SMART Text2FHIR 管道。

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Timothy A Miller, Andrew J McMurry, James Jones, Daniel Gottlieb, Kenneth D Mandl
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引用次数: 0

摘要

目标:实施一个开源、免费且易于部署的高通量自然语言处理模块,从临床医生笔记中提取概念,并将其映射到快速医疗保健互操作性资源(FHIR)。材料与方法:使用流行的开源 NLP 工具(Apache cTAKES),我们创建了 FHIR 资源,该资源使用修饰符扩展来表示否定和 NLP 来源,并使用另一个扩展来表示提取概念的出处。结果:SMART Text2FHIR Pipeline 是一款开源工具,通过标准软件包管理器发布,并公开了实现映射的容器映像,从而实现了临床文本到 FHIR 的随时转换。讨论由于新的互操作性法规的出台,数据流动性增加,能够输出 FHIR 的 NLP 流程可以为传输结构化和非结构化数据提供一种通用语言。这一框架对于关键的公共卫生或临床研究用例非常有价值。结论未来的工作应包括将更多类别的 NLP 提取信息映射到 FHIR 资源和其他开源 NLP 工具的映射。
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The SMART Text2FHIR Pipeline.

Objective: To implement an open source, free, and easily deployable high throughput natural language processing module to extract concepts from clinician notes and map them to Fast Healthcare Interoperability Resources (FHIR). Materials and Methods: Using a popular open-source NLP tool (Apache cTAKES), we create FHIR resources that use modifier extensions to represent negation and NLP sourcing, and another extension to represent provenance of extracted concepts. Results: The SMART Text2FHIR Pipeline is an open-source tool, released through standard package managers, and publicly available container images that implement the mappings, enabling ready conversion of clinical text to FHIR. Discussion: With the increased data liquidity because of new interoperability regulations, NLP processes that can output FHIR can enable a common language for transporting structured and unstructured data. This framework can be valuable for critical public health or clinical research use cases. Conclusion: Future work should include mapping more categories of NLP-extracted information into FHIR resources and mappings from additional open-source NLP tools.

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