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MAGNA: Maximizing Accuracy in Global Network Alignment

机译:麦格纳:最大化全球网络调整的准确性

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Motivation: Biological network alignment aims to identify similar regions between networks of different species. Existing methods compute node similarities to rapidly identify from possible alignments the high-scoring alignments with respect to the overall node similarity. But, the accuracy of the alignments is then evaluated with some other measure that is different than the node similarity used to construct the alignments. Typically, one measures the amount of conserved edges. Thus, the existing methods align similar nodes between networks hoping to conserve many edges (after the alignment is constructed!).Results: Instead, we introduce MAGNA to directly 'optimize' edge conservation while the alignment is constructed, without decreasing the quality of node mapping. MAGNA uses a genetic algorithm and our novel function for 'crossover' of two 'parent' alignments into a superior 'child' alignment to simulate a 'population' of alignments that 'evolves' over time; the 'fittest' alignments survive and proceed to the next 'generation', until the alignment accuracy cannot be optimized further. While we optimize our new and superior measure of the amount of conserved edges, MAGNA can optimize any alignment accuracy measure, including a combined measure of both node and edge conservation. In systematic evaluations against state-of-the-art methods (IsoRank, MI-GRAAL and GHOST), on both synthetic networks and real-world biological data, MAGNA outperforms all of the existing methods, in terms of both node and edge conservation as well as both topological and biological alignment accuracy
机译:动机:生物网络比对旨在确定不同物种网络之间的相似区域。现有方法计算节点相似度以从可能的对准中快速识别相对于整体节点相似性的高得分对准。但是,然后使用不同于用于构造路线的节点相似性的其他一些措施来评估路线的准确性。通常,一个度量保守边的数量。因此,现有方法在网络之间将相似的节点对齐以希望保留许多边缘(在构建对齐之后!)。结果:相反,我们引入MAGNA在构建对齐时直接``优化''边缘保留,而不会降低节点的质量映射。 MAGNA使用遗传算法和我们新颖的功能,将两个“父”序列的“交叉”转化为上级“子”序列,以模拟随时间“演变”的“种群”。 “最适合”的比对存活下来并进入下一代“新一代”,直到无法进一步优化比对精度为止。尽管我们优化了对守恒边缘数量的新的高级度量,但是MAGNA可以优化任何对齐精度度量,包括节点守恒和边缘守恒的组合度量。在针对最新方法(IsoRank,MI-GRAAL和GHOST)的系统评估中,无论是在合成网络还是在现实世界的生物学数据上,MAGNA在节点和边缘保护方面均优于所有现有方法以及拓扑和生物对齐精度

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