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Using computational predictions to improve literature-based Gene Ontology annotations: a feasibility study

机译:使用计算预测来改进基于文献的基因本体论注释:可行性研究

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摘要

Annotation using Gene Ontology (GO) terms is one of the most important ways in which biological information about specific gene products can be expressed in a searchable, computable form that may be compared across genomes and organisms. Because literature-based GO annotations are often used to propagate functional predictions between related proteins, their accuracy is critically important. We present a strategy that employs a comparison of literature-based annotations with computational predictions to identify and prioritize genes whose annotations need review. Using this method, we show that comparison of manually assigned ‘unknown’ annotations in the Saccharomyces Genome Database (SGD) with InterPro-based predictions can identify annotations that need to be updated. A survey of literature-based annotations and computational predictions made by the Gene Ontology Annotation (GOA) project at the European Bioinformatics Institute (EBI) across several other databases shows that this comparison strategy could be used to maintain and improve the quality of GO annotations for other organisms besides yeast. The survey also shows that although GOA-assigned predictions are the most comprehensive source of functional information for many genomes, a large proportion of genes in a variety of different organisms entirely lack these predictions but do have manual annotations. This underscores the critical need for manually performed, literature-based curation to provide functional information about genes that are outside the scope of widely used computational methods. Thus, the combination of manual and computational methods is essential to provide the most accurate and complete functional annotation of a genome.>Database URL:
机译:使用基因本体论(GO)术语进行注释是最重要的方式之一,其中有关特定基因产物的生物学信息可以以可搜索,可计算的形式表达,可以在基因组和生物之间进行比较。由于基于文献的GO注释通常用于在相关蛋白质之间传播功能预测,因此其准确性至关重要。我们提出了一种策略,该策略采用了基于文献的注释与计算预测的比较,以识别和确定注释需要审查的基因的优先级。使用这种方法,我们表明,酵母基因组数据库(SGD)中手动分配的“未知”注释与基于InterPro的预测的比较可以识别需要更新的注释。由欧洲生物信息学研究所(EBI)的基因本体注释(GOA)项目对其他几个数据库进行的基于文献的注释和计算预测的调查显示,该比较策略可用于维护和改进GO注释的质量。除酵母菌外的其他生物。调查还显示,尽管GOA分配的预测是许多基因组功能信息的最全面来源,但各种不同生物中的很大一部分基因完全没有这些预测,但确实有人工注释。这强调了对手动执行的,基于文献的管理的迫切需要,以提供有关广泛使用的计算方法范围之外的基因的功能信息。因此,手动和计算方法的结合对于提供基因组的最准确和完整的功能注释至关重要。>数据库URL:

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