Balaji S, Babu M Madan, Iyer Lakshminarayan M, Luscombe Nicholas M, Aravind L
National Center for Biotechnology Information, National Library of Medicine, National Institutes of Health, Bethesda 20894, USA.
J Mol Biol. 2006 Jun 30;360(1):213-27. doi: 10.1016/j.jmb.2006.04.029. Epub 2006 May 3.
Studies on various model systems have shown that a relatively small number of transcription factors can set up strikingly complex spatial and temporal patterns of gene expression. This is achieved mainly by means of combinatorial or differential gene regulation, i.e. regulation of a gene by two or more transcription factors simultaneously or under different conditions. While a number of specific molecular details of the mechanisms of combinatorial regulation have emerged, our understanding of the general principles of combinatorial regulation on a genomic scale is still limited. In this work, we approach this problem by using the largest assembled transcriptional regulatory network for yeast. A specific network transformation procedure was used to obtain the co-regulatory network describing the set of all significant associations among transcription factors in regulating common target genes. Analysis of the global properties of the co-regulatory network suggested the presence of two classes of regulatory hubs: (i) those that make many co-regulatory associations, thus serving as integrators of disparate cellular processes; and (ii) those that make few co-regulatory associations, and thereby specifically regulate one or a few major cellular processes. Investigation of the local structure of the co-regulatory network revealed a significantly higher than expected modular organization, which might have emerged as a result of selection by functional constraints. These constraints probably emerge from the need for extensive modular backup and the requirement to integrate transcriptional inputs of multiple distinct functional systems. We then explored the transcriptional control of three major regulatory systems (ubiquitin signaling, protein kinase and transcriptional regulation systems) to understand specific aspects of their upstream control. As a result, we observed that ubiquitin E3 ligases are regulated primarily by unique transcription factors, whereas E1 and E2 enzymes share common transcription factors to a much greater extent. This suggested that the deployment of E3s unique to specific functional contexts may be mediated significantly at the transcriptional level. Likewise, we were able to uncover evidence for much higher upstream transcription control of transcription factors themselves, in comparison to components of other regulatory systems. We believe that the results presented here might provide a framework for testing the role of co-regulatory associations in eukaryotic transcriptional control.
对各种模型系统的研究表明,相对少量的转录因子能够建立起极为复杂的基因表达时空模式。这主要是通过组合式或差异性基因调控来实现的,即一个基因由两个或更多转录因子同时或在不同条件下进行调控。虽然组合调控机制的一些具体分子细节已逐渐明晰,但我们对基因组规模下组合调控一般原则的理解仍较为有限。在这项工作中,我们通过使用酵母中已组装的最大转录调控网络来解决这个问题。采用了一种特定的网络转换程序来获得共调控网络,该网络描述了转录因子在调控共同靶基因时所有显著关联的集合。对共调控网络全局特性的分析表明存在两类调控枢纽:(i)那些形成许多共调控关联的枢纽,从而作为不同细胞过程的整合者;(ii)那些形成较少共调控关联的枢纽,进而特异性地调控一个或几个主要细胞过程。对共调控网络局部结构的研究揭示了其模块化组织程度显著高于预期,这可能是功能限制选择的结果。这些限制可能源于对广泛模块化备份的需求以及整合多个不同功能系统转录输入的要求。然后,我们探索了三个主要调控系统(泛素信号传导、蛋白激酶和转录调控系统)的转录控制,以了解其上游控制的具体方面。结果,我们观察到泛素E3连接酶主要由独特的转录因子调控,而E1和E2酶在更大程度上共享共同的转录因子。这表明特定功能背景下独特E3的部署可能在转录水平上受到显著介导。同样,与其他调控系统的组分相比,我们能够发现转录因子自身存在更高水平的上游转录控制证据。我们相信这里呈现的结果可能为测试共调控关联在真核生物转录控制中的作用提供一个框架。