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NLP-PIER: A Scalable Natural Language Processing Indexing and Searching Architecture for Clinical Notes

机译:NLP-PIER:用于临床笔记的可扩展自然语言处理索引和搜索体系结构

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摘要

Many design considerations must be addressed in order to provide researchers with full text and semantic search of unstructured healthcare data such as clinical notes and reports. Institutions looking at providing this functionality must also address the big data aspects of their unstructured corpora. Because these systems are complex and demand a non-trivial investment, there is an incentive to make the system capable of servicing future needs as well, further complicating the design. We present architectural best practices as lessons learned in the design and implementation NLP-PIER (Patient Information Extraction for Research), a scalable, extensible, and secure system for processing, indexing, and searching clinical notes at the University of Minnesota.
机译:为了为研究人员提供全文和非结构化医疗数据(如临床记录和报告)的语义搜索,必须解决许多设计注意事项。寻求提供此功能的机构还必须解决其非结构化语料库的大数据方面。由于这些系统很复杂并且需要一笔不小的投资,因此有一种激励措施,使该系统也能够满足未来的需求,从而使设计更加复杂。我们将建筑最佳实践作为设计和实施NLP-PIER(用于研究的患者信息提取)中的经验教训进行介绍,NLP-PIER是一种可扩展,可扩展且安全的系统,用于在明尼苏达大学处理,索引和搜索临床笔记。

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