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Quality Assurance of Chemical Ingredient Classification for the National Drug File – Reference Terminology

机译:国家药品档案中化学成分分类的质量保证-参考术语

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摘要

The National Drug File – Reference Terminology (NDF-RT) is a large and complex drug terminology consisting of several classification hierarchies on top of an extensive collection of drug concepts. These hierarchies provide important information about clinical drugs, e.g., their chemical ingredients, mechanisms of action, dosage form and physiological effects. Within NDF-RT such information is represented using tens of thousands of roles connecting drugs to classifications. In previous studies, we have introduced various kinds of Abstraction Networks to summarize the content and structure of terminologies in order to facilitate their visual comprehension, and support quality assurance of terminologies.However, these previous kinds of Abstraction Networks are not appropriate for summarizing the NDF-RT classification hierarchies, due to its unique structure. In this paper, we present the novel Ingredient Abstraction Network (IAbN) to summarize, visualize and support the audit of NDF-RT’s Chemical Ingredients hierarchy and its associated drugs. A common theme in our quality assurance framework is to use characterizations of sets of concepts, revealed by the Abstraction Network structure, to capture concepts, the modeling of which is more complex than for other concepts. For the IAbN, we characterize drug ingredient concepts as more complex if they belong to IAbN groups with multiple parent groups. We show that such concepts have a statistically significantly higher rate of errors than a control sample and identify two especially common patterns of errors.
机译:国家药品档案–参考术语(NDF-RT)是一个庞大而复杂的药品术语,在广泛的药品概念集合之上,还包含几个分类层次结构。这些层次结构提供了有关临床药物的重要信息,例如其化学成分,作用机理,剂型和生理作用。在NDF-RT中,使用将药物与分类相关的数以万计的角色来表示此类信息。在以前的研究中,我们引入了各种抽象网络来概述术语的内容和结构,以促进其视觉理解并支持术语的质量保证。 -RT分类层次结构,由于其独特的结构。在本文中,我们介绍了新颖的成分抽象网络(IAbN),以总结,可视化和支持NDF-RT的化学成分层次结构及其相关药物的审核。我们的质量保证框架中的一个共同主题是使用抽象网络结构揭示的概念集的特征来捕获概念,这些概念的建模比其他概念更复杂。对于IAbN,如果药物成分概念属于具有多个父组的IAbN组,则我们将其定义为更复杂。我们证明,与对照样本相比,此类概念的错误发生率在统计学上显着更高,并且可以识别出两种特别常见的错误模式。

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