使用转换器自动映射术语项目。

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Alberto Purpura, Joao Bettencourt-Silva, Natasha Mulligan, Tesfaye Yadete, Kingsley Njoku, Julia Liu, Thaddeus Stappenbeck
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引用次数: 0

摘要

生物医学本体论是许多临床文本数据分析系统的关键组成部分。生物医学本体是许多临床数据文本分析系统中的关键组件,用于根据不同类别的层次结构组织特定领域的信息。每个类将概念映射到领域专家开发的术语中的项目。然后利用这些映射来组织自然语言处理(NLP)模型提取的信息,从而构建用于推论的知识图谱。然而,创建这些关联需要大量的人工审核。在本文中,我们提出了一种自动方法和可重复的框架,用于学习本体类与源自统一医学语言系统(UMLS)元词库中词汇的术语之间的映射。根据我们的评估,所提出的系统达到了接近人类的性能,与美国国家医学图书馆开发的现有系统相比有了很大改进,可以帮助研究人员完成这一过程。
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Automatic Mapping of Terminology Items with Transformers.

Biomedical ontologies are a key component in many systems for the analysis of textual clinical data. They are employed to organize information about a certain domain relying on a hierarchy of different classes. Each class maps a concept to items in a terminology developed by domain experts. These mappings are then leveraged to organize the information extracted by Natural Language Processing (NLP) models to build knowledge graphs for inferences. The creation of these associations, however, requires extensive manual review. In this paper, we present an automated approach and repeatable framework to learn a mapping between ontology classes and terminology terms derived from vocabularies in the Unified Medical Language System (UMLS) metathesaurus. According to our evaluation, the proposed system achieves a performance close to humans and provides a substantial improvement over existing systems developed by the National Library of Medicine to assist researchers through this process.

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