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An Evaluation of the NQF Quality Data Model for Representing Electronic Health Record Driven Phenotyping Algorithms

机译:NQF质量数据模型用于表示电子病历驱动表型算法的评估

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摘要

The development of Electronic Health Record (EHR)-based phenotype selection algorithms is a non-trivial and highly iterative process involving domain experts and informaticians. To make it easier to port algorithms across institutions, it is desirable to represent them using an unambiguous formal specification language. For this purpose we evaluated the recently developed National Quality Forum (NQF) information model designed for EHR-based quality measures: the Quality Data Model (QDM). We selected 9 phenotyping algorithms that had been previously developed as part of the eMERGE consortium and translated them into QDM format. Our study concluded that the QDM contains several core elements that make it a promising format for EHR-driven phenotyping algorithms for clinical research. However, we also found areas in which the QDM could be usefully extended, such as representing information extracted from clinical text, and the ability to handle algorithms that do not consist of Boolean combinations of criteria.
机译:基于电子病历(EHR)的表型选择算法的开发是一个涉及领域专家和信息学家的不平凡且高度迭代的过程。为了使跨机构移植算法更加容易,希望使用明确的正式规范语言来表示它们。为此,我们评估了最近开发的针对基于EHR的质量度量而设计的国家质量论坛(NQF)信息模型:质量数据模型(QDM)。我们选择了先前作为eMERGE联盟的一部分开发的9种表型算法,并将其转换为QDM格式。我们的研究得出的结论是,QDM包含几个核心元素,这使其成为EHR驱动的临床研究表型算法的一种有前途的格式。但是,我们还发现了可以在其中扩展QDM的区域,例如表示从临床文本中提取的信息,以及处理不包含标准布尔组合的算法的能力。

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