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Generative probabilistic models for protein–protein interaction networks—the biclique perspective

机译:蛋白质-蛋白质相互作用网络的生成概率模型-双斜视角

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摘要

>Motivation: Much of the large-scale molecular data from living cells can be represented in terms of networks. Such networks occupy a central position in cellular systems biology. In the protein–protein interaction (PPI) network, nodes represent proteins and edges represent connections between them, based on experimental evidence. As PPI networks are rich and complex, a mathematical model is sought to capture their properties and shed light on PPI evolution. The mathematical literature contains various generative models of random graphs. It is a major, still largely open question, which of these models (if any) can properly reproduce various biologically interesting networks. Here, we consider this problem where the graph at hand is the PPI network of Saccharomyces cerevisiae. We are trying to distinguishing between a model family which performs a process of copying neighbors, represented by the duplication–divergence (DD) model, and models which do not copy neighbors, with the Barabási–Albert (BA) preferential attachment model as a leading example.>Results: The observed property of the network is the distribution of maximal bicliques in the graph. This is a novel criterion to distinguish between models in this area. It is particularly appropriate for this purpose, since it reflects the graph's growth pattern under either model. This test clearly favors the DD model. In particular, for the BA model, the vast majority (92.9%) of the bicliques with both sides ≥4 must be already embedded in the model's seed graph, whereas the corresponding figure for the DD model is only 5.1%. Our results, based on the biclique perspective, conclusively show that a naïve unmodified DD model can capture a key aspect of PPI networks.>Contact: ; ; >Supplementary information: are available at Bioinformatics online.
机译:>动机:许多来自活细胞的大规模分子数据可以用网络表示。这样的网络在细胞系统生物学中占据中心位置。根据实验证据,在蛋白质-蛋白质相互作用(PPI)网络中,节点代表蛋白质,边缘代表它们之间的连接。由于PPI网络既丰富又复杂,因此寻求一种数学模型来捕获其属性并阐明PPI的发展。数学文献包含随机图的各种生成模型。这是一个主要的但仍在很大程度上开放的问题,这些模型中的哪一个(如果有的话)可以正确地再现各种生物学上有趣的网络。在这里,我们考虑这个问题,其中的图形是酿酒酵母的PPI网络。我们正在尝试以Barabási-Albert(BA)优先依附模型为主导,区分执行复制过程(由复制-发散(DD)模型表示)的模型族和不复制邻居的模型。 >结果:观察到的网络属性是图中最大双斜度的分布。这是区分该区域模型的新颖标准。这特别适合此目的,因为它反映了任一模型下图形的增长方式。该测试显然支持DD模型。特别是,对于BA模型,两侧(≥4)的Biclique绝大多数(92.9%)必须已经嵌入到模型的种子图中,而DD模型的相应数字仅为5.1%。我们的结果基于双斜视角,最终表明,未经修改的纯朴的DD模型可以捕获PPI网络的关键方面。>联系方式; ; >补充信息:可在线访问生物信息学。

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