Deciphering the transcriptional regulatory network of Yarrowia lipolytica using machine learning

Abraham A.J. Kerssemakers, Jayanth Krishnan, Kevin Rychel, Daniel Craig Zielinski, Bernhard Palsson, Suresh Sudarsan
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Abstract

The transcriptional regulatory network (TRN) in Yarrowia lipolytica coordinates its cellular processes, including the response to various stimuli. The TRN has been difficult to study due to its complex nature. In industrial-size fermenters, environments are often not homogenous, resulting in Yarrowia experiencing fluctuating conditions during a fermentation. Compared with homogenous laboratory conditions, these fluctuations result in altered cellular states and behaviours due to the action of the TRN. Here, a machine learning approach was deployed to modularize the transcriptome to enable meaningful description of its changing composition. To provide a sufficiently broad dataset, a wide range of relevant fermentation conditions (nutrient limitations, growth rates, pH values, oxygen availability and CO2 stresses) were run and samples obtained for RNA-Seq generation. We thus significantly increased the number of publicly available transcriptomic dataset on Y. lipolytica W29. In total, 23 independently modulated gene sets (termed iModulons) were identified of which 9 could be linked to corresponding regulons in S. cerevisiae. Strong responses were found in relation to oxygen limitation and elevated CO2 concentrations represented by (i) altered ribosomal protein synthesis, (ii) cell cycle disturbances, (iii) respiratory gene expression, and (iv) redox homeostasis. These results provide a fine-grained systems-level understanding of the Y. lipolytica TRN in response to industrially meaningful stresses, providing engineering targets to design more robust production strains. Moreover, this study provides a guide to perform similar work with poorly characterized single-cellular eukaryotic organisms.
利用机器学习破译脂溶性亚罗菌的转录调控网络
脂溶性亚罗菌的转录调控网络(TRN)协调其细胞过程,包括对各种刺激的反应。TRN 因其复杂的性质而难以研究。在工业规模的发酵罐中,环境通常并不均匀,导致脂肪亚罗菌在发酵过程中经历波动的条件。与均匀的实验室条件相比,这些波动会导致细胞状态和行为因 TRN 的作用而发生改变。在这里,我们采用了一种机器学习方法来模块化转录组,以便对其不断变化的组成进行有意义的描述。为了提供足够广泛的数据集,我们运行了一系列相关的发酵条件(营养限制、生长速率、pH 值、氧气供应和二氧化碳胁迫),并获得了用于生成 RNA-Seq 的样本。因此,我们大大增加了脂溶性酵母菌 W29 的公开转录组数据集的数量。共鉴定出 23 个独立调控基因集(称为 iModulons),其中 9 个可与 S. cerevisiae 中的相应调控子联系起来。发现了与氧限制和二氧化碳浓度升高有关的强烈反应,表现为:(i) 核糖体蛋白合成改变;(ii) 细胞周期紊乱;(iii) 呼吸基因表达;(iv) 氧化还原平衡。这些结果提供了对脂溶性酵母菌 TRN 应对工业上有意义的压力的细粒度系统级理解,为设计更稳健的生产菌株提供了工程目标。此外,这项研究还为特征不明显的单细胞真核生物开展类似工作提供了指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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