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Performance analysis and assessment of a tf-idf based archetype-SNOMED-CT binding algorithm

机译:基于TF-IDF的ARCETYPE-SNOMED-CT结合算法的性能分析与评估

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Term bindings in archetypes are at a boundary between health information models and health terminology for dual model-based electronic health-care record (EHR) systems. The development of archetypes and the population of archetypes with bound terms is in its infancy. Terminological binding is currently performed “manually” by the teams who create archetypes. This process could be made more efficient, if it was supported by automatic tools. This paper presents a method for evaluating the performance of automatic code search approaches. In order to assess the quality of the automatic search, the authors extracted all the unique bound codes from 1133 archetypes from an archetype repository. These “manually bound ”SNOMED-CT codes were compared against the codes suggested by the authors' automatic search and used for assessing the algorithm's performance in terms of accuracy and category matching. The result of this study shows a sensitivity analysis of a set of parameters relevant to the matching process.
机译:Archetypes中的术语绑定在于健康信息模型和健康术语之间的基于双模型的电子保健记录(EHR)系统之间的边界。有束缚术语的原型和原型的群体的发展在其初期。目前由创建原型的团队“手动”进行术语绑定。如果通过自动工具支持,则可以更有效地进行此过程。本文介绍了评估自动代码搜索方法性能的方法。为了评估自动搜索的质量,作者从原型存储库中提取了从1133原型的所有唯一绑定代码。将这些“手动约束”Snomed-CT代码与作者自动搜索所建议的代码进行比较,并用于评估算法在准确性和类别匹配方面的性能。该研究的结果显示了与匹配过程相关的一组参数的敏感性分析。

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