Pilpel Y, Sudarsanam P, Church G M
Department of Genetics and Lipper Center for Computational Genetics, Harvard Medical School, Boston, Massachusetts 02115, USA.
Nat Genet. 2001 Oct;29(2):153-9. doi: 10.1038/ng724.
Several computational methods based on microarray data are currently used to study genome-wide transcriptional regulation. Few studies, however, address the combinatorial nature of transcription, a well-established phenomenon in eukaryotes. Here we describe a new approach using microarray data to uncover novel functional motif combinations in the promoters of Saccharomyces cerevisiae. In addition to identifying novel motif combinations that affect expression patterns during the cell cycle, sporulation and various stress responses, we observed regulatory cross-talk among several of these processes. We have also generated motif-association maps that provide a global view of transcription networks. The maps are highly connected, suggesting that a small number of transcription factors are responsible for a complex set of expression patterns in diverse conditions. This approach may be useful for modeling transcriptional regulatory networks in more complex eukaryotes.
目前,有几种基于微阵列数据的计算方法用于研究全基因组转录调控。然而,很少有研究涉及转录的组合性质,这在真核生物中是一种既定现象。在此,我们描述了一种利用微阵列数据在酿酒酵母启动子中发现新的功能基序组合的新方法。除了识别在细胞周期、孢子形成和各种应激反应期间影响表达模式的新基序组合外,我们还观察到其中几个过程之间的调控串扰。我们还生成了基序关联图,提供了转录网络的全局视图。这些图高度连通,表明少数转录因子负责多种条件下复杂的一组表达模式。这种方法可能有助于对更复杂真核生物中的转录调控网络进行建模。