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真核模式微生物生态系统中高阶生态相互作用的转录组分析。

A Transcriptomic Analysis of Higher-Order Ecological Interactions in a Eukaryotic Model Microbial Ecosystem.

机构信息

South African Grape and Wine Research Institute, Department of Viticulture and Oenology, Stellenbosch Universitygrid.11956.3a, Stellenbosch, South Africa.

出版信息

mSphere. 2022 Dec 21;7(6):e0043622. doi: 10.1128/msphere.00436-22. Epub 2022 Oct 19.

Abstract

Nonlinear ecological interactions within microbial ecosystems and their contribution to ecosystem functioning remain largely unexplored. Higher-order interactions, or interactions in systems comprised of more than two members that cannot be explained by cumulative pairwise interactions, are particularly understudied, especially in eukaryotic microorganisms. The wine fermentation ecosystem presents an ideal model to study yeast ecosystem establishment and functioning. Some pairwise ecological interactions between wine yeast species have been characterized, but very little is known about how more complex, multispecies systems function. Here, we evaluated nonlinear ecosystem properties by determining the transcriptomic response of Saccharomyces cerevisiae to pairwise versus tri-species culture. The transcriptome revealed that genes expressed during pairwise coculture were enriched in the tri-species data set but also that just under half of the data set comprised unique genes attributed to a higher-order response. Through interactive protein-association network visualizations, a holistic cell-wide view of the gene expression data was generated, which highlighted known stress response and metabolic adaptation mechanisms which were specifically activated during tri-species growth. Further, extracellular metabolite data corroborated that the observed differences were a result of a biotic stress response. This provides exciting new evidence showing the presence of higher-order interactions within a model microbial ecosystem. Higher-order interactions are one of the major blind spots in our understanding of microbial ecosystems. These systems remain largely unpredictable and are characterized by nonlinear dynamics, in particular when the system is comprised of more than two entities. By evaluating the transcriptomic response of S. cerevisiae to an increase in culture complexity from a single species to two- and three-species systems, we were able to confirm the presence of a unique response in the more complex setting that could not be explained by the responses observed at the pairwise level. This is the first data set that provides molecular targets for further analysis to explain unpredictable ecosystem dynamics in yeast.

摘要

微生物生态系统中的非线性生态相互作用及其对生态系统功能的贡献在很大程度上仍未得到探索。高阶相互作用,即在由两个以上成员组成的系统中的相互作用,不能用累积的两两相互作用来解释,尤其在真核微生物中研究较少。葡萄酒发酵生态系统为研究酵母生态系统的建立和功能提供了一个理想的模型。已经描述了一些葡萄酒酵母种间的两两生态相互作用,但对于更复杂的多物种系统如何发挥作用,我们知之甚少。在这里,我们通过确定酿酒酵母的转录组对两两和三物种培养的反应来评估非线性生态系统特性。转录组表明,在两两共培养中表达的基因在三物种数据集中富集,但也有近一半的数据集中包含归因于高阶反应的独特基因。通过交互式蛋白质关联网络可视化,生成了基因表达数据的整体细胞视图,突出了在三物种生长过程中特异性激活的已知应激反应和代谢适应机制。此外,细胞外代谢物数据证实,观察到的差异是生物应激反应的结果。这为在模型微生物生态系统中存在高阶相互作用提供了令人兴奋的新证据。高阶相互作用是我们对微生物生态系统理解的主要盲点之一。这些系统在很大程度上是不可预测的,其特点是具有非线性动态,特别是当系统由两个以上实体组成时。通过评估酿酒酵母的转录组对从单一物种到两种和三种物种系统的培养复杂性增加的反应,我们能够确认在更复杂的环境中存在独特的反应,这种反应不能用在两两水平观察到的反应来解释。这是第一个提供分子靶点进行进一步分析以解释酵母中不可预测的生态系统动态的数据集。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/56e7/9769528/1478841931c2/msphere.00436-22-f001.jpg

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