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Knowledge-guided inference of domain–domain interactions from incomplete protein–protein interaction networks

机译:从不完整的蛋白质-蛋白质相互作用网络进行域间相互作用的知识指导

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摘要

>Motivation: Protein-protein interactions (PPIs), though extremely valuable towards a better understanding of protein functions and cellular processes, do not provide any direct information about the regions/domains within the proteins that mediate the interaction. Most often, it is only a fraction of a protein that directly interacts with its biological partners. Thus, understanding interaction at the domain level is a critical step towards (i) thorough understanding of PPI networks; (ii) precise identification of binding sites; (iii) acquisition of insights into the causes of deleterious mutations at interaction sites; and (iv) most importantly, development of drugs to inhibit pathological protein interactions. In addition, knowledge derived from known domain–domain interactions (DDIs) can be used to understand binding interfaces, which in turn can help discover unknown PPIs.>Results: Here, we describe a novel method called K-GIDDI (knowledge-guided inference of DDIs) to narrow down the PPI sites to smaller regions/domains. K-GIDDI constructs an initial DDI network from cross-species PPI networks, and then expands the DDI network by inferring additional DDIs using a divide-and-conquer biclustering algorithm guided by Gene Ontology (GO) information, which identifies partial-complete bipartite sub-networks in the DDI network and makes them complete bipartite sub-networks by adding edges. Our results indicate that K-GIDDI can reliably predict DDIs. Most importantly, K-GIDDI's novel network expansion procedure allows prediction of DDIs that are otherwise not identifiable by methods that rely only on PPI data.>Contact: >Availability: >Supplementary information: are available at Bioinformatics online.
机译:>动机:尽管蛋白质-蛋白质相互作用(PPI)对于更好地理解蛋白质功能和细胞过程具有极高的价值,但并未提供有关介导相互作用的蛋白质区域/结构域的任何直接信息。通常,仅是蛋白质与其生物伴侣直接相互作用的一小部分。因此,在域一级理解交互是迈向(i)全面理解PPI网络的关键步骤; (ii)精确识别结合位点; (iii)深入了解相互作用部位有害突变的原因; (iv)最重要的是,开发抑制病理性蛋白质相互作用的药物。此外,从已知的域-域交互(DDI)衍生的知识可用于了解绑定接口,从而有助于发现未知的PPI。>结果:在这里,我们描述了一种称为K- GIDDI(DDI的知识指导推断)可将PPI站点缩小到较小的区域/域。 K-GIDDI从跨物种的PPI网络构建了一个初始DDI网络,然后通过使用以基因本体论(GO)信息为指导的分而治二类聚类算法来推断其他DDI,从而扩展了DDI网络,该算法识别了部分完全的二部分子-DDI网络中的网络,并通过添加边缘使它们成为完整的二分子网。我们的结果表明,K-GIDDI可以可靠地预测DDI。最重要的是,K-GIDDI新颖的网络扩展程序可以预测DDI,而DDI只能通过仅依靠PPI数据的方法来识别。>联系方式: >可用性: >补充信息:可从生物信息学在线获得。

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