Boorsma André, Lu Xiang-Jun, Zakrzewska Anna, Klis Frans M, Bussemaker Harmen J
Swammerdam Institute for Life Sciences, University of Amsterdam, BioCentrum Amsterdam, Amsterdam, The Netherlands.
PLoS One. 2008 Sep 3;3(9):e3112. doi: 10.1371/journal.pone.0003112.
A key goal of systems biology is to understand how genomewide mRNA expression levels are controlled by transcription factors (TFs) in a condition-specific fashion. TF activity is frequently modulated at the post-translational level through ligand binding, covalent modification, or changes in sub-cellular localization. In this paper, we demonstrate how prior information about regulatory network connectivity can be exploited to infer condition-specific TF activity as a hidden variable from the genomewide mRNA expression pattern in the yeast Saccharomyces cerevisiae.
METHODOLOGY/PRINCIPAL FINDINGS: We first validate experimentally that by scoring differential expression at the level of gene sets or "regulons" comprised of the putative targets of a TF, we can accurately predict modulation of TF activity at the post-translational level. Next, we create an interactive database of inferred activities for a large number of TFs across a large number of experimental conditions in S. cerevisiae. This allows us to perform TF-centric analysis of the yeast regulatory network.
CONCLUSIONS/SIGNIFICANCE: We analyze the degree to which the mRNA expression level of each TF is predictive of its regulatory activity. We also organize TFs into "co-modulation networks" based on their inferred activity profile across conditions, and find that this reveals functional and mechanistic relationships. Finally, we present evidence that the PAC and rRPE motifs antagonize TBP-dependent regulation, and function as core promoter elements governed by the transcription regulator NC2. Regulon-based monitoring of TF activity modulation is a powerful tool for analyzing regulatory network function that should be applicable in other organisms. Tools and results are available online at http://bussemakerlab.org/RegulonProfiler/.
系统生物学的一个关键目标是了解全基因组mRNA表达水平如何以条件特异性方式由转录因子(TFs)控制。TF活性经常在翻译后水平通过配体结合、共价修饰或亚细胞定位变化进行调节。在本文中,我们展示了如何利用关于调控网络连接性的先验信息,从酿酒酵母的全基因组mRNA表达模式中推断条件特异性TF活性作为一个隐藏变量。
方法/主要发现:我们首先通过实验验证,通过对由TF的推定靶标组成的基因集或“调控子”水平的差异表达进行评分,我们可以准确预测翻译后水平的TF活性调节。接下来,我们创建了一个交互式数据库,用于酿酒酵母中大量实验条件下大量TF的推断活性。这使我们能够对酵母调控网络进行以TF为中心的分析。
结论/意义:我们分析了每个TF的mRNA表达水平对其调控活性的预测程度。我们还根据TF在不同条件下推断的活性谱将其组织成“共调节网络”,并发现这揭示了功能和机制关系。最后,我们提供证据表明PAC和rRPE基序拮抗TBP依赖性调控,并作为由转录调节因子NC2控制的核心启动子元件发挥作用。基于调控子的TF活性调节监测是分析调控网络功能的有力工具,应适用于其他生物体。工具和结果可在http://bussemakerlab.org/RegulonProfiler/在线获取。