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Automated SNOMED CT concept and attribute relationship detection through a web-based implementation of cTAKES

机译:通过基于Web的cTAKES实施自动化的SNOMED CT概念和属性关系检测

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摘要

BackgroundInformation in Electronic Health Records is largely stored as unstructured free text. Natural language processing (NLP), or Medical Language Processing (MLP) in medicine, aims at extracting structured information from free text, and is less expensive and time-consuming than manual extraction. However, most algorithms in MLP are institution-specific or address only one clinical need, and thus cannot be broadly applied. In addition, most MLP systems do not detect concepts in misspelled text and cannot detect attribute relationships between concepts. The objective of this study was to develop and evaluate an MLP application that includes generic algorithms for the detection of (misspelled) concepts and of attribute relationships between them.
机译:电子病历中的背景信息主要存储为非结构化的自由文本。自然语言处理(NLP)或医学中的医学语言处理(MLP)旨在从自由文本中提取结构化信息,并且比手动提取便宜且耗时。但是,MLP中的大多数算法都是特定于机构的或仅满足一种临床需求,因此无法得到广泛应用。此外,大多数MLP系统不会检测拼写错误的文本中的概念,也无法检测概念之间的属性关系。这项研究的目的是开发和评估MLP应用程序,其中包括用于检测(拼写错误)概念以及它们之间的属性关系的通用算法。

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