Institute for Systems Biology, Seattle, Washington, USA.
Departments of Bioengineering and Genome Sciences, University of Washington, Seattle, Washington, USA.
mSystems. 2023 Apr 27;8(2):e0127022. doi: 10.1128/msystems.01270-22. Epub 2023 Mar 21.
Microbial consortia drive essential processes, ranging from nitrogen fixation in soils to providing metabolic breakdown products to animal hosts. However, it is challenging to translate the composition of microbial consortia into their emergent functional capacities. Community-scale metabolic models hold the potential to simulate the outputs of complex microbial communities in a given environmental context, but there is currently no consensus for what the fitness function of an entire community should look like in the presence of ecological interactions and whether community-wide growth operates close to a maximum. Transitioning from single-taxon genome-scale metabolic models to multitaxon models implies a growth cone without a well-specified growth rate solution for individual taxa. Here, we argue that dynamic approaches naturally overcome these limitations, but they come at the cost of being computationally expensive. Furthermore, we show how two nondynamic, steady-state approaches approximate dynamic trajectories and pick ecologically relevant solutions from the community growth cone with improved computational scalability.
微生物群落驱动着从土壤固氮到为动物宿主提供代谢分解产物等重要过程。然而,将微生物群落的组成转化为其涌现的功能能力具有挑战性。群落尺度代谢模型有可能在给定的环境背景下模拟复杂微生物群落的输出,但目前对于在存在生态相互作用的情况下整个群落的适应度函数应该是什么样子,以及社区范围内的生长是否接近最大值,还没有共识。从单分类群基因组尺度代谢模型向多分类群模型的转变意味着在没有为单个分类群指定良好的增长率解决方案的情况下出现了生长锥。在这里,我们认为动态方法自然可以克服这些限制,但它们的代价是计算成本高。此外,我们展示了两种非动态、稳态方法如何逼近动态轨迹,并从社区生长锥中选择具有改进计算可扩展性的生态相关解决方案。