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Large-scale Exhaustive Lattice-based Structural Auditing of SNOMED CT

机译:SNOMED CT的大规模基于穷尽性格的结构审核

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摘要

One criterion for the well-formedness of ontologies is that their hierarchical structure forms a lattice. Formal Concept Analysis (FCA) has been used as a technique for assessing the quality of ontologies, but is not scalable to large ontologies such as SNOMED CT (> 300k concepts). We developed a methodology called >Lattice-based >Structural >Auditing (LaSA), for auditing biomedical ontologies, implemented through automated SPARQL queries, in order to exhaustively identify all non-lattice pairs in SNOMED CT. The percentage of non-lattice pairs ranges from 0 to 1.66 among the 19 SNOMED CT hierarchies. Preliminary manual inspection of a limited portion of the over 544k non-lattice pairs, among over 356 million candidate pairs, revealed inconsistent use of precoordination in SNOMED CT, but also a number of false positives. Our results are consistent with those based on FCA, with the advantage that the LaSA pipeline is scalable and applicable to ontological systems consisting mostly of taxonomic links.
机译:本体结构良好的一个标准是它们的层次结构形成一个格子。正式概念分析(FCA)已用作评估本体质量的技术,但无法扩展到SNOMED CT(> 300k概念)之类的大型本体。我们开发了一种称为> La 基于三次的> S 结构化> A 消化(LaSA)的方法,用于通过自动SPARQL查询在为了详尽地识别SNOMED CT中的所有非晶格对。在19个SNOMED CT层次结构中,非晶格对的百分比在0到1.66之间。初步手动检查了超过356k候选对中超过544k的非晶格对中的一小部分,发现SNOMED CT中使用的预协调不一致,但也有一些误报。我们的结果与基于FCA的结果相一致,其优势在于LaSA管道可扩展并适用于主要由生物分类链接组成的本体系统。

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