识别 SNOMED CT 中错误 IS-A 关系的自动方法。

Ran Hu, Jay Shi, Licong Cui, Rashmie Abeysinghe
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引用次数: 0

摘要

SNOMED CT 是全球使用的最全面的临床术语,提高其准确性至关重要。在这项工作中,我们引入了一种自动方法来识别 SNOMED CT 中错误的 IS-A 关系。我们首先提取链接的概念对,从中生成包含概念间差异的术语差异对(TDP)。给定一个 TDP,如果反向 TDP 也存在,并且生成该 TDP 的链接对数量少于生成反向 TDP 的链接对数量,那么我们就将前一个链接对视为潜在的错误 IS-A 关系。我们将这种方法应用于 2022 年 3 月美国版 SNOMED CT 的临床发现和程序子层次结构,得到了 52 个潜在错误的 IS-A 关系和 48 个链接对的候选列表。一位领域专家确认了 52 个关系中的 41 个(78.8%)是有效的,并从 48 个链接对中找出了 26 个错误的 IS-A 关系,证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Automated Approach for Identifying Erroneous IS-A Relations in SNOMED CT.

SNOMED CT is the most comprehensive clinical terminology employed worldwide and enhancing its accuracy is of utmost importance. In this work, we introduce an automated approach to identifying erroneous IS-A relations in SNOMED CT. We first extract linked concept-pairs from which we generate Term Difference Pairs (TDPs) that contain differences between the concepts. Given a TDP, if the reversed TDP also exists and the number of linked-pairs generating this TDP is less than those generating the reversed TDP, then we suggest the former linked-pairs as potentially erroneous IS-A relations. We applied this approach to the Clinical finding and Procedure subhierarchies of the 2022 March US Edition of SNOMED CT, and obtained 52 potentially erroneous IS-A relations and a candidate list of 48 linked-pairs. A domain expert confirmed 41 out of 52 (78.8%) are valid and identified 26 erroneous IS-A relations out of 48 linked-pairs demonstrating the effectiveness of the approach.

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