Segal Eran, Raveh-Sadka Tali, Schroeder Mark, Unnerstall Ulrich, Gaul Ulrike
Department of Computer Science and Applied Mathematics, Weizmann Institute of Science, Rehovot 76100, Israel.
Nature. 2008 Jan 31;451(7178):535-40. doi: 10.1038/nature06496. Epub 2008 Jan 2.
The establishment of complex expression patterns at precise times and locations is key to metazoan development, yet a mechanistic understanding of the underlying transcription control networks is still missing. Here we describe a novel thermodynamic model that computes expression patterns as a function of cis-regulatory sequence and of the binding-site preferences and expression of participating transcription factors. We apply this model to the segmentation gene network of Drosophila melanogaster and find that it predicts expression patterns of cis-regulatory modules with remarkable accuracy, demonstrating that positional information is encoded in the regulatory sequence and input factor distribution. Our analysis reveals that both strong and weaker binding sites contribute, leading to high occupancy of the module DNA, and conferring robustness against mutation; short-range homotypic clustering of weaker sites facilitates cooperative binding, which is necessary to sharpen the patterns. Our computational framework is generally applicable to most protein-DNA interaction systems.
在精确的时间和位置建立复杂的表达模式是后生动物发育的关键,但对潜在转录控制网络的机制理解仍然缺失。在这里,我们描述了一种新的热力学模型,该模型将表达模式计算为顺式调控序列以及参与的转录因子的结合位点偏好和表达的函数。我们将此模型应用于黑腹果蝇的节段基因网络,发现它能以极高的准确性预测顺式调控模块的表达模式,表明位置信息编码在调控序列和输入因子分布中。我们的分析表明,强结合位点和弱结合位点都有贡献,导致模块DNA的高占有率,并赋予对突变的鲁棒性;弱位点的短程同型聚类促进协同结合,这对于锐化模式是必要的。我们的计算框架普遍适用于大多数蛋白质 - DNA相互作用系统。