Department of Cell and Molecular Biology, College of the Environment and Life Sciences, University of Rhode Islandgrid.20431.34, Kingston, Rhode Island, USA.
State Key Laboratory of Microbial Metabolism, Joint International Research Laboratory of Metabolic & Development Sciences, School of Life Sciences and Biotechnology, Shanghai Jiao Tong Universitygrid.16821.3c, Shanghai, People's Republic of China.
mSystems. 2022 Aug 30;7(4):e0058822. doi: 10.1128/msystems.00588-22. Epub 2022 Aug 11.
Microbial acclimation to different temperature conditions can involve broad changes in cell composition and metabolic efficiency. A systems-level view of these metabolic responses in nonmesophilic organisms, however, is currently missing. In this study, thermodynamically constrained genome-scale models were applied to simulate the metabolic responses of a deep-sea psychrophilic bacterium, Shewanella psychrophila WP2, under suboptimal (4°C), optimal (15°C), and supraoptimal (20°C) growth temperatures. The models were calibrated with experimentally determined growth rates of WP2. Gibbs free energy change of reactions (Δ'), metabolic fluxes, and metabolite concentrations were predicted using random simulations to characterize temperature-dependent changes in the metabolism. The modeling revealed the highest metabolic efficiency at the optimal temperature, and it suggested distinct patterns of ATP production and consumption that could lead to lower metabolic efficiency under suboptimal or supraoptimal temperatures. The modeling also predicted rearrangement of fluxes through multiple metabolic pathways, including the glycolysis pathway, Entner-Doudoroff pathway, tricarboxylic acid (TCA) cycle, and electron transport system, and these predictions were corroborated through comparisons to WP2 transcriptomes. Furthermore, predictions of metabolite concentrations revealed the potential conservation of reducing equivalents and ATP in the suboptimal temperature, consistent with experimental observations from other psychrophiles. Taken together, the WP2 models provided mechanistic insights into the metabolism of a psychrophile in response to different temperatures. Metabolic flexibility is a central component of any organism's ability to survive and adapt to changes in environmental conditions. This study represents the first application of thermodynamically constrained genome-scale models in simulating the metabolic responses of a deep-sea psychrophilic bacterium to various temperatures. The models predicted differences in metabolic efficiency that were attributed to changes in metabolic pathway utilization and metabolite concentration during growth under optimal and nonoptimal temperatures. Experimental growth measurements were used for model calibration, and temperature-dependent transcriptomic changes corroborated the model-predicted rearrangement of metabolic fluxes. Overall, this study highlights the utility of modeling approaches in studying the temperature-driven metabolic responses of an extremophilic organism.
微生物对不同温度条件的适应可能涉及细胞组成和代谢效率的广泛变化。然而,目前对于非嗜热生物这些代谢反应的系统水平观点尚不清楚。在这项研究中,应用热力学约束的基因组尺度模型来模拟深海嗜冷菌 Shewanella psychrophila WP2 在亚最佳(4°C)、最佳(15°C)和超最佳(20°C)生长温度下的代谢反应。通过实验测定的 WP2 生长速率对模型进行了校准。使用随机模拟预测反应的吉布斯自由能变化(Δ')、代谢通量和代谢物浓度,以表征代谢对温度的依赖性变化。建模结果表明,在最佳温度下具有最高的代谢效率,并且表明在亚最佳或超最佳温度下可能导致代谢效率降低的不同的 ATP 产生和消耗模式。建模还预测了通过多种代谢途径(包括糖酵解途径、Entner-Doudoroff 途径、三羧酸(TCA)循环和电子传递系统)的通量重新排列,并且通过与 WP2 转录组的比较验证了这些预测。此外,代谢物浓度的预测揭示了在亚最佳温度下还原当量和 ATP 潜在的保守性,这与其他嗜冷生物的实验观察结果一致。总之,WP2 模型提供了对低温下适应不同温度的嗜冷菌代谢的机制见解。代谢灵活性是任何生物体在环境条件变化时生存和适应的核心组成部分。本研究代表了首次应用热力学约束的基因组尺度模型模拟深海嗜冷菌对各种温度的代谢反应。模型预测了在最佳和非最佳温度下生长时,由于代谢途径利用和代谢物浓度的变化,代谢效率的差异。使用实验生长测量值对模型进行校准,并且温度依赖性转录组变化证实了模型预测的代谢通量的重新排列。总体而言,这项研究强调了建模方法在研究极端微生物的温度驱动代谢反应中的实用性。