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Comparative Pathway Prediction Via Unified Graph Modeling of Genomic Structure Information

机译:通过基因组结构信息的统一图建模进行比较路径预测

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Genomic information other than sequence similarity is important for comparative analysis based prediction of biological pathways. There is evidence that structure information like protein-DNA interactions and operons is very useful in improving the pathway prediction accuracy. This paper introduces a graph model that can unify the protein-DNA interaction and operon information as well as homologous relationships between involved genes. Under this model, pathway prediction corresponds to finding the maximum independent set in the model graph, which is solved efficiently via non-trivial tree decomposition-based techniques. The developed algorithm is evaluated based on the prediction of 30 pathways in E. coli K12 using those in B. subtilis 168 as templates. The overall accuracy of the new method outperforms those based solely on sequence similarity or using different categories of structure information separately.
机译:除基于序列相似性外的基因组信息对于基于比较分析的生物途径预测非常重要。有证据表明,诸如蛋白质-DNA相互作用和操纵子之类的结构信息对于提高途径预测的准确性非常有用。本文介绍了一个图模型,该模型可以统一蛋白质-DNA相互作用和操纵子信息以及相关基因之间的同源关系。在此模型下,路径预测对应于在模型图中找到最大独立集,这可以通过基于非平凡树分解的技术有效地解决。基于枯草芽孢杆菌168中的30条路径的预测,基于大肠杆菌K12中30条路径的预测对开发的算法进行评估。新方法的整体准确性优于仅基于序列相似性或单独使用不同类别的结构信息的准确性。

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