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An expert study evaluating the UMLS lexical metaschema

机译:评估UMLS词汇元模式的专家研究

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Objective: A metaschema is an abstraction network of the UMLS's semantic network (SN) obtained from a connected partition of its collection of semantic types. A lexical metaschema was previously derived based on a lexical partition which partitioned the SN into semantic-type groups using identical word-usage among the names of semantic types and the definitions of their respective children. In this paper, a statistical analysis methodology is presented to evaluate the lexical metaschema based on a study involving a group of established UMLS experts. Methods: In the study, each expert was asked to identify subject areas of the SN based on his or her understanding of the various semantic types. For this purpose, the expert scans the SN hierarchy top-down, identifying semantic types, which are important and different enough from their parent semantic types, as roots of their groups. From the response of each expert, an "expert metaschema" is constructed. The different experts' metaschemas can vary widely. So, additional metaschemas are obtained from aggregations of the experts' responses. Of special interest is the consensus metaschema which represents an aggregation of a simple majority of the experts' responses. Statistical analysis comparing the lexical metaschema with the experts' metaschemas and the consensus metaschema is presented. Results: The analysis results shows that 17 out of the 21 meta-semantic types in the lexical metaschema also appear in the consensus metaschema (about 81%). There are 107 semantic types (about 79%) covered by identical meta-semantic types and refinements. The results show the high similarity between the two metaschemas. Furthermore, the statistical analysis shows that the lexical metaschema did not grossly underperform compared to the experts. Conclusion: Our study shows that the lexical metaschema provides a good approximation for a partition of meaningful subject areas in the SN, when compared to the consensus metaschema capturing the aggregation of a simple majority of the human experts' opinions.
机译:目的:元模式是UMLS语义网络(SN)的抽象网络,它是从其语义类型集合的连接分区中获得的。先前基于一个词法分区派生了一个词法元模式,该词法使用语义类型名称及其各自子级的定义中的相同单词用法将SN划分为语义类型组。在本文中,提出了一种统计分析方法,该方法基于一项涉及一组已建立的UMLS专家的研究来评估词汇元模式。方法:在研究中,要求每位专家根据其对各种语义类型的理解来确定SN的主题区域。为此,专家自上而下扫描SN层次结构,以将语义类型识别为重要的语义类型,这些语义类型与其父级语义类型足够重要且有足够的区别,以此作为其组的根。根据每个专家的回应,构建了“专家元模式”。不同专家的metachemas差异很大。因此,可以从专家反应的汇总中获得更多的metaschemas。特别令人感兴趣的是共识metaschema,它代表了专家大多数简单回应的集合。进行了统计分析,比较了词汇元模式与专家的元模式和共识元模式。结果:分析结果表明,词汇元模式的21种元语义类型中有17种也出现在共识元模式中(约81%)。相同的元语义类型和改进涵盖了107种语义类型(约占79%)。结果表明两种metschemas之间的高度相似性。此外,统计分析表明,与专家相比,词汇元模式并没有明显落后。结论:我们的研究表明,与捕获了大多数人类专家意见的共识的共识元模式相比,词汇元模式为SN中有意义的主题区域的划分提供了很好的近似。

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