Isaacs Farren J, Hasty Jeff, Cantor Charles R, Collins J J
Center for BioDynamics, Center for Advanced Biotechnology, Bioinformatics Program, and Department of Biomedical Engineering, Boston University, Boston, MA 02215, USA.
Proc Natl Acad Sci U S A. 2003 Jun 24;100(13):7714-9. doi: 10.1073/pnas.1332628100. Epub 2003 Jun 13.
The deduction of phenotypic cellular responses from the structure and behavior of complex gene regulatory networks is one of the defining challenges of systems biology. This goal will require a quantitative understanding of the modular components that constitute such networks. We pursued an integrated approach, combining theory and experiment, to analyze and describe the dynamics of an isolated genetic module, an in vivo autoregulatory gene network. As predicted by the model, temperature-induced protein destabilization led to the existence of two expression states, thus elucidating the trademark bistability of the positive feedback-network architecture. After sweeping the temperature, observed population distributions and coefficients of variation were in quantitative agreement with those predicted by a stochastic version of the model. Because model fluctuations originated from small molecule-number effects, the experimental validation underscores the importance of internal noise in gene expression. This work demonstrates that isolated gene networks, coupled with proper quantitative descriptions, can elucidate key properties of functional genetic modules. Such an approach could lead to the modular dissection of naturally occurring gene regulatory networks, the deduction of cellular processes such as differentiation, and the development of engineered cellular control.
从复杂基因调控网络的结构和行为推断表型细胞反应是系统生物学的核心挑战之一。这一目标需要对构成此类网络的模块化组件有定量的理解。我们采用了一种综合方法,将理论与实验相结合,来分析和描述一个孤立的遗传模块——一个体内自调控基因网络的动态。正如模型所预测的,温度诱导的蛋白质不稳定导致了两种表达状态的存在,从而阐明了正反馈网络结构的标志性双稳态。在改变温度后,观察到的群体分布和变异系数与该模型的随机版本所预测的结果在数量上一致。由于模型波动源于小分子数量效应,实验验证强调了基因表达中内部噪声的重要性。这项工作表明,孤立的基因网络,加上适当的定量描述,可以阐明功能遗传模块的关键特性。这种方法可能会导致对自然发生的基因调控网络进行模块化剖析,推断出诸如分化等细胞过程,并开发出工程化的细胞控制方法。