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通过基于调控子的关联重建大肠杆菌转录调控网络。

Reconstruction of Escherichia coli transcriptional regulatory networks via regulon-based associations.

作者信息

Zare Hossein, Sangurdekar Dipen, Srivastava Poonam, Kaveh Mostafa, Khodursky Arkady

机构信息

Department of Biochemistry, Biophysics and Molecular Biology, The University of Minnesota, St, Paul, MN, USA.

出版信息

BMC Syst Biol. 2009 Apr 14;3:39. doi: 10.1186/1752-0509-3-39.

Abstract

BACKGROUND

Network reconstruction methods that rely on covariance of expression of transcription regulators and their targets ignore the fact that transcription of regulators and their targets can be controlled differently and/or independently. Such oversight would result in many erroneous predictions. However, accurate prediction of gene regulatory interactions can be made possible through modeling and estimation of transcriptional activity of groups of co-regulated genes.

RESULTS

Incomplete regulatory connectivity and expression data are used here to construct a consensus network of transcriptional regulation in Escherichia coli (E. coli). The network is updated via a covariance model describing the activity of gene sets controlled by common regulators. The proposed model-selection algorithm was used to annotate the likeliest regulatory interactions in E. coli on the basis of two independent sets of expression data, each containing many microarray experiments under a variety of conditions. The key regulatory predictions have been verified by an experiment and literature survey. In addition, the estimated activity profiles of transcription factors were used to describe their responses to environmental and genetic perturbations as well as drug treatments.

CONCLUSION

Information about transcriptional activity of documented co-regulated genes (a core regulon) should be sufficient for discovering new target genes, whose transcriptional activities significantly co-vary with the activity of the core regulon members. Our ability to derive a highly significant consensus network by applying the regulon-based approach to two very different data sets demonstrated the efficiency of this strategy. We believe that this approach can be used to reconstruct gene regulatory networks of other organisms for which partial sets of known interactions are available.

摘要

背景

依赖转录调节因子及其靶标表达协方差的网络重建方法忽略了调节因子及其靶标的转录可能受到不同和/或独立控制这一事实。这种疏忽会导致许多错误的预测。然而,通过对共调控基因群体的转录活性进行建模和估计,可以实现对基因调控相互作用的准确预测。

结果

本文使用不完整的调控连接性和表达数据构建了大肠杆菌转录调控的共识网络。该网络通过描述由共同调节因子控制的基因集活性的协方差模型进行更新。所提出的模型选择算法基于两组独立的表达数据(每组包含在各种条件下的许多微阵列实验)来注释大肠杆菌中最可能的调控相互作用。关键的调控预测已通过实验和文献调查得到验证。此外,转录因子的估计活性谱用于描述它们对环境和遗传扰动以及药物治疗的反应。

结论

关于已记录的共调控基因(核心调控子)转录活性的信息应该足以发现新的靶基因,这些靶基因的转录活性与核心调控子成员的活性显著共变。我们通过将基于调控子的方法应用于两个非常不同的数据集来推导高度显著的共识网络的能力证明了该策略的有效性。我们相信这种方法可用于重建其他有部分已知相互作用集的生物体的基因调控网络。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2dd3/2689187/2ecedf69a8b2/1752-0509-3-39-1.jpg

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