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Associating Protein Domains with Biological Functions: A Tripartite Network Approach

机译:将蛋白质结构域与生物学功能相关联:三方网络方法

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Protein domains are key determinants of protein function. However, a large number of domains have no recorded functional annotation. These domains of unknown function (DUFs) are a recognised problem and efforts have been made to remedy this situation, including the use of data such as structural and sequence similarity and annotation data such as that of Gene Ontology (GO) and The Enzyme Commission. Here, we present a new approach based on tripartite network analysis to assign functional terms to DUFs. We combine functional annotation at the protein level, taken from GO, KEGG, Reactome and UniPath-way, with structural domain annotation, taken from the CATH-Gene3D resource. We validate our method using 10-fold cross-validation and find it performs well when assigning annotation from the UniPathway, Reactome and GO resources, but less well for KEGG. We also explored using a finer functional subclassification of CATH superfamilies (FunFams) but these families were found to be too specific in this context.
机译:蛋白质结构域是蛋白质功能的关键决定因素。但是,大量域没有记录的功能注释。这些未知函数(DUFS)的域名是一个公认的问题,并且已经做出了解决这种情况,包括使用数据,例如结构和序列相似性和注释数据,例如基因本体(GO)和酶委员会。在这里,我们提出了一种基于三方网络分析的新方法,以将功能术语分配给DUFS。我们将蛋白质水平的功能注释结合起来,从Go,Kegg,Reactome和UniPath-途中取自Cath-Gene3D资源的结构域注释。我们使用10倍的交叉验证验证我们的方法,并在分配UniPathway,反应和Go资源时,它在分配注释时表现良好,但对于Kegg来说越来越少。我们还探讨了Cath Superfamilies(Funfams)的更精细的功能子类化,但这些家庭在这种情况下被发现太具体了。

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