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An Adaptive Hybrid Algorithm for Global Network Alignment

机译:全球网络对准的自适应混合算法

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It is challenging to obtain reliable and optimal mapping between networks for alignment algorithms when both nodal and topological structures are taken into consideration due to the underlying NP-hard problem. Here, we introduce an adaptive hybrid algorithm that combines the classical Hungarian algorithm and the Greedy algorithm (HGA) for the global alignment of biomolecular networks. With this hybrid algorithm, every pair of nodes with one in each network is first aligned based on node information (e.g., their sequence attributes) and then followed by an adaptive and convergent iteration procedure for aligning the topological connections in the networks. For four well-studied protein interaction networks, i.e., C.elegans, yeast, D.melanogaster, and human, applications of HGA lead to improved alignments in acceptable running time. The mapping between yeast and human PINs obtained by the new algorithm has the largest value of common gene ontology (GO) terms compared to those obtained by other existing algorithms, while it still has lower Mean normalized entropy (MNE) and good performances on several other measures. Overall, the adaptive HGA is effective and capable of providing good mappings between aligned networks in which the biological properties of both the nodes and the connections are important.
机译:当由于基本的NP-hard问题而同时考虑节点和拓扑结构时,要获得用于对齐算法的网络之间的可靠且最佳的映射是一项挑战。在这里,我们介绍了一种自适应混合算法,该算法结合了经典的匈牙利算法和贪婪算法(HGA),用于生物分子网络的全局对准。利用这种混合算法,首先基于节点信息(例如,它们的序列属性)来对齐在每个网络中具有节点的每对节点,然后是用于对齐网络中的拓扑连接的自适应且收敛的迭代过程。对于四种经过充分研究的蛋白质相互作用网络,即秀丽隐杆线虫,酵母,黑腹果蝇和人,HGA的应用可在可接受的运行时间内改善比对。与其他现有算法相比,通过新算法获得的酵母和人PIN之间的映射具有最大的公共基因本体(GO)术语值,但其平均归一化熵(MNE)仍然较低,并且在其他几个方面的性能良好措施。总体而言,自适应HGA是有效的,并且能够在对齐的网络之间提供良好的映射,在该网络中,节点和连接的生物学特性都很重要。

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