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A multi-part matching strategy for mapping LOINC with laboratory terminologies

机译:用LOINC和实验室术语进行映射的多部分匹配策略

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Objective: To address the problem of mapping local laboratory terminologies to Logical Observation Identifiers Names and Codes (LOINC). To study different ontology matching algorithms and investigate how the probability of term combinations in LOINC helps to increase match quality and reduce manual effort. Materials and methods: We proposed two matching strategies: full name and multi-part. The multi-part approach also considers the occurrence probability of combined concept parts. It can further recommend possible combinations of concept parts to allow more local terms to be mapped. Three real-world laboratory databases from Taiwanese hospitals were used to validate the proposed strategies with respect to different quality measures and execution run time. A comparison with the commonly used tool, Regenstrief LOINC Mapping Assistant (RELMA) Lab Auto Mapper (LAM), was also carried out. Results: The new multi-part strategy yields the best match quality, with F-measure values between 89% and 96%. It can automatically match 70-85% of the laboratory terminologies to LOINC. The recommendation step can further propose mapping to (proposed) LOINC concepts for 9-20% of the local terminology concepts. On average, 91% of the local terminology concepts can be correctly mapped to existing or newly proposed LOINC concepts. Conclusions: The mapping quality of the multi-part strategy is significantly better than that of LAM. It enables domain experts to perform LOINC matching with little manual work. The probability of term combinations proved to be a valuable strategy for increasing the quality of match results, providing recommendations for proposed LOINC conepts, and decreasing the run time for match processing.
机译:目的:解决将本地实验室术语映射到逻辑观察标识符名称和代码(LOINC)的问题。研究不同的本体匹配算法并研究LOINC中术语组合的概率如何帮助提高匹配质量并减少人工。材料和方法:我们提出了两种匹配策略:全名和多部分。多部分方法还考虑了组合概念部分的出现概率。它还可以建议概念部分的可能组合,以允许映射更多本地术语。来自台湾医院的三个真实世界的实验室数据库用于验证有关不同质量措施和执行时间的建议策略。还与常用工具Regenstrief LOINC映射助手(RELMA)实验室自动映射器(LAM)进行了比较。结果:新的多部分策略可产生最佳的匹配质量,F度量值介于89%至96%之间。它可以自动将实验室术语的70-85%与LOINC相匹配。推荐步骤可以进一步建议映射到(提议的)LOINC概念,以获取9-20%的本地术语概念。平均而言,可以将91%的本地术语概念正确地映射到现有或新提出的LOINC概念。结论:多部分策略的映射质量明显优于LAM。它使领域专家只需很少的工作即可执行LOINC匹配。事实证明,术语组合的概率是提高匹配结果质量,为提出的LOINC概念提供建议并减少匹配处理运行时间的宝贵策略。

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