July 2019 release. The results showed that the fulfilment of the structural accuracy criteria varied among the SNOMED CT hierarchies. The value of the metrics for the hierarchies was in the range of 0–0.92 (LSLD) and 0.08–1 (systematic naming). We also identified the cases that did not meet the best practices. We generated useful information about the engineering of the ontology, making the following contributions: (1) a set of readability metrics, (2) the use of lexical regularities to define structural accuracy metrics, and (3) the generation of quality assurance information for SNOMED CT.
机译:在生物医学研究中越来越越来越多的本体和越来越多的可用性本体,使有必要确保这些资源的质量。大多数既熟心的本体,如基因本体或SnoMed CT,都有自己的质量保证过程。这些已经证明了他们对维护资源的有用性,但无法检测到本体中的所有建模缺陷。因此,需要开发有效和有效的质量保证方法。在这里,我们提出了一系列基于本体内容内容中存在的词汇规则的定量度量,分析可读性和结构精度。可读性指标占与本体实体关联的标签,描述和同义词的比率。结构精度度量评估了两个本体模型建模最佳实践:(1)Lexly建议本地定义(LSLD),即如果以自然语言表达的人类以逻辑公理为机器提供; (2)系统名称,其占给定分类中的课程的标签含量的数量。我们将指标应用于Snomed CT的不同版本。可读性和结构精度度量仍然存在稳定,但可以捕获Snomed CT中的模拟决策的一些变化。 LSLD度量值的值从0.27增加到0.31,系统命名度量的值约为0.17。我们分析了2019年7月释放的Snomed CT中的可读性和结构准确性。结果表明,在环状CT层次结构中实现了结构精度标准的实现。层次结构的度量值的值在0-0.92(LSLD)和0.08-1(系统名称)的范围内。我们还确定了不符合最佳实践的案例。我们生成有关本体工程工程的有用信息,提出以下贡献:(1)一组可读性指标,(2)使用词汇规律来定义结构精度度量,并为其产生质量保证信息环状ct。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号