Poelwijk Frank J, Heyning Philip D, de Vos Marjon G J, Kiviet Daniel J, Tans Sander J
AMOLF Institute, Science Park 104, 1098 XG, Amsterdam, The Netherlands.
BMC Syst Biol. 2011 Aug 16;5:128. doi: 10.1186/1752-0509-5-128.
How transcriptionally regulated gene expression evolves under natural selection is an open question. The cost and benefit of gene expression are the driving factors. While the former can be determined by gratuitous induction, the latter is difficult to measure directly.
We addressed this problem by decoupling the regulatory and metabolic function of the Escherichia coli lac system, using an inducer that cannot be metabolized and a carbon source that does not induce. Growth rate measurements directly identified the induced expression level that maximizes the metabolism benefits minus the protein production costs, without relying on models. Using these results, we established a controlled mismatch between sensing and metabolism, resulting in sub-optimal transcriptional regulation with the potential to improve by evolution. Next, we tested the evolutionary response by serial transfer. Constant environments showed cells evolving to the predicted expression optimum. Phenotypes with decreased expression emerged several hundred generations later than phenotypes with increased expression, indicating a higher genetic accessibility of the latter. Environments alternating between low and high expression demands resulted in overall rather than differential changes in expression, which is explained by the concave shape of the cross-environmental tradeoff curve that limits the selective advantage of altering the regulatory response.
This work indicates that the decoupling of regulatory and metabolic functions allows one to directly measure the costs and benefits that underlie the natural selection of gene regulation. Regulated gene expression is shown to evolve within several hundreds of generations to optima that are predicted by these costs and benefits. The results provide a step towards a quantitative understanding of the adaptive origins of regulatory systems.
转录调控的基因表达在自然选择下如何进化仍是一个悬而未决的问题。基因表达的成本和收益是驱动因素。虽然前者可以通过 gratuitous 诱导来确定,但后者难以直接测量。
我们通过将大肠杆菌 lac 系统的调控功能和代谢功能解耦来解决这个问题,使用一种不能被代谢的诱导剂和一种不诱导的碳源。生长速率测量直接确定了使代谢益处减去蛋白质生产成本最大化的诱导表达水平,而无需依赖模型。利用这些结果,我们在感知和代谢之间建立了可控的不匹配,导致转录调控次优,具有通过进化得到改善的潜力。接下来,我们通过连续传代测试了进化反应。恒定环境表明细胞进化到预测的表达最优状态。表达降低的表型比表达增加的表型出现晚几百代,表明后者具有更高的遗传可及性。在低表达需求和高表达需求之间交替的环境导致表达的整体而非差异变化,这可以用跨环境权衡曲线的凹形来解释,该曲线限制了改变调控反应的选择优势。
这项工作表明,调控功能和代谢功能的解耦使人们能够直接测量基因调控自然选择背后的成本和收益。受调控的基因表达在几百代内进化到由这些成本和收益预测的最优状态。这些结果为定量理解调控系统的适应性起源迈出了一步。