面向患者的临床试验通过关联开放数据的语义集成进行搜索

Bonnie K. MacKellar, Christina Schweikert, Soon Ae Chun
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引用次数: 5

摘要

面临严重疾病的患者通常希望能够搜索相关的临床试验,以获得新的或更有效的替代治疗方法。事实上,为了这个目的,NIH把所有的试验都放在了一个网站上。然而,它的搜索功能很难使用,并且需要患者在冗长的文本描述中筛选相关信息。我们的总体目标是建立一个系统,允许更多的病人为中心的临床试验搜索设施。在本文中,我们提出了一种使用RDF三元组的语义集成方法,通过链接不同的关联开放数据(如NIH提供的临床试验以及药物副作用数据集SIDER)来开发集成的临床试验知识表示。集成模型使用UMLS将来自不同来源的概念与一致的语义和本体论知识联系起来。我们的原型系统提供的面向患者的功能包括具有推理能力的语义搜索和查询,以及语义链接浏览,其中对一个概念的探索可以通过链接轻松地导致其他概念,从而为最终用户提供可视化搜索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Patient-oriented clinical trials search through semantic integration of Linked Open Data
Patients facing a serious disease often want to be able to search for relevant clinical trials for new or more effective alternative treatments. The NIH makes all of its trials available on a website, in fact, for this purpose. Its search facility, however, is difficult to use and requires the patient to sift through lengthy text descriptions for relevant information. Our overall aim is to build a system that allows for a more patient-focused clinical trial search facility. In this paper, we present a semantic integration approach using RDF triples to develop an integrated clinical trial knowledge representation, by linking different Linked Open Data such as clinical trials provided by NIH as well as the drug side effects dataset SIDER. The integration model uses UMLS to link concepts from different sources with consistent semantics and ontological knowledge. Patient-oriented functions that our prototype system provides include semantic search and query with reasoning ability, and semantic-link browsing where an exploration of one concept leads to other concepts easily via links which can provide visual search for the end users.
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