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临床模型的语义增强以实现语义互操作性。心力衰竭总结用例。

Semantic enrichment of clinical models towards semantic interoperability. The heart failure summary use case.

机构信息

Institute for Medical Informatics, Statistics and Documentation, Medical University of Graz, Graz, Austria

Academic Medical Center, University of Amsterdam, Amsterdam, The Netherlands

出版信息

J Am Med Inform Assoc. 2015 May;22(3):565-76. doi: 10.1093/jamia/ocu013. Epub 2015 Feb 10.

Abstract

OBJECTIVE

To improve semantic interoperability of electronic health records (EHRs) by ontology-based mediation across syntactically heterogeneous representations of the same or similar clinical information.

MATERIALS AND METHODS

Our approach is based on a semantic layer that consists of: (1) a set of ontologies supported by (2) a set of semantic patterns. The first aspect of the semantic layer helps standardize the clinical information modeling task and the second shields modelers from the complexity of ontology modeling. We applied this approach to heterogeneous representations of an excerpt of a heart failure summary.

RESULTS

Using a set of finite top-level patterns to derive semantic patterns, we demonstrate that those patterns, or compositions thereof, can be used to represent information from clinical models. Homogeneous querying of the same or similar information, when represented according to heterogeneous clinical models, is feasible.

DISCUSSION

Our approach focuses on the meaning embedded in EHRs, regardless of their structure. This complex task requires a clear ontological commitment (ie, agreement to consistently use the shared vocabulary within some context), together with formalization rules. These requirements are supported by semantic patterns. Other potential uses of this approach, such as clinical models validation, require further investigation.

CONCLUSION

We show how an ontology-based representation of a clinical summary, guided by semantic patterns, allows homogeneous querying of heterogeneous information structures. Whether there are a finite number of top-level patterns is an open question.

摘要

目的

通过基于本体的中介在相同或相似临床信息的句法异构表示之间提高电子健康记录 (EHR) 的语义互操作性。

材料与方法

我们的方法基于一个语义层,该语义层由以下部分组成:(1) 一组由 (2) 一组语义模式支持的本体。语义层的第一个方面有助于规范临床信息建模任务,第二个方面使建模人员免受本体建模的复杂性的影响。我们将这种方法应用于心力衰竭摘要的摘录的异构表示形式。

结果

使用一组有限的顶级模式来派生语义模式,我们证明这些模式或其组合可以用于表示来自临床模型的信息。根据异构临床模型表示的相同或相似信息的同质查询是可行的。

讨论

我们的方法侧重于 EHR 中嵌入的含义,而不考虑其结构。这项复杂的任务需要明确的本体承诺(即在某些上下文中一致使用共享词汇)以及形式化规则。语义模式支持这些要求。这种方法的其他潜在用途,例如临床模型验证,需要进一步研究。

结论

我们展示了如何通过语义模式指导对临床摘要进行基于本体的表示,从而实现对异构信息结构的同质查询。顶级模式是否有有限数量是一个悬而未决的问题。

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