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首页> 外文期刊>Journal of medical Internet research >Discovering Clinical Information Models Online to Promote Interoperability of Electronic Health Records: A Feasibility Study of OpenEHR
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Discovering Clinical Information Models Online to Promote Interoperability of Electronic Health Records: A Feasibility Study of OpenEHR

机译:在线发现临床信息模型以促进电子病历的互操作性:OpenEHR的可行性研究

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Background Clinical information models (CIMs) enabling semantic interoperability are crucial for electronic health record (EHR) data use and reuse. Dual model methodology, which distinguishes the CIMs from the technical domain, could help enable the interoperability of EHRs at the knowledge level. How to help clinicians and domain experts discover CIMs from an open repository online to represent EHR data in a standard manner becomes important. Objective This study aimed to develop a retrieval method to identify CIMs online to represent EHR data. Methods We proposed a graphical retrieval method and validated its feasibility using an online CIM repository: openEHR Clinical Knowledge Manager (CKM). First, we represented CIMs (archetypes) using an extended Bayesian network. Then, an inference process was run in the network to discover relevant archetypes. In the evaluation, we defined three retrieval tasks (medication, laboratory test, and diagnosis) and compared our method with three typical retrieval methods (BM25F, simple Bayesian network, and CKM), using mean average precision (MAP), average precision (AP), and precision at 10 (P@10) as evaluation metrics. Results We downloaded all available archetypes from the CKM. Then, the graphical model was applied to represent the archetypes as a four-level clinical resources network. The network consisted of 5513 nodes, including 3982 data element nodes, 504 concept nodes, 504 duplicated concept nodes, and 523 archetype nodes, as well as 9867 edges. The results showed that our method achieved the best MAP (MAP=0.32), and the AP was almost equal across different retrieval tasks (AP=0.35, 0.31, and 0.30, respectively). In the diagnosis retrieval task, our method could successfully identify the models covering “diagnostic reports,” “problem list,” “patients background,” “clinical decision,” etc, as well as models that other retrieval methods could not find, such as “problems and diagnoses.” Conclusions The graphical retrieval method we propose is an effective approach to meet the uncertainty of finding CIMs. Our method can help clinicians and domain experts identify CIMs to represent EHR data in a standard manner, enabling EHR data to be exchangeable and interoperable.
机译:背景技术支持语义互操作性的临床信息模型(CIM)对于电子健康记录(EHR)数据的使用和重用至关重要。将CIM与技术领域区分开的双模型方法可以帮助实现EHR在知识水平上的互操作性。如何帮助临床医生和领域专家从开放的在线存储库中发现CIM,以标准方式表示EHR数据就变得非常重要。目的本研究旨在开发一种检索方法,以在线识别代表EHR数据的CIM。方法我们提出了一种图形检索方法,并使用在线CIM存储库openEHR临床知识管理器(CKM)验证了其可行性。首先,我们使用扩展的贝叶斯网络表示CIM(原型)。然后,在网络中运行推理过程以发现相关的原型。在评估中,我们定义了三个检索任务(药物,实验室检测和诊断),并使用平均平均精度(MAP),平均精度(AP)将我们的方法与三种典型的检索方法(BM25F,简单贝叶斯网络和CKM)进行了比较),精度为10(P @ 10)作为评估指标。结果我们从CKM下载了所有可用的原型。然后,将图形模型应用于将原型表示为四级临床资源网络。该网络由5513个节点组成,其中包括3982个数据元素节点,504个概念节点,504个重复的概念节点和523个原型节点以及9867个边。结果表明,我们的方法获得了最佳的MAP(MAP = 0.32),并且在不同的检索任务中AP几乎相等(分别为AP = 0.35、0.31和0.30)。在诊断检索任务中,我们的方法可以成功地识别出涵盖“诊断报告”,“问题列表”,“患者背景”,“临床决策”等的模型,以及其他检索方法找不到的模型,例如“问题和诊断。”结论我们提出的图形检索方法是解决发现CIM不确定性的有效方法。我们的方法可以帮助临床医生和领域专家识别以标准方式表示EHR数据的CIM,从而使EHR数据可互换和可互操作。

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