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Enumeration of condition-dependent dense modules in protein interaction networks

机译:蛋白质相互作用网络中条件依赖的密集模块的枚举

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Motivation: Modern systems biology aims at understanding how the different molecular components of a biological cell interact. Often, cellular functions are performed by complexes consisting of many different proteins. The composition of these complexes may change according to the cellular environment, and one protein may be involved in several different processes. The automatic discovery of functional complexes from protein interaction data is challenging. While previous approaches use approximations to extract dense modules, our approach exactly solves the problem of dense module enumeration. Furthermore, constraints from additional information sources such as gene expression and phenotype data can be integrated, so we can systematically mine for dense modules with interesting profiles.Results: Given a weighted protein interaction network, our method discovers all protein sets that satisfy a user-defined minimum density threshold. We employ a reverse search strategy, which allows us to exploit the density criterion in an efficient way. Our experiments show that the novel approach is feasible and produces biologically meaningful results. In comparative validation studies using yeast data, the method achieved the best overall prediction performance with respect to confirmed complexes. Moreover, by enhancing the yeast network with phenotypic and phylogenetic profiles and the human network with tissue-specific expression data, we identified condition-dependent complex variants.
机译:动机:现代系统生物学旨在了解生物细胞的不同分子成分如何相互作用。通常,细胞功能是由许多不同蛋白质组成的复合物执行的。这些复合物的组成可能会根据细胞环境而变化,一种蛋白质可能会参与几种不同的过程。从蛋白质相互作用数据自动发现功能复合物具有挑战性。尽管以前的方法使用近似值来提取密集模块,但我们的方法恰好解决了密集模块枚举的问题。此外,可以整合来自其他信息源的约束,例如基因表达和表型数据,因此我们可以系统地挖掘具有有趣特征的密集模块。结果:给定加权蛋白质相互作用网络,我们的方法将发现满足用户以下条件的所有蛋白质集:定义的最小密度阈值。我们采用反向搜索策略,这使我们可以有效地利用密度标准。我们的实验表明,这种新方法是可行的,并会产生生物学上有意义的结果。在使用酵母数据进行的比较验证研究中,相对于已确认的复合物,该方法获得了最佳的整体预测性能。此外,通过增强具有表型和系统发育概况的酵母网络以及具有组织特异性表达数据的人源网络,我们确定了条件依赖性复杂变体。

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