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A Complex-based Reconstruction of the Saccharomyces cerevisiae Interactome

机译:基于复杂的酿酒酵母Interactome的重建。

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摘要

Most cellular processes are performed by proteomic units that interact with each other. These units are often stoichiometrically stable complexes comprised of several proteins. To obtain a faithful view of the protein interactome we must view it in terms of these basic units (complexes and proteins) and the interactions between them. This study makes two contributions toward this goal. First, it provides a new algorithm for reconstruction of stable complexes from a variety of heterogeneous biological assays; our approach combines state-of-the-art machine learning methods with a novel hierarchical clustering algorithm that allows clusters to overlap. We demonstrate that our approach constructs over 40% more known complexes than other recent methods and that the complexes it produces are more biologically coherent even compared with the reference set. We provide experimental support for some of our novel predictions, identifying both a new complex involved in nutrient starvation and a new component of the eisosome complex. Second, we provide a high accuracy algorithm for the novel problem of predicting transient interactions involving complexes. We show that our complex level network, which we call ComplexNet, provides novel insights regarding the protein-protein interaction network. In particular, we reinterpret the finding that “hubs” in the network are enriched for being essential, showing instead that essential proteins tend to be clustered together in essential complexes and that these essential complexes tend to be large.
机译:大多数细胞过程是由彼此相互作用的蛋白质组学单元执行的。这些单位通常是由几种蛋白质组成的化学计量稳定的复合物。为了忠实地观察蛋白质相互作用组,我们必须从这些基本单元(复合物和蛋白质)及其之间的相互作用方面对其进行观察。这项研究为实现这一目标做出了两点贡献。首先,它提供了一种从各种异质生物学分析中重建稳定复合物的新算法;我们的方法将最新的机器学习方法与新颖的分层聚类算法相结合,该算法允许聚类重叠。我们证明,与其他最新方法相比,我们的方法可构建40%以上的已知复合物,并且与参考集相比,其生成的复合物在生物学上也更加连贯。我们为我们的一些新的预测提供实验支持,既确定了涉及营养缺乏的新复合物,又确定了异构体复合物的新成分。其次,我们为预测涉及复合物的瞬态相互作用的新问题提供了一种高精度算法。我们表明,我们称为ComplexNet的复杂层次网络提供了有关蛋白质-蛋白质相互作用网络的新颖见解。特别是,我们重新解释了发现,发现网络中的“集线器”因其必不可少而得到了丰富,相反,这表明必不可少的蛋白质往往聚集在必不可少的复合物中,而这些必不可少的复合物往往很大。

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