Beck Ashley E, Kleiner Manuel, Garrell Anna-Katharina
Department of Biological and Environmental Sciences, Carroll College, Helena, MT, United States.
Department of Plant and Microbial Biology, North Carolina State University, Raleigh, NC, United States.
Front Plant Sci. 2022 Jun 20;13:910377. doi: 10.3389/fpls.2022.910377. eCollection 2022.
With a growing world population and increasing frequency of climate disturbance events, we are in dire need of methods to improve plant productivity, resilience, and resistance to both abiotic and biotic stressors, both for agriculture and conservation efforts. Microorganisms play an essential role in supporting plant growth, environmental response, and susceptibility to disease. However, understanding the specific mechanisms by which microbes interact with each other and with plants to influence plant phenotypes is a major challenge due to the complexity of natural communities, simultaneous competition and cooperation effects, signalling interactions, and environmental impacts. Synthetic communities are a major asset in reducing the complexity of these systems by simplifying to dominant components and isolating specific variables for controlled experiments, yet there still remains a large gap in our understanding of plant microbiome interactions. This perspectives article presents a brief review discussing ways in which metabolic modelling can be used in combination with synthetic communities to continue progress toward understanding the complexity of plant-microbe-environment interactions. We highlight the utility of metabolic models as applied to a community setting, identify different applications for both flux balance and elementary flux mode simulation approaches, emphasize the importance of ecological theory in guiding data interpretation, and provide ideas for how the integration of metabolic modelling techniques with big data may bridge the gap between simplified synthetic communities and the complexity of natural plant-microbe systems.
随着世界人口的增长以及气候干扰事件的频繁发生,无论是对于农业还是保护工作而言,我们都迫切需要提高植物生产力、恢复力以及对非生物和生物胁迫因子的抵抗力的方法。微生物在支持植物生长、环境响应以及病害易感性方面发挥着至关重要的作用。然而,由于自然群落的复杂性、同时存在的竞争与合作效应、信号相互作用以及环境影响,了解微生物彼此之间以及与植物相互作用以影响植物表型的具体机制是一项重大挑战。合成群落通过简化为主要成分并分离特定变量以进行对照实验,成为降低这些系统复杂性的一项重要手段,但我们对植物微生物组相互作用的理解仍存在很大差距。这篇观点文章简要回顾了代谢建模如何与合成群落结合使用,以在理解植物 - 微生物 - 环境相互作用的复杂性方面继续取得进展。我们强调了应用于群落环境的代谢模型的实用性,确定了通量平衡和基本通量模式模拟方法的不同应用,强调了生态理论在指导数据解释中的重要性,并提供了关于代谢建模技术与大数据整合如何弥合简化的合成群落与天然植物 - 微生物系统复杂性之间差距的思路。