基于代谢途径相关性的简单图比较

Esteban Arias-Méndez, Alonso Montero-Marín, Danny Chaves-Chaves, F. Torres-Rojas
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引用次数: 2

摘要

比较两个图是一个计算困难的任务[9],[8]。在E. Arias-Mendez和F. Torres-Rojas b[7]关于代谢途径与两种新提出的简化其相关图表示比较的方法的相关性的工作之后,我们将这项工作扩展到一般图结构,作为比较它们的简单方法。这里提出的方法是将这些算法扩展到一般图。提出的第一种算法将比较图转换为线性序列,使用生物信息学的序列比对工具进行分析,并获得数字分数作为其相似性值。第二种算法包括搜索两个图之间的相等连接节点,以消除两个结构上的节点,只留下差异,作为比较的启发式。这些算法被开发为一种低成本的过程,以关联代谢途径,显示出良好的结果;建议将此信息用作更深入、更昂贵的工具使用比较的前一个分析。在这里,我们回顾一下将这项工作扩展到更一般的图数据结构中的应用。这些方法已被证明是处理结果部分列出的问题的有效方法。
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Simple Graph Comparison Inspired on Metabolic Pathway Correlation
Comparing two graphs is a computationally difficult task [9], [8]. After a work by E. Arias-Mendez and F. Torres-Rojas [7] about the correlation of metabolic pathways with two new proposed approaches to simplify the comparison of its associated graph representation, we extended this work to general graph structures as a simple way to compare them. The approach presented here is an extension of those algorithms to general graphs. The first algorithm proposed looks to transform the comparing graphs into linear sequences, to be analyzed using sequence-alignment tools from bioinformatics and get a numeric score as its value of similitude. The second proposed algorithm consists of the search of equal connected nodes between 2 graphs to eliminate then on both structures, only leaving the differences, as heuristic for comparison. These algorithms were developed as a low-cost process to correlate metabolic pathways showing good results; the suggestion is to use this information as a previous analysis to a deeper, more expensive, comparing tools use. Here we review the extension of this work as an application to a more general graph data structure. These methods have shown to be an effective way to treat the problem as listed in the results section.
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