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Rank-based edge reconstruction for scale-free genetic regulatory networks

机译:基于等级的边缘重构,用于无尺度遗传调控网络

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摘要

Background The reconstruction of genetic regulatory networks from microarray gene expression data has been a challenging task in bioinformatics. Various approaches to this problem have been proposed, however, they do not take into account the topological characteristics of the targeted networks while reconstructing them. Results In this study, an algorithm that explores the scale-free topology of networks was proposed based on the modification of a rank-based algorithm for network reconstruction. The new algorithm was evaluated with the use of both simulated and microarray gene expression data. The results demonstrated that the proposed algorithm outperforms the original rank-based algorithm. In addition, in comparison with the Bayesian Network approach, the results show that the proposed algorithm gives much better recovery of the underlying network when sample size is much smaller relative to the number of genes. Conclusion The proposed algorithm is expected to be useful in the reconstruction of biological networks whose degree distributions follow the scale-free topology.
机译:背景技术从微阵列基因表达数据重建遗传调控网络一直是生物信息学中的一项艰巨任务。已经提出了解决该问题的各种方法,但是,它们在重建目标网络时并未考虑目标网络的拓扑特征。结果在本研究中,基于对基于秩的网络重构算法的修改,提出了一种探索网络无标度拓扑的算法。使用模拟和微阵列基因表达数据对新算法进行了评估。结果表明,该算法优于原始的基于秩的算法。另外,与贝叶斯网络方法相比,结果表明,当样本量相对于基因数量小得多时,该算法可以更好地恢复底层网络。结论所提出的算法有望用于其度分布遵循无标度拓扑的生物网络的重建。

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