Leroy G, Chen H
Management Information Systems, University of Arizona, Tucson, AZ 85721, USA.
IEEE Trans Inf Technol Biomed. 2001 Dec;5(4):261-70. doi: 10.1109/4233.966101.
This paper describes the development and testing of the Medical Concept Mapper, a tool designed to facilitate access to online medical information sources by providing users with appropriate medical search terms for their personal queries. Our system is valuable for patients whose knowledge of medical vocabularies is inadequate to find the desired information, and for medical experts who search for information outside their field of expertise. The Medical Concept Mapper maps synonyms and semantically related concepts to a user's query. The system is unique because it integrates our natural language processing tool, i.e., the Arizona (AZ) Noun Phraser, with human-created ontologies, the Unified Medical Language System (UMLS) and WordNet, and our computer generated Concept Space, into one system. Our unique contribution results from combining the UMLS Semantic Net with Concept Space in our deep semantic parsing (DSP) algorithm. This algorithm establishes a medical query context based on the UMLS Semantic Net, which allows Concept Space terms to be filtered so as to isolate related terms relevant to the query. We performed two user studies in which Medical Concept Mapper terms were compared against human experts' terms. We conclude that the AZ Noun Phraser is well suited to extract medical phrases from user queries, that WordNet is not well suited to provide strictly medical synonyms, that the UMLS Metathesaurus is well suited to provide medical synonyms, and that Concept Space is well suited to provide related medical terms, especially when these terms are limited by our DSP algorithm.
本文介绍了医学概念映射器的开发与测试,这是一种旨在通过为用户提供适合其个人查询的医学搜索词,来方便用户访问在线医学信息源的工具。我们的系统对于那些医学词汇知识不足以找到所需信息的患者,以及那些在其专业领域之外搜索信息的医学专家来说很有价值。医学概念映射器将同义词和语义相关的概念映射到用户的查询中。该系统的独特之处在于它将我们的自然语言处理工具,即亚利桑那(AZ)名词短语提取器,与人工创建的本体、统一医学语言系统(UMLS)和WordNet,以及我们计算机生成的概念空间,集成到一个系统中。我们的独特贡献源于在深度语义解析(DSP)算法中,将UMLS语义网络与概念空间相结合。该算法基于UMLS语义网络建立医学查询上下文,这使得概念空间术语能够被过滤,以便分离出与查询相关的相关术语。我们进行了两项用户研究,将医学概念映射器的术语与人类专家的术语进行了比较。我们得出结论,AZ名词短语提取器非常适合从用户查询中提取医学短语,WordNet不太适合提供严格意义上的医学同义词,UMLS元词表非常适合提供医学同义词,概念空间非常适合提供相关医学术语,尤其是当这些术语受到我们的DSP算法限制时。