European Molecular Biology Laboratory, Heidelberg, Germany.
VTT Technical Research Centre of Finland Ltd, Espoo, Finland.
Mol Syst Biol. 2022 Oct;18(10):e10980. doi: 10.15252/msb.202210980.
Adaptive evolution under controlled laboratory conditions has been highly effective in selecting organisms with beneficial phenotypes such as stress tolerance. The evolution route is particularly attractive when the organisms are either difficult to engineer or the genetic basis of the phenotype is complex. However, many desired traits, like metabolite secretion, have been inaccessible to adaptive selection due to their trade-off with cell growth. Here, we utilize genome-scale metabolic models to design nutrient environments for selecting lineages with enhanced metabolite secretion. To overcome the growth-secretion trade-off, we identify environments wherein growth becomes correlated with a secondary trait termed tacking trait. The latter is selected to be coupled with the desired trait in the application environment where the trait manifestation is required. Thus, adaptive evolution in the model-designed selection environment and subsequent return to the application environment is predicted to enhance the desired trait. We experimentally validate this strategy by evolving Saccharomyces cerevisiae for increased secretion of aroma compounds, and confirm the predicted flux-rerouting using genomic, transcriptomic, and proteomic analyses. Overall, model-designed selection environments open new opportunities for predictive evolution.
在受控的实验室条件下进行适应性进化,对于选择具有有益表型(如耐受压力)的生物体非常有效。当生物体难以进行工程改造或者表型的遗传基础复杂时,这种进化途径特别有吸引力。然而,由于代谢物分泌与细胞生长之间存在权衡关系,许多期望的特性(如代谢物分泌)无法通过适应性选择获得。在这里,我们利用基因组规模的代谢模型来设计营养环境,以选择具有增强代谢物分泌能力的谱系。为了克服生长-分泌权衡关系,我们确定了在这些环境中,生长与称为“附着特性”的次要特性相关。在需要表现出该特性的应用环境中,选择后者与所需特性耦合。因此,预计在模型设计的选择环境中进行适应性进化,然后返回应用环境,将增强所需的特性。我们通过进化酿酒酵母以增加香气化合物的分泌来验证了这一策略,并通过基因组、转录组和蛋白质组分析证实了预测的通量重排。总的来说,模型设计的选择环境为可预测的进化开辟了新的机会。