Exploring Representations for Singular and Multi-Concept Relations for Biomedical Named Entity Normalization.

Clint Cuffy, Evan French, Sophia Fehrmann, Bridget T McInnes
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Abstract

Since the rise of the COVID-19 pandemic, peer-reviewed biomedical repositories have experienced a surge in chemical and disease related queries. These queries have a wide variety of naming conventions and nomenclatures from trademark and generic, to chemical composition mentions. Normalizing or disambiguating these mentions within texts provides researchers and data-curators with more relevant articles returned by their search query. Named entity normalization aims to automate this disambiguation process by linking entity mentions onto their appropriate candidate concepts within a biomedical knowledge base or ontology. We explore several term embedding aggregation techniques in addition to how the term's context affects evaluation performance. We also evaluate our embedding approaches for normalizing term instances containing one or many relations within unstructured texts.

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生物医学命名实体归一化中奇异和多概念关系的表示探讨。
自2019冠状病毒病大流行以来,同行评审的生物医学知识库经历了化学和疾病相关查询的激增。这些查询具有各种各样的命名约定和命名法,从商标和通用到提到的化学成分。对文本中的这些提及进行规范化或消除歧义,可以为研究人员和数据管理员提供通过搜索查询返回的更多相关文章。命名实体规范化旨在通过将实体提及链接到生物医学知识库或本体中的适当候选概念,从而自动化此消歧过程。除了术语上下文如何影响评估性能外,我们还探讨了几种术语嵌入聚合技术。我们还评估了在非结构化文本中包含一个或多个关系的术语实例规范化的嵌入方法。
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