Wang Jigang, Qiu Xiaojie, Li Yuhua, Deng Youping, Shi Tieliu
College of Life Sciences, Northeast Forestry University, Heilongjiang, Harbin 150040, China.
BMC Syst Biol. 2011;5 Suppl 3(Suppl 3):S8. doi: 10.1186/1752-0509-5-S3-S8. Epub 2011 Dec 23.
To understand transcriptional regulatory networks (TRNs), especially the coordinated dynamic regulation between transcription factors (TFs) and their corresponding target genes during development, computational approaches would represent significant advances in the genome-wide expression analysis. The major challenges for the experiments include monitoring the time-specific TFs' activities and identifying the dynamic regulatory relationships between TFs and their target genes, both of which are currently not yet available at the large scale. However, various methods have been proposed to computationally estimate those activities and regulations. During the past decade, significant progresses have been made towards understanding pollen development at each development stage under the molecular level, yet the regulatory mechanisms that control the dynamic pollen development processes remain largely unknown. Here, we adopt Networks Component Analysis (NCA) to identify TF activities over time course, and infer their regulatory relationships based on the coexpression of TFs and their target genes during pollen development.
We carried out meta-analysis by integrating several sets of gene expression data related to Arabidopsis thaliana pollen development (stages range from UNM, BCP, TCP, HP to 0.5 hr pollen tube and 4 hr pollen tube). We constructed a regulatory network, including 19 TFs, 101 target genes and 319 regulatory interactions. The computationally estimated TF activities were well correlated to their coordinated genes' expressions during the development process. We clustered the expression of their target genes in the context of regulatory influences, and inferred new regulatory relationships between those TFs and their target genes, such as transcription factor WRKY34, which was identified that specifically expressed in pollen, and regulated several new target genes. Our finding facilitates the interpretation of the expression patterns with more biological relevancy, since the clusters corresponding to the activity of specific TF or the combination of TFs suggest the coordinated regulation of TFs to their target genes.
Through integrating different resources, we constructed a dynamic regulatory network of Arabidopsis thaliana during pollen development with gene coexpression and NCA. The network illustrated the relationships between the TFs' activities and their target genes' expression, as well as the interactions between TFs, which provide new insight into the molecular mechanisms that control the pollen development.
为了解转录调控网络(TRNs),尤其是在发育过程中转录因子(TFs)与其相应靶基因之间的协调动态调控,计算方法将在全基因组表达分析中取得重大进展。实验面临的主要挑战包括监测特定时间的转录因子活性以及识别转录因子与其靶基因之间的动态调控关系,目前这两者都无法大规模实现。然而,已经提出了各种方法来通过计算估计这些活性和调控。在过去十年中,在分子水平上对花粉发育各阶段的理解取得了重大进展,但控制花粉动态发育过程的调控机制仍 largely 未知。在这里,我们采用网络成分分析(NCA)来识别随时间变化的转录因子活性,并根据花粉发育过程中转录因子及其靶基因的共表达推断它们的调控关系。
我们通过整合几组与拟南芥花粉发育相关的基因表达数据(阶段范围从 UNM、BCP、TCP、HP 到 0.5 小时花粉管和 4 小时花粉管)进行了荟萃分析。我们构建了一个调控网络,包括 19 个转录因子、101 个靶基因和 319 个调控相互作用。计算估计的转录因子活性与它们在发育过程中协调基因的表达高度相关。我们在调控影响的背景下对其靶基因的表达进行聚类,并推断出这些转录因子与其靶基因之间的新调控关系,例如转录因子 WRKY34,它被鉴定在花粉中特异性表达,并调控了几个新的靶基因。我们的发现有助于以更具生物学相关性的方式解释表达模式,因为对应于特定转录因子或转录因子组合活性的聚类表明转录因子对其靶基因的协调调控。
通过整合不同资源,我们利用基因共表达和 NCA 构建了拟南芥花粉发育过程中的动态调控网络。该网络阐明了转录因子活性与其靶基因表达之间的关系,以及转录因子之间的相互作用,为控制花粉发育的分子机制提供了新的见解。