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Integrative network alignment reveals large regions of global network similarity in yeast and human

机译:整合的网络比对揭示了酵母和人类中全球网络相似性的大区域

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Motivation: High-throughput methods for detecting molecular interactions have produced large sets of biological network data with much more yet to come. Analogous to sequence alignment, efficient and reliable network alignment methods are expected to improve our understanding of biological systems. Unlike sequence alignment, network alignment is computationally intractable. Hence, devising efficient network alignment heuristics is currently a foremost challenge in computational biology.Results: We introduce a novel network alignment algorithm, called Matching-based Integrative GRAph ALigner (MI-GRAAL), which can integrate any number and type of similarity measures between network nodes (e. g. proteins), including, but not limited to, any topological network similarity measure, sequence similarity, functional similarity and structural similarity. Hence, we resolve the ties in similarity measures and find a combination of similarity measures yielding the largest contiguous (i.e. connected) and biologically sound alignments. MI-GRAAL exposes the largest functional, connected regions of protein-protein interaction (PPI) network similarity to date: surprisingly, it reveals that 77.7% of proteins in the baker's yeast high-confidence PPI network participate in such a subnetwork that is fully contained in the human high-confidence PPI network. This is the first demonstration that species as diverse as yeast and human contain so large, continuous regions of global network similarity. We apply MI-GRAAL's alignments to predict functions of un-annotated proteins in yeast, human and bacteria validating our predictions in the literature. Furthermore, using network alignment scores for PPI networks of different herpes viruses, we reconstruct their phylogenetic relationship. This is the first time that phylogeny is exactly reconstructed from purely topological alignments of PPI networks.
机译:动机:用于检测分子相互作用的高通量方法已产生了大量的生物网络数据,并且还有很多。类似于序列比对,有效和可靠的网络比对方法有望增进我们对生物系统的了解。与序列比对不同,网络比对在计算上是棘手的。因此,设计有效的网络对齐启发式方法目前是计算生物学中的首要挑战。网络节点(例如蛋白质),包括但不限于任何拓扑网络相似性度量,序列相似性,功能相似性和结构相似性。因此,我们解决了相似性度量中的联系,并找到了相似性度量的组合,这些组合产生了最大的连续(即连接)和生物学上合理的对齐方式。 MI-GRAAL揭示了迄今为止最大的蛋白质-蛋白质相互作用(PPI)网络相似性功能连接区域:令人惊讶的是,它揭示了面包酵母高可信度PPI网络中77.7%的蛋白质参与了这样一个完全包含的子网络在人类高信心PPI网络中。这是第一个证明,包括酵母和人类在内的多种物种包含如此大而连续的全球网络相似性区域。我们应用MI-GRAAL的比对来预测酵母,人和细菌中未注释蛋白的功能,从而验证了我们在文献中的预测。此外,使用不同疱疹病毒的PPI网络的网络比对分数,我们重建了它们的系统发育关系。这是首次从纯PPI网络的拓扑比对中准确重建系统发育。

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