CBioC: beyond a prototype for collaborative annotation of molecular interactions from the literature.

C Baral, G Gonzalez, A Gitter, C Teegarden, A Zeigler, G Joshi-Topé
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引用次数: 15

Abstract

In molecular biology research, looking for information on a particular entity such as a gene or a protein may lead to thousands of articles, making it impossible for a researcher to individually read these articles and even just their abstracts. Thus, there is a need to curate the literature to get various nuggets of knowledge, such as an interaction between two proteins, and store them in a database. However the body of existing biomedical articles is growing at a very fast rate, making it impossible to curate them manually. An alternative approach of using computers for automatic extraction has problem with accuracy. We propose to leverage the advantages of both techniques, extracting binary relationships between biological entities automatically from the biomedical literature and providing a platform that allows community collaboration in the annotation of the extracted relationships. Thus, the community of researchers that writes and reads the biomedical texts can use the server for searching our database of extracted facts, and as an easy-to-use web platform to annotate facts relevant to them. We presented a preliminary prototype as a proof of concept earlier(1). This paper presents the working implementation available for download at http://www.cbioc.org as a browser-plug in for both Internet Explorer and FireFox. This current version has been available since June of 2006, and has over 160 registered users from around the world. Aside from its use as an annotation tool, data from CBioC has also been used in computational methods with encouraging results.

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CBioC:超越文献中分子相互作用协作注释的原型。
在分子生物学研究中,寻找特定实体(如基因或蛋白质)的信息可能会导致数千篇文章,这使得研究人员不可能单独阅读这些文章,甚至只是阅读它们的摘要。因此,有必要整理文献,以获得各种知识的金块,例如两种蛋白质之间的相互作用,并将它们存储在数据库中。然而,现有的生物医学文章正在以非常快的速度增长,这使得人工管理它们变得不可能。另一种使用计算机进行自动提取的方法存在准确性问题。我们建议利用这两种技术的优势,从生物医学文献中自动提取生物实体之间的二元关系,并提供一个平台,允许社区协作对提取的关系进行注释。因此,撰写和阅读生物医学文本的研究人员社区可以使用服务器搜索我们的提取事实数据库,并作为一个易于使用的web平台来注释与他们相关的事实。我们之前展示了一个初步原型作为概念验证(1)。本文提供了可从http://www.cbioc.org下载的工作实现,作为Internet Explorer和FireFox的浏览器插件。目前的版本从2006年6月开始提供,并且拥有来自世界各地的160多名注册用户。除了用作注释工具外,CBioC的数据还用于计算方法,并取得了令人鼓舞的结果。
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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