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首页> 外文期刊>Frontiers in Microbiology >Reconstruction of the Regulatory Network for Bacillus subtilis and Reconciliation with Gene Expression Data
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Reconstruction of the Regulatory Network for Bacillus subtilis and Reconciliation with Gene Expression Data

机译:枯草芽孢杆菌(Bacillus subtilis)调控网络的重建及与基因表达数据的协调

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We introduce a manually constructed and curated regulatory network model that describes the current state of knowledge of transcriptional regulation of Bacillus subtilis . The model corresponds to an updated and enlarged version of the regulatory model of central metabolism originally proposed in 2008. We extended the original network to the whole genome by integration of information from DBTBS, a compendium of regulatory data that includes promoters, transcription factors (TFs), binding sites, motifs, and regulated operons. Additionally, we consolidated our network with all the information on regulation included in the SporeWeb and Subtiwiki community-curated resources on B. subtilis . Finally, we reconciled our network with data from RegPrecise, which recently released their own less comprehensive reconstruction of the regulatory network for B. subtilis . Our model describes 275 regulators and their target genes, representing 30 different mechanisms of regulation such as TFs, RNA switches, Riboswitches, and small regulatory RNAs. Overall, regulatory information is included in the model for ~2500 of the ~4200 genes in B. subtilis 168. In an effort to further expand our knowledge of B. subtilis regulation, we reconciled our model with expression data. For this process, we reconstructed the Atomic Regulons (ARs) for B. subtilis , which are the sets of genes that share the same “ON” and “OFF” gene expression profiles across multiple samples of experimental data. We show how ARs for B. subtilis are able to capture many sets of genes corresponding to regulated operons in our manually curated network. Additionally, we demonstrate how ARs can be used to help expand or validate the knowledge of the regulatory networks by looking at highly correlated genes in the ARs for which regulatory information is lacking. During this process, we were also able to infer novel stimuli for hypothetical genes by exploring the genome expression metadata relating to experimental conditions, gaining insights into novel biology.
机译:我们介绍了一个人工构建和策划的监管网络模型,描述了枯草芽孢杆菌转录调控知识的现状。该模型与最初于2008年提出的中央代谢调节模型的更新和放大版本相对应。我们通过整合来自DBTBS的信息(包括启动子,转录因子(TFs)的调节数据的汇编)将原始网络扩展到整个基因组。 ),结合位点,图案和受调控的操纵子。此外,我们利用SporeWeb和Subtiwiki社区管理的枯草芽孢杆菌资源中包含的所有法规信息整合了我们的网络。最后,我们用RegPrecise的数据调整了我们的网络,RegPrecise最近发布了他们对枯草芽孢杆菌监管网络的较不全面的重建。我们的模型描述了275种调节剂及其靶基因,代表了30种不同的调节机制,例如TF,RNA开关,核糖开关和小型调节RNA。总体而言,枯草芽孢杆菌168中〜4200个基因的〜2500个基因的模型中包含了调控信息。为进一步扩展我们对枯草芽孢杆菌调控的认识,我们将模型与表达数据进行了核对。在此过程中,我们重建了枯草芽孢杆菌的原子调控(AR),这是在多个实验数据样本中共享相同的“ ON”和“ OFF”基因表达谱的基因集。我们展示了枯草芽孢杆菌的AR如何捕获我们手动策划网络中对应于调控操纵子的许多基因集。此外,我们通过查看缺乏监管信息的AR中高度相关的基因,演示了如何利用AR来帮助扩展或验证监管网络的知识。在此过程中,我们还可以通过探索与实验条件有关的基因组表达元数据来推断假设基因的新刺激,从而深入了解新生物学。

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