Program in Systems Biology, University of Massachusetts Medical School, Worcester, United States.
Department of Microbiology and Physiological Systems, University of Massachusetts Medical School, Worcester, United States.
Elife. 2020 Aug 18;9:e56517. doi: 10.7554/eLife.56517.
Predicting gene expression from DNA sequence remains a major goal in the field of gene regulation. A challenge to this goal is the connectivity of the network, whose role in altering gene expression remains unclear. Here, we study a common autoregulatory network motif, the negative single-input module, to explore the regulatory properties inherited from the motif. Using stochastic simulations and a synthetic biology approach in , we find that the TF gene and its target genes have inherent asymmetry in regulation, even when their promoters are identical; the TF gene being more repressed than its targets. The magnitude of asymmetry depends on network features such as network size and TF-binding affinities. Intriguingly, asymmetry disappears when the growth rate is too fast or too slow and is most significant for typical growth conditions. These results highlight the importance of accounting for network architecture in quantitative models of gene expression.
从 DNA 序列预测基因表达仍然是基因调控领域的主要目标。该目标面临的一个挑战是网络的连通性,其在改变基因表达中的作用仍不清楚。在这里,我们研究了一个常见的自我调控网络基序,即负单输入模块,以探索从基序中继承的调控特性。使用随机模拟和 中的合成生物学方法,我们发现 TF 基因及其靶基因在调节上存在固有不对称性,即使它们的启动子相同;TF 基因的抑制程度比其靶基因更高。不对称性的大小取决于网络特征,如网络大小和 TF 结合亲和力。有趣的是,当增长率过快或过慢时,不对称性会消失,而在典型的生长条件下,不对称性最为显著。这些结果强调了在基因表达的定量模型中考虑网络结构的重要性。