Department of Life Sciences, Division of Industrial Biotechnology, Chalmers University of Technology, 412 96, Gothenburg, Sweden.
Microb Cell Fact. 2024 Aug 4;23(1):218. doi: 10.1186/s12934-024-02490-2.
Microbial robustness is crucial for developing cell factories that maintain consistent performance in a challenging environment such as large-scale bioreactors. Although tools exist to assess and understand robustness at a phenotypic level, the underlying metabolic and genetic mechanisms are not well defined, which limits our ability to engineer more strains with robust functions.
This study encompassed four steps. (I) Fitness and robustness were analyzed from a published dataset of yeast mutants grown in multiple environments. (II) Genes and metabolic processes affecting robustness or fitness were identified, and 14 of these genes were deleted in Saccharomyces cerevisiae CEN.PK113-7D. (III) The mutants bearing gene deletions were cultivated in three perturbation spaces mimicking typical industrial processes. (IV) Fitness and robustness were determined for each mutant in each perturbation space. We report that robustness varied according to the perturbation space. We identified genes associated with increased robustness such as MET28, linked to sulfur metabolism; as well as genes associated with decreased robustness, including TIR3 and WWM1, both involved in stress response and apoptosis.
The present study demonstrates how phenomics datasets can be analyzed to reveal the relationship between phenotypic response and associated genes. Specifically, robustness analysis makes it possible to study the influence of single genes and metabolic processes on stable microbial performance in different perturbation spaces. Ultimately, this information can be used to enhance robustness in targeted strains.
在面临大规模生物反应器等具有挑战性的环境时,微生物的稳健性对于开发能够保持一致性能的细胞工厂至关重要。尽管存在评估和理解表型水平稳健性的工具,但潜在的代谢和遗传机制尚未得到很好的定义,这限制了我们设计具有稳健功能的更多菌株的能力。
本研究包括四个步骤。(I)从酵母突变体在多种环境中生长的已发表数据集分析适应性和稳健性。(II)确定了影响稳健性或适应性的基因和代谢过程,并在酿酒酵母 CEN.PK113-7D 中删除了其中的 14 个基因。(III)在模拟典型工业过程的三个扰动空间中培养带有基因缺失的突变体。(IV)在每个扰动空间中确定每个突变体的适应性和稳健性。我们报告称,稳健性根据扰动空间而变化。我们确定了与增强稳健性相关的基因,如 MET28,与硫代谢有关;以及与降低稳健性相关的基因,包括 TIR3 和 WWM1,两者都参与应激反应和细胞凋亡。
本研究展示了如何分析表型数据集以揭示表型反应与相关基因之间的关系。具体来说,稳健性分析可以研究单个基因和代谢过程对不同扰动空间中稳定微生物性能的影响。最终,这些信息可用于增强目标菌株的稳健性。