Conceptual mapping of user's queries to medical subject headings.

Y L Zieman, H L Bleich
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Abstract

This paper describes a way to map users' queries to relevant Medical Subject Headings (MeSH terms) used by the National Library of Medicine to index the biomedical literature. The method, called SENSE (SEarch with New SEmantics), transforms words and phrases in the users' queries into primary conceptual components and compares these components with those of the MeSH vocabulary. Similar to the way in which most numbers can be split into numerical factors and expressed as their product--for example, 42 can be expressed as 2*21, 6*7, 3*14, 2*3*7,--so most medical concepts can be split into "semantic factors" and expressed as their juxtaposition. Note that if we split 42 into its primary factors, the breakdown is unique: 2*3*7. Similarly, when we split medical concepts into their "primary semantic factors" the breakdown is also unique. For example, the MeSH term 'renovascular hypertension' can be split morphologically into reno, vascular, hyper, and tension--morphemes that can then be translated into their primary semantic factors--kidney, blood vessel, high, and pressure. By "factoring" each MeSH term in this way, and by similarly factoring the user's query, we can match query to MeSH term by searching for combinations of common factors. Unlike UMLS and other methods that match at the level of words or phrases, SENSE matches at the level of concepts; in this way, a wide variety of words and phrases that have the same meaning produce the same match. Now used in PaperChase, the method is surprisingly powerful in matching users' queries to Medical Subject Headings.

用户查询到医学主题标题的概念映射。
本文描述了一种将用户查询映射到国家医学图书馆用于索引生物医学文献的相关医学主题词(MeSH术语)的方法。这种方法被称为SENSE (SEarch with New SEmantics),它将用户查询中的单词和短语转换成主要的概念组件,并将这些组件与MeSH词汇表中的组件进行比较。类似于大多数数字可以被分解成数字因子并表示为它们的乘积的方式——例如,42可以被表示为2* 21,6 * 7,3 * 14,2 *3*7,——所以大多数医学概念可以被分解成“语义因子”并表示为它们的并置。注意,如果我们把42分解成它的主要因子,分解是唯一的:2*3*7。同样,当我们将医学概念分解为“主要语义因素”时,这种分解也是独特的。例如,MeSH术语“肾血管性高血压”可以在形态学上分为reno、vascular、hyper和tension——这些语素可以翻译成它们的主要语义因子——kidney、blood vessel、high和pressure。通过以这种方式“分解”每个MeSH术语,并通过类似地分解用户的查询,我们可以通过搜索公共因子的组合来匹配查询和MeSH术语。与UMLS和其他在单词或短语级别匹配的方法不同,SENSE在概念级别匹配;通过这种方式,具有相同含义的各种单词和短语产生相同的匹配。现在在PaperChase中使用,该方法在将用户查询与医学主题标题匹配方面非常强大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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