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BIOLOGICAL NOMENCLATURES: A SOURCE OF LEXICAL KNOWLEDGE AND AMBIGUITY

机译:生物学命名:词汇知识和歧义的源泉

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There has been increased work in developing automated systems that involve natural language processing (NLP) to recognize and extract genomic information from the literature. Recognition and identification of biological entities is a critical step in this process. NLP systems generally rely on nomenclatures and ontological specifications as resources for determining the names of the entities, assigning semantic categories that are consistent with the corresponding ontology, and assignment of identifiers that map to well-defined entities within a particular nomenclature. Although nomenclatures and ontologies are valuable for text processing systems, they were developed to aid researchers and are heterogeneous in structure and semantics. A uniform resource that is automatically generated from diverse resources, and that is designed for NLP purposes would be a useful tool for the field, and would further database interoperability. This paper presents work towards this goal. We have automatically created lexical resources from four model organism nomenclature systems (mouse, fly, worm, and yeast), and have studied performance of the resources within an existing NLP system, GENIES. Using nomenclatures is not straightforward because issues concerning ambiguity, synonymy, and name variations are quite challenging. In this paper we focus mainly on ambiguity. We determined that the number of ambiguous gene names within the individual nomenclatures, across the four nomenclatures, and with general English ranged from 0%-10.18%, 1.187%-20.30%, and 0%-2.49% respectively. When actually processing text, we found the rate of ambiguous occurrences (not counting ambiguities stemming from English words) to range from 2.4%-32.9% depending on the organisms considered.
机译:在开发涉及自然语言处理(NLP)的自动化系统方面有所增加,以识别和提取文献中的基因组信息。生物实体的识别和识别是该过程中的一个关键步骤。 NLP系统通常依赖于命名法和本体规范作为用于确定实体名称的资源,分配与相应本体的语义类别一致,以及将标识符分配到特定命名中的定义内部的标识符。虽然术语和本体对文本处理系统有价值,但它们是为辅助研究人员而开发的,并且在结构和语义中是异质的。自动从各种资源生成的统一资源,并且为NLP目的而设计将是该字段的有用工具,并将进一步的数据库互操作性。本文提出了对此目标的工作。我们自动创建了来自四种模型生物命名系统(鼠标,飞,蠕虫和酵母)的词汇资源,并研究了现有的NLP系统中资源的性能,基因。使用命名法并不简单,因为有关歧义,同义词和名称变体的问题非常具有挑战性。在本文中,我们主要关注歧义。我们确定,各种命名特征,跨越四个命名法,一般英语的暧昧基因名称的数量分别为0%-10.18%,分别为1.187%-20.30%和0%-2.49%。当实际处理文本时,我们发现含糊不清的速度(不计数从英语单词源于英语单词)的速度,范围为2.4%-32.9%,具体取决于所考虑的生物。

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