The importance of compartmentalization in metabolic flux models: yeast as an ecosystem of organelles.

Niels Klitgord, D. Segrè
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引用次数: 42

Abstract

Understanding the evolution and dynamics of metabolism in microbial ecosystems is an ongoing challenge in microbiology. A promising approach towards this goal is the extension of genome-scale flux balance models of metabolism to multiple interacting species. However, since the detailed distribution of metabolic functions among ecosystem members is often unknown, it is important to investigate how compartmentalization of metabolites and reactions affects flux balance predictions. Here, as a first step in this direction, we address the importance of compartmentalization in the well characterized metabolic model of the yeast Saccharomyces cerevisiae, which we treat as an "ecosystem of organelles". In addition to addressing the impact that the removal of compartmentalization has on model predictions, we show that by systematically constraining some individual fluxes in a de-compartmentalized version of the model we can significantly reduce the flux prediction errors induced by the removal of compartments. We expect that our analysis will help predict and understand metabolic functions in complex microbial communities. In addition, further study of yeast as an ecosystem of organelles might provide novel insight on the evolution of endosymbiosis and multicellularity.
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区隔化在代谢通量模型中的重要性:酵母作为细胞器的生态系统。
了解微生物生态系统中代谢的进化和动力学是微生物学的一个持续挑战。实现这一目标的一个有希望的方法是将基因组尺度的代谢通量平衡模型扩展到多个相互作用的物种。然而,由于代谢功能在生态系统成员之间的详细分布往往是未知的,因此研究代谢物和反应的区隔化如何影响通量平衡预测是很重要的。在这里,作为朝这个方向迈出的第一步,我们解决了在酵母代谢模型中区室化的重要性,我们将其视为“细胞器生态系统”。除了解决去除区隔化对模型预测的影响外,我们还表明,通过系统地约束模型的去区隔化版本中的某些单个通量,我们可以显着减少由去除区隔引起的通量预测误差。我们期望我们的分析将有助于预测和理解复杂微生物群落的代谢功能。此外,对酵母作为细胞器生态系统的进一步研究可能会为内共生和多细胞进化提供新的见解。
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