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首页> 外文期刊>Proteome science >Seed selection strategy in global network alignment without destroying the entire structures of functional modules
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Seed selection strategy in global network alignment without destroying the entire structures of functional modules

机译:全局网络调整中的种子选择策略,而不会破坏功能模块的整个结构

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摘要

Background Network alignment is one of the most common biological network comparison methods. Aligning protein-protein interaction (PPI) networks of different species is of great important to detect evolutionary conserved pathways or protein complexes across species through the identification of conserved interactions, and to improve our insight into biological systems. Global network alignment (GNA) problem is NP-complete, for which only heuristic methods have been proposed so far. Generally, the current GNA methods fall into global heuristic seed-and-extend approaches. These methods can not get the best overall consistent alignment between networks for the opinionated local seed. Furthermore These methods are lost in maximizing the number of aligned edges between two networks without considering the original structures of functional modules. Methods We present a novel seed selection strategy for global network alignment by constructing the pairs of hub nodes of networks to be aligned into multiple seeds. Beginning from every hub seed and using the membership similarity of nodes to quantify to what extent the nodes can participate in functional modules associated with current seed topologically we align the networks by modules. By this way we can maintain the functional modules are not damaged during the heuristic alignment process. And our method is efficient in resolving the fatal problem of most conventional algorithms that the initialization selected seeds have a direct influence on the alignment result. The similarity measures between network nodes (e.g., proteins) include sequence similarity, centrality similarity, and dynamic membership similarity and our algorithm can be called Multiple Hubs-based Alignment (MHA). Results When applying our seed selection strategy to several pairs of real PPI networks, it is observed that our method is working to strike a balance, extending the conserved interactions while maintaining the functional modules unchanged. In the case study, we assess the effectiveness of MHA on the alignment of the yeast and fly PPI networks. Our method outperforms state-of-the-art algorithms at detecting conserved functional modules and retrieves in particular 86% more conserved interactions than IsoRank. Conclusions We believe that our seed selection strategy will lead us to obtain more topologically and biologically similar alignment result. And it can be used as the reference and complement of other heuristic methods to seek more meaningful alignment results.
机译:背景技术网络对齐是最常见的生物网络比较方法之一。对齐不同物种的蛋白质-蛋白质相互作用(PPI)网络对于通过鉴定保守相互作用来检测物种间的进化保守途径或蛋白质复合物,以及提高我们对生物系统的洞察力至关重要。全局网络对齐(GNA)问题是NP完全问题,到目前为止,仅针对其提出了启发式方法。通常,当前的GNA方法属于全局启发式种子扩展方法。对于自以为是的本地种子,这些方法无法获得网络之间最佳的整体一致性。此外,在不考虑功能模块的原始结构的情况下,这些方法在最大化两个网络之间对齐边缘的数量方面会丢失。方法我们通过构造成对网络的集线器节点以对齐为多个种子,提出了一种用于全局网络对齐的新颖种子选择策略。从每个中心种子开始,并使用节点的成员资格相似性来量化节点可以在多大程度上参与与当前种子关联的功能模块的拓扑,我们按模块排列网络。通过这种方式,我们可以保持功能模块在启发式对齐过程中不被损坏。并且我们的方法有效地解决了大多数传统算法的致命问题,即初始化选择的种子直接影响比对结果。网络节点(例如蛋白质)之间的相似性度量包括序列相似性,中心相似性和动态成员相似性,我们的算法可以称为基于多中心的比对(MHA)。结果当将我们的种子选择策略应用于几对真实的PPI网络时,可以观察到我们的方法正在努力达到平衡,扩展了保守的相互作用,同时保持功能模块不变。在案例研究中,我们评估了MHA对酵母和果蝇PPI网络对齐的有效性。我们的方法在检测保守的功能模块方面优于最新的算法,并且与IsoRank相比,检索的保守相互作用尤其高86%。结论我们相信我们的种子选择策略将使我们获得更多的拓扑和生物学相似的比对结果。它可以用作其他启发式方法的参考和补充,以寻求更有意义的对齐结果。

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