连字符

IF 0.9 4区 文学 N/A LANGUAGE & LINGUISTICS
Terminology Pub Date : 2018-05-31 DOI:10.1075/term.00015.tho
Paul Thompson, S. Ananiadou
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引用次数: 2

摘要

叙述性临床记录和生物医学文章构成了关于表型的丰富信息来源,即区分具有特定医疗条件的个体与一般人群的标记。表型帮助临床医生提供个性化治疗。然而,在庞大的文档存储库中定位有关它们的信息是困难的,因为每个表型概念可以以多种方式提到。规范化方法自动将不同的短语映射到特定领域术语中的唯一概念,从而允许对感兴趣的概念的所有提及进行定位和链接。我们开发了一种混合规范化方法(连字符)来处理不同文本类型中具有广泛特征的概念提及。HYPHEN集成了各种规范化技术,可以处理表面级别的变化(例如,词序、词形或首字母缩写的差异)和词汇级别的变化(术语具有相似的含义,但可能不相关的形式)。HYPHEN在生物医学学术文本和叙述性临床记录方面都取得了稳健的表现,并且能够显著优于相关方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HYPHEN
Narrative clinical records and biomedical articles constitute rich sources of information about phenotypes, i.e., markers distinguishing individuals with specific medical conditions from the general population. Phenotypes help clinicians to provide personalised treatments. However, locating information about them within huge document repositories is difficult, since each phenotypic concept can be mentioned in many ways. Normalisation methods automatically map divergent phrases to unique concepts in domain-specific terminologies, to allow location and linking of all mentions of a concept of interest. We have developed a hybrid normalisation method (HYPHEN) to handle concept mentions with wide ranging characteristics, across different text types. HYPHEN integrates various normalisation techniques that handle surface-level variations (e.g., differences in word order, word forms or acronyms/abbreviations) and lexical-level variations (where terms have similar meanings, but potentially unrelated forms). HYPHEN achieves robust performance for both biomedical academic text and narrative clinical records, and has the ability to significantly outperform related methods.
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来源期刊
Terminology
Terminology Multiple-
CiteScore
1.60
自引率
0.00%
发文量
15
期刊介绍: Terminology is an independent journal with a cross-cultural and cross-disciplinary scope. It focusses on the discussion of (systematic) solutions not only of language problems encountered in translation, but also, for example, of (monolingual) problems of ambiguity, reference and developments in multidisciplinary communication. Particular attention will be given to new and developing subject areas such as knowledge representation and transfer, information technology tools, expert systems and terminological databases. Terminology encompasses terminology both in general (theory and practice) and in specialized fields (LSP), such as physics.
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