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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >TOPAC: ALIGNMENT OF GENE REGULATORY NETWORKS USING TOPOLOGY-AWARE COLORING
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TOPAC: ALIGNMENT OF GENE REGULATORY NETWORKS USING TOPOLOGY-AWARE COLORING

机译:TOPAC:使用拓扑-预警着色对基因调控网络进行校准

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We consider the problem of finding a subnetwork in a given biological network (i.e. target network) that is most similar to a given small query network. We aim to find the optimal solution (i.e. the subnetwork with the largest alignment score) with a provable confidence bound. There is no known polynomial time solution to this problem in the literature. Alon et al. has developed a state-of-the-art coloring method that reduces the cost of this problem. This method randomly colors the target network prior to alignment for many iterations until a user-supplied confidence is reached. Here we develop a novel coloring method, named k-hop coloring (k is a positive integer), that achieves a provable confidence value in a small number of iterations without sacrificing the optimality. Our method considers the color assignments already made in the neighborhood of each target network node while assigning a color to a node. This way, it preemptively avoids many color assignments that are guaranteed to fail to produce the optimal alignment. We also develop a filtering method that eliminates the nodes that cannot be aligned without reducing the alignment score after each coloring instance. We demonstrate both theoretically and experimentally that our coloring method outperforms that of Alon et al., which is also used by a number network alignment methods, including QPath and QNet, by a factor of three without reducing the confidence in the optimality of the result. Our experiments also suggest that the resulting alignment method is capable of identifying functionally enriched regions in the target network successfully.
机译:我们考虑在给定的生物网络(即目标网络)中找到与给定的小型查询网络最相似的子网的问题。我们旨在找到具有可证明置信度的最佳解决方案(即具有最大对齐分数的子网)。在文献中没有已知的多项式时间解。阿隆等。我们已经开发出一种最新的着色方法,可以降低此问题的成本。该方法在对齐之前为目标网络随机着色许多次迭代,直到达到用户提供的置信度为止。在这里,我们开发了一种新颖的着色方法,称为k-hop着色(k是一个正整数),该方法可以在少量迭代中获得可证明的置信度,而不会牺牲最优性。我们的方法在为节点分配颜色时,考虑在每个目标网络节点附近已经进行的颜色分配。这样,它就可以避免避免保证无法产生最佳对齐效果的许多颜色分配。我们还开发了一种过滤方法,该方法可以消除无法对齐的节点,而不减少每个着色实例后的对齐分数。我们在理论上和实验上都证明,我们的着色方法比Alon等人的着色方法要好三倍,而Alon等人的着色方法也被包括QPath和QNet在内的许多网络对齐方法所使用,而不降低对结果最优性的信心。我们的实验还表明,所得的比对方法能够成功识别目标网络中功能丰富的区域。

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    GÜNHAN GÜLSOY Corresponding author.Computer and Information Sciences and Engineering Department, University of Florida, Gainesville, FL, USAggulsoy@cise.ufl.edu BHAVIK GANDHI Computer and Information Sciences and Engineering Department, University of Florida, Gainesville, FL, USAbgandhi@cise.ufl.edu TAMER KAHVECI Computer and Information Sciences and Engineering Department, University of Florida, Gainesville, FL, USAtamer@cise.ufl.edu;

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  • 正文语种 eng
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  • 关键词

    Gene regulatory networks; network alignment; color coding.;

    机译:基因调控网络;网络对齐;颜色编码。;

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