GOAnnotator: linking protein GO annotations to evidence text.

Francisco M Couto, Mário J Silva, Vivian Lee, Emily Dimmer, Evelyn Camon, Rolf Apweiler, Harald Kirsch, Dietrich Rebholz-Schuhmann
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引用次数: 73

Abstract

Background: Annotation of proteins with gene ontology (GO) terms is ongoing work and a complex task. Manual GO annotation is precise and precious, but it is time-consuming. Therefore, instead of curated annotations most of the proteins come with uncurated annotations, which have been generated automatically. Text-mining systems that use literature for automatic annotation have been proposed but they do not satisfy the high quality expectations of curators.

Results: In this paper we describe an approach that links uncurated annotations to text extracted from literature. The selection of the text is based on the similarity of the text to the term from the uncurated annotation. Besides substantiating the uncurated annotations, the extracted texts also lead to novel annotations. In addition, the approach uses the GO hierarchy to achieve high precision. Our approach is integrated into GOAnnotator, a tool that assists the curation process for GO annotation of UniProt proteins.

Conclusion: The GO curators assessed GOAnnotator with a set of 66 distinct UniProt/SwissProt proteins with uncurated annotations. GOAnnotator provided correct evidence text at 93% precision. This high precision results from using the GO hierarchy to only select GO terms similar to GO terms from uncurated annotations in GOA. Our approach is the first one to achieve high precision, which is crucial for the efficient support of GO curators. GOAnnotator was implemented as a web tool that is freely available at http://xldb.di.fc.ul.pt/rebil/tools/goa/.

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GOAnnotator:将蛋白质GO注释链接到证据文本。
背景:用基因本体(GO)术语标注蛋白质是一项正在进行的工作,也是一项复杂的任务。手工GO标注精确、宝贵,但耗时长。因此,大多数蛋白质都带有自动生成的非精选注释,而不是精选注释。已经提出了使用文献进行自动注释的文本挖掘系统,但它们不能满足策展人的高质量期望。结果:在本文中,我们描述了一种将未经整理的注释与从文献中提取的文本联系起来的方法。文本的选择基于文本与来自未整理注释的术语的相似性。除了证实未经整理的注释,提取的文本也导致新的注释。此外,该方法利用GO层次结构实现了较高的精度。我们的方法被整合到GOAnnotator中,这是一个帮助UniProt蛋白GO注释管理过程的工具。结论:GO管理员使用一组66个不同的UniProt/SwissProt蛋白和未编辑的注释来评估GOAnnotator。GOAnnotator以93%的准确率提供了正确的证据文本。这种高精度的结果来自于使用GO层次结构只选择与GOA中未策划注释中的GO术语相似的GO术语。我们的方法是第一个实现高精度的方法,这对于GO策展人的有效支持至关重要。GOAnnotator是作为一个web工具实现的,可以在http://xldb.di.fc.ul.pt/rebil/tools/goa/上免费获得。
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