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Functional topology in a network of protein interactions

机译:蛋白质相互作用网络中的功能拓扑

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Motivation: The building blocks of biological networks are individual protein-protein interactions (PPIs). The cumulative PPI data set in Saccharomyces cerevisiae now exceeds 78 000. Studying the network of these interactions will provide valuable insight into the inner workings of cells. Results: We performed a systematic graph theory-based analysis of this PPI network to construct computational models for describing and predicting the properties of lethal mutations and proteins participating in genetic interactions, functional groups, protein complexes and signaling pathways. Our analysis suggests that lethal mutations are not only highly connected within the network, but they also satisfy an additional property: their removal causes a disruption in network structure. We also provide evidence for the existence of alternate paths that bypass viable proteins in PPI networks, while such paths do not exist for lethal mutations. In addition, we show that distinct functional classes of proteins have differing network properties. We also demonstrate a way to extract and iteratively predict protein complexes and signaling pathways. We evaluate the power of predictions by comparing them with a random model, and assess accuracy of predictions by analyzing their overlap with MIPS database. Conclusions: Our models provide a means for understanding the complex wiring underlying cellular function, and enable us to predict essentiality, genetic interaction, function, protein complexes and cellular pathways. This analysis uncovers structure-function relationships observable in a large PPI network.
机译:动机:生物网络的基础是单独的蛋白质-蛋白质相互作用(PPI)。现在,酿酒酵母中累积的PPI数据集已超过78000。研究这些相互作用的网络将提供对细胞内部运作的宝贵见解。结果:我们对该PPI网络进行了基于系统图论的分析,以构建用于描述和预测致死突变和参与遗传相互作用,功能基团,蛋白质复合物和信号传导途径的蛋白质特性的计算模型。我们的分析表明,致命突变不仅在网络中高度相关,而且还具有其他特性:将其删除会导致网络结构中断。我们还提供了在PPI网络中绕过可行蛋白的替代途径的存在的证据,而对于致命突变则不存在此类途径。此外,我们显示蛋白质的不同功能类别具有不同的网络特性。我们还演示了提取和迭代预测蛋白质复合物和信号通路的方法。我们通过将预测与随机模型进行比较来评估预测的能力,并通过分析预测与MIPS数据库的重叠来评估预测的准确性。结论:我们的模型提供了一种理解细胞功能潜在复杂联系的方法,并使我们能够预测必需性,遗传相互作用,功能,蛋白质复合物和细胞途径。该分析揭示了在大型PPI网络中可观察到的结构-功能关系。

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