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Algorithmic detection of inconsistent modeling among SNOMED CT concepts by combining lexical and structural indicators

机译:通过结合词法和结构指标对SNOMED CT概念之间的建模不一致进行算法检测

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SNOMED CT is important for clinical applications, such as Electronic Health Record (EHR) encoding. However, inconsistency in modeling its concepts may prevent SNOMED CT from providing proper support for clinical use. This study provides an effective methodology for locating inconsistently modeled SNOMED CT concepts. One can expect lexically similar concepts to be modeled similarly. Positional similarity sets, sets of lexically similar concepts having only one different word at the same position of their names, are introduced. Concepts in such sets have a higher likelihood of being unjustifiably inconsistently modeled. A technique to incorporate three structural indicators into the selected sets is provided to further improve the likelihood of finding inconsistently modeled concepts. An analysis of a sample of 50 such sets and for each of these three indicators is performed. The sample of positional similarity sets is found to have 18.6% inconsistent concepts. The use of structural indicators is shown to further improve the likelihood of finding inconsistently modeled concepts up to 41.6% with high statistical significance when compared to the previous sample of positional similarity sets. Positional similarity sets with different structural indicators are shown to help identify inconsistencies in concept modeling with high likelihood. Furthermore, such sets enable the comparison of concept modeling in the context of other lexically similar concepts, which enhances the effectiveness of corrections by auditors. Such quality assurance methods can be used to supplement IHTSDO's own efforts in order to improve the quality of SNOMED CT.
机译:SNOMED CT对于临床应用非常重要,例如电子健康记录(EHR)编码。但是,建模概念上的不一致可能会阻止SNOMED CT为临床使用提供适当的支持。这项研究为定位不一致建模的SNOMED CT概念提供了一种有效的方法。人们可以期望词汇相似的概念被相似地建模。介绍了位置相似性集,即词汇相似概念的集合,在它们的名称的相同位置仅具有一个不同的单词。此类集合中的概念更有可能被不合理地不一致地建模。提供了一种将三个结构指标合并到所选集合中的技术,以进一步提高找到不一致建模概念的可能性。针对这三个指标中的每一个,对50个这样的集合的样本进行了分析。位置相似性集的样本发现有18.6%不一致的概念。与以前的位置相似性样本集相比,结构性指标的使用显示出进一步提高了发现不一致建模概念的可能性,该概念高达41.6%且具有很高的统计意义。显示了具有不同结构指标的位置相似性集,以帮助识别可能性很高的概念建模中的不一致之处。此外,这样的集合能够在其他词汇相似的概念的上下文中比较概念模型,从而提高了审核员更正的有效性。此类质量保证方法可用于补充IHTSDO自己的工作,以提高SNOMED CT的质量。

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