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Improved functional overview of protein complexes using inferred epistatic relationships

机译:使用推断的上位关系改善蛋白质复合物的功能概述

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Background Epistatic Miniarray Profiling(E-MAP) quantifies the net effect on growth rate of disrupting pairs of genes, often producing phenotypes that may be more (negative epistasis) or less (positive epistasis) severe than the phenotype predicted based on single gene disruptions. Epistatic interactions are important for understanding cell biology because they define relationships between individual genes, and between sets of genes involved in biochemical pathways and protein complexes. Each E-MAP screen quantifies the interactions between a logically selected subset of genes (e.g. genes whose products share a common function). Interactions that occur between genes involved in different cellular processes are not as frequently measured, yet these interactions are important for providing an overview of cellular organization. Results We introduce a method for combining overlapping E-MAP screens and inferring new interactions between them. We use this method to infer with high confidence 2,240 new strongly epistatic interactions and 34,469 weakly epistatic or neutral interactions. We show that accuracy of the predicted interactions approaches that of replicate experiments and that, like measured interactions, they are enriched for features such as shared biochemical pathways and knockout phenotypes. We constructed an expanded epistasis map for yeast cell protein complexes and show that our new interactions increase the evidence for previously proposed inter-complex connections, and predict many new links. We validated a number of these in the laboratory, including new interactions linking the SWR-C chromatin modifying complex and the nuclear transport apparatus. Conclusion Overall, our data support a modular model of yeast cell protein network organization and show how prediction methods can considerably extend the information that can be extracted from overlapping E-MAP screens.
机译:背景上位微阵列分析(E-MAP)量化了对破坏基因对的生长速率的净影响,该基因对经常产生的表型可能比基于单基因破坏预测的表型更严重(阴性上位)或更少(阳性上位)。上位相互作用对于理解细胞生物学很重要,因为它们定义了各个基因之间以及生化途径和蛋白质复合物所涉及的各组基因之间的关系。每个E-MAP屏幕都会量化逻辑选择的基因子集(例如,其产物具有共同功能的基因)之间的相互作用。涉及不同细胞过程的基因之间发生的相互作用的频率不高,但是这些相互作用对于提供细胞组织概述非常重要。结果我们介绍了一种方法,用于合并重叠的E-MAP屏幕并推断它们之间的新交互。我们使用此方法以高置信度推断2240个新的强上位相互作用和34469个弱上位或中性相互作用。我们表明,预测的相互作用的准确性接近重复实验的准确性,并且像测量的相互作用一样,它们丰富了诸如共享的生化途径和敲除表型之类的特征。我们为酵母细胞蛋白复合物构建了扩展的上位图,并表明我们的新相互作用增加了先前提出的复合物间连接的证据,并预测了许多新的连接。我们在实验室中验证了许多此类方法,包括将SWR-C染色质修饰复合物与核转运装置连接起来的新相互作用。结论总体而言,我们的数据支持酵母细胞蛋白质网络组织的模块化模型,并显示预测方法如何显着扩展可从重叠E-MAP屏幕中提取的信息。

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