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NOBLE – Flexible concept recognition for large-scale biomedical natural language processing

机译:NOBLE –用于大规模生物医学自然语言处理的灵活概念识别

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摘要

BackgroundNatural language processing (NLP) applications are increasingly important in biomedical data analysis, knowledge engineering, and decision support. Concept recognition is an important component task for NLP pipelines, and can be either general-purpose or domain-specific. We describe a novel, flexible, and general-purpose concept recognition component for NLP pipelines, and compare its speed and accuracy against five commonly used alternatives on both a biological and clinical corpus.NOBLE Coder implements a general algorithm for matching terms to concepts from an arbitrary vocabulary set. The system’s matching options can be configured individually or in combination to yield specific system behavior for a variety of NLP tasks. The software is open source, freely available, and easily integrated into UIMA or GATE. We benchmarked speed and accuracy of the system against the CRAFT and ShARe corpora as reference standards and compared it to MMTx, MGrep, Concept Mapper, cTAKES Dictionary Lookup Annotator, and cTAKES Fast Dictionary Lookup Annotator.
机译:背景自然语言处理(NLP)应用程序在生物医学数据分析,知识工程和决策支持中越来越重要。概念识别是NLP管道的重要组成部分,可以是通用的或特定于领域的。我们描述了一种适用于NLP管道的新颖,灵活且通用的概念识别组件,并将其速度和准确性与生物和临床语料库上的五个常用替代方案进行了比较.NOBLE Coder实现了一种通用算法,可将术语与概念相匹配任意词汇集。可以单独或组合配置系统的匹配选项,以针对各种NLP任务产生特定的系统行为。该软件是开源的,免费提供,并且可以轻松集成到UIMA或GATE中。我们以CRAFT和ShARe语料库为参考标准对系统的速度和准确性进行了基准测试,并将其与MMTx,MGrep,Concept Mapper,cTAKES词典查找注释器和cTAKES快速词典查找注释器进行了比较。

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