Murphy Kevin F, Balázsi Gábor, Collins James J
Department of Biomedical Engineering, Center for BioDynamics and Center for Advanced Biotechnology, Boston University, Boston, MA 02215, USA.
Proc Natl Acad Sci U S A. 2007 Jul 31;104(31):12726-31. doi: 10.1073/pnas.0608451104. Epub 2007 Jul 24.
Understanding the behavior of basic biomolecular components as parts of larger systems is one of the goals of the developing field of synthetic biology. A multidisciplinary approach, involving mathematical and computational modeling in parallel with experimentation, is often crucial for gaining such insights and improving the efficiency of artificial gene network design. Here we used such an approach and developed a combinatorial promoter design strategy to characterize how the position and multiplicity of tetO(2) operator sites within the GAL1 promoter affect gene expression levels and gene expression noise in Saccharomyces cerevisiae. We observed stronger transcriptional repression and higher gene expression noise as a single operator site was moved closer to the TATA box, whereas for multiple operator-containing promoters, we found that the position and number of operator sites together determined the dose-response curve and gene expression noise. We developed a generic computational model that captured the experimentally observed differences for each of the promoters, and more detailed models to successively predict the behavior of multiple operator-containing promoters from single operator-containing promoters. Our results suggest that the independent binding of single repressors is not sufficient to explain the more complex behavior of the multiple operator-containing promoters. Taken together, our findings highlight the importance of joint experimental-computational efforts and some of the challenges of using a bottom-up approach based on well characterized, isolated biomolecular components for predicting the behavior of complex, synthetic gene networks, e.g., the whole can be different from the sum of its parts.
理解基本生物分子组分作为更大系统的一部分的行为是合成生物学这一新兴领域的目标之一。一种多学科方法,包括与实验并行的数学和计算建模,对于获得此类见解和提高人工基因网络设计的效率通常至关重要。在这里,我们采用了这样一种方法,并开发了一种组合启动子设计策略,以表征GAL1启动子内tetO(2)操纵位点的位置和多重性如何影响酿酒酵母中的基因表达水平和基因表达噪声。我们观察到,当单个操纵位点移近TATA框时,转录抑制更强,基因表达噪声更高,而对于含多个操纵子的启动子,我们发现操纵位点的位置和数量共同决定了剂量反应曲线和基因表达噪声。我们开发了一个通用计算模型,该模型捕捉了每个启动子实验观察到的差异,以及更详细的模型,以从含单个操纵子的启动子依次预测含多个操纵子的启动子的行为。我们的结果表明,单个阻遏物的独立结合不足以解释含多个操纵子的启动子更复杂的行为。综上所述,我们的研究结果突出了联合实验 - 计算工作的重要性,以及使用基于充分表征的孤立生物分子组分的自下而上方法预测复杂合成基因网络行为的一些挑战,例如整体可能不同于其各部分之和。