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Randomization Strategies Affect Motif Significance Analysis in TF-miRNA-Gene Regulatory Networks

机译:随机策略影响母题在TF-miRNA基因调控网络中的意义分析。

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摘要

Gene-regulatory networks are an abstract way of capturing the regulatory connectivity between transcription factors, microRNAs, and target genes in biological cells. Here, we address the problem of identifying enriched co-regulatory three-node motifs that are found significantly more often in real network than in randomized networks. First, we compare two randomization strategies, that either only conserve the degree distribution of the nodes’ in- and out-links, or that also conserve the degree distributions of different regulatory edge types. Then, we address the issue how convergence of randomization can be measured. We show that after at most 10 × |E| edge swappings, converged motif counts are obtained and the memory of initial edge identities is lost.
机译:基因调节网络是捕获生物细胞中转录因子,microRNA和靶基因之间调节连接的一种抽象方法。在这里,我们解决了识别丰富的共调控三节点基序的问题,这些基序在真实网络中比在随机网络中更常见。首先,我们比较两种随机策略,它们既可以保留节点的入站和出站的度分布,又可以保留不同监管边缘类型的度分布。然后,我们解决了如何衡量随机收敛的问题。我们证明,至多10×| E |边缘交换,获得收敛的图案计数,并且丢失了初始边缘身份的记忆。

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