Elkon Ran, Linhart Chaim, Sharan Roded, Shamir Ron, Shiloh Yosef
The David and Inez Myers Laboratory for Genetic Research, Department of Human Genetics, Sackler School of Medicine, and School of Computer Science, Tel Aviv University, Tel Aviv 69978, Israel.
Genome Res. 2003 May;13(5):773-80. doi: 10.1101/gr.947203.
Dissection of regulatory networks that control gene transcription is one of the greatest challenges of functional genomics. Using human genomic sequences, models for binding sites of known transcription factors, and gene expression data, we demonstrate that the reverse engineering approach, which infers regulatory mechanisms from gene expression patterns, can reveal transcriptional networks in human cells. To date, such methodologies were successfully demonstrated only in prokaryotes and low eukaryotes. We developed computational methods for identifying putative binding sites of transcription factors and for evaluating the statistical significance of their prevalence in a given set of promoters. Focusing on transcriptional mechanisms that control cell cycle progression, our computational analyses revealed eight transcription factors whose binding sites are significantly overrepresented in promoters of genes whose expression is cell-cycle-dependent. The enrichment of some of these factors is specific to certain phases of the cell cycle. In addition, several pairs of these transcription factors show a significant co-occurrence rate in cell-cycle-regulated promoters. Each such pair indicates functional cooperation between its members in regulating the transcriptional program associated with cell cycle progression. The methods presented here are general and can be applied to the analysis of transcriptional networks controlling any biological process.
解析控制基因转录的调控网络是功能基因组学面临的最大挑战之一。利用人类基因组序列、已知转录因子结合位点的模型以及基因表达数据,我们证明了从基因表达模式推断调控机制的逆向工程方法能够揭示人类细胞中的转录网络。迄今为止,此类方法仅在原核生物和低等真核生物中得到成功验证。我们开发了计算方法,用于识别转录因子的假定结合位点,并评估其在给定启动子集合中的出现频率的统计显著性。聚焦于控制细胞周期进程的转录机制,我们的计算分析揭示了八个转录因子,其结合位点在表达依赖于细胞周期的基因的启动子中显著富集。其中一些因子的富集在细胞周期的特定阶段具有特异性。此外,这些转录因子中的几对在细胞周期调控的启动子中显示出显著的共现率。每一对这样的转录因子都表明其成员在调控与细胞周期进程相关的转录程序中存在功能协作。本文介绍的方法具有通用性,可应用于分析控制任何生物过程的转录网络。