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An evaluation of the usefulness of two terminology models for integrating nursing diagnosis concepts into SNOMED Clinical Terms~(~R)

机译:评估两种术语模型将护理诊断概念整合到SNOMED临床术语中的有效性〜(〜R)

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摘要

Objectives: We evaluated the usefulness of two models for integrating nursing diagnosis concepts into SNOMED Clinical Terms (CT). Methods: First, we dissected nursing diagnosis term phrases from two source terminologies (North American Nursing Diagnosis Association Taxonomy 1 (NANDA) and Omaha System) into the semantic categories of the European Committee for Standardization (CEN) categorical structure and ISO reference terminology model (RTM). Second, we critically analyzed the similarities between the semantic links in the CEN and ISO models and the semantic links used to formally define diagnostic concepts in SNOMED CT. Results: Our findings demonstrated that focus, bearer/subject of information, and judgment were present in 100% of the NANDA and Omaha term phrases. The Omaha term phrases contained no additional descriptors beyond those considered mandatory in the CEN and ISO models. The comparison among the semantic links showed that SNOMED CT currently contains all but one of the semantic links needed to model the two source terminologies for integration. In conclusion, our findings support the potential utility of the CEN and ISO models for integrating nursing diagnostic concepts into SNOMED CT.
机译:目的:我们评估了两种将护理诊断概念整合到SNOMED临床术语(CT)中的模型的有用性。方法:首先,我们将护理诊断术语​​短语从两个来源术语(北美护理诊断协会分类法1(NANDA)和奥马哈系统)中分解为欧洲标准化委员会(CEN)的分类结构和ISO参考术语模型的语义类别( RTM)。其次,我们严格分析了CEN和ISO模型中的语义链接与SNOMED CT中用于正式定义诊断概念的语义链接之间的相似性。结果:我们的发现表明,焦点,信息的承载/主题和判断存在于NANDA和Omaha术语短语的100%中。除了在CEN和ISO模型中被认为是强制性的那些描述符外,奥马哈术语短语不包含其他任何描述符。语义链接之间的比较表明,SNOMED CT当前包含对两个源术语进行建模所需的语义链接,但其中只有一个。总之,我们的发现支持CEN和ISO模型将护理诊断概念整合到SNOMED CT中的潜在用途。

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