Guido Nicholas J, Wang Xiao, Adalsteinsson David, McMillen David, Hasty Jeff, Cantor Charles R, Elston Timothy C, Collins J J
Department of Biomedical Engineering, Bioinformatics Program, Center for BioDynamics and Center for Advanced Biotechnology, Boston University, 44 Cummington Street, Boston, Massachusetts 02215, USA.
Nature. 2006 Feb 16;439(7078):856-60. doi: 10.1038/nature04473.
The ability to construct synthetic gene networks enables experimental investigations of deliberately simplified systems that can be compared to qualitative and quantitative models. If simple, well-characterized modules can be coupled together into more complex networks with behaviour that can be predicted from that of the individual components, we may begin to build an understanding of cellular regulatory processes from the 'bottom up'. Here we have engineered a promoter to allow simultaneous repression and activation of gene expression in Escherichia coli. We studied its behaviour in synthetic gene networks under increasingly complex conditions: unregulated, repressed, activated, and simultaneously repressed and activated. We develop a stochastic model that quantitatively captures the means and distributions of the expression from the engineered promoter of this modular system, and show that the model can be extended and used to accurately predict the in vivo behaviour of the network when it is expanded to include positive feedback. The model also reveals the counterintuitive prediction that noise in protein expression levels can increase upon arrest of cell growth and division, which we confirm experimentally. This work shows that the properties of regulatory subsystems can be used to predict the behaviour of larger, more complex regulatory networks, and that this bottom-up approach can provide insights into gene regulation.
构建合成基因网络的能力使得对经过刻意简化的系统进行实验研究成为可能,这些系统可与定性和定量模型进行比较。如果简单且特征明确的模块能够耦合在一起形成更复杂的网络,其行为能够从各个组件的行为中预测出来,那么我们或许就可以开始从“自下而上”的角度来理解细胞调控过程。在此,我们设计了一个启动子,以实现大肠杆菌中基因表达的同时抑制和激活。我们在日益复杂的条件下研究了其在合成基因网络中的行为:无调控、受抑制、被激活以及同时受到抑制和激活。我们开发了一个随机模型,该模型能够定量地捕捉这个模块化系统中工程化启动子表达的均值和分布,并表明当模型扩展到包含正反馈时,可用于准确预测网络的体内行为。该模型还揭示了一个与直觉相悖的预测,即细胞生长和分裂停止时,蛋白质表达水平的噪声可能会增加,我们通过实验证实了这一点。这项工作表明,调控子系统的特性可用于预测更大、更复杂的调控网络的行为,并且这种自下而上的方法能够为基因调控提供见解。