Pinto Francisco, Medina Daniel A, Pérez-Correa José R, Garrido Daniel
Department of Chemical and Bioprocess Engineering, School of Engineering, Pontificia Universidad Católica de Chile, Santiago, Chile.
Front Microbiol. 2017 Dec 14;8:2507. doi: 10.3389/fmicb.2017.02507. eCollection 2017.
The gut microbiome is a complex microbial community that has a significant influence on the host. Microbial interactions in the gut are mediated by dietary substrates, especially complex polysaccharides. In this environment, breakdown products from larger carbohydrates and short chain fatty acids are commonly shared among gut microbes. Understanding the forces that guide microbiome development and composition is important to determine its role in health and in the intervention of the gut microbiome as a therapeutic tool. Recently, modeling approaches such as genome-scale models and time-series analyses have been useful to predict microbial interactions. In this study, a bottom-up approach was followed to develop a mathematical model based on microbial growth equations that incorporate metabolic sharing and inhibition. The model was developed using experimental data from a system comprising four microorganisms of the infant gut microbiome ( subsp. , , and ), one substrate (fructooligosaccharides, FOS), and evaluating two metabolic products (acetate and lactate). After parameter optimization, the model accurately predicted bacterial abundance in co-cultures from mono-culture data. In addition, a good correlation was observed between the experimental data with predicted FOS consumption and acid production. and were dominant under these conditions. Further model validation included cultures with the four-species in a bioreactor using FOS. The model was able to predict the predominance of the two aforementioned species, as well as depletion of acetate and lactate. Finally, the model was tested for parameter identifiability and sensitivity. These results suggest that variations in microbial abundance and activities in the infant gut were mainly explained by metabolic interactions, and could be properly modeled using Monod kinetics with metabolic interactions. The model could be scaled to include data from larger consortia, or be applied to microbial communities where sharing metabolic resources is important in shaping bacterial abundance. Moreover, the model could be useful in designing microbial consortia with desired properties such as higher acid production.
肠道微生物群是一个对宿主有重大影响的复杂微生物群落。肠道中的微生物相互作用由膳食底物介导,尤其是复杂多糖。在这种环境下,较大碳水化合物的分解产物和短链脂肪酸通常在肠道微生物之间共享。了解引导微生物群发育和组成的因素对于确定其在健康中的作用以及将肠道微生物群作为治疗工具进行干预非常重要。最近,诸如基因组规模模型和时间序列分析等建模方法已被用于预测微生物相互作用。在本研究中,采用自下而上的方法,基于包含代谢共享和抑制的微生物生长方程开发了一个数学模型。该模型是利用来自一个系统的实验数据开发的,该系统包含婴儿肠道微生物群的四种微生物(亚种、、和)、一种底物(低聚果糖,FOS),并评估两种代谢产物(乙酸盐和乳酸盐)。经过参数优化后,该模型根据单培养数据准确预测了共培养中的细菌丰度。此外,在预测的FOS消耗和酸产生与实验数据之间观察到了良好的相关性。在这些条件下,和占主导地位。进一步的模型验证包括在生物反应器中使用FOS对这四种物种进行培养。该模型能够预测上述两种物种的优势地位,以及乙酸盐和乳酸盐的消耗。最后,对该模型进行了参数可识别性和敏感性测试。这些结果表明,婴儿肠道中微生物丰度和活性的变化主要由代谢相互作用解释,并且可以使用具有代谢相互作用的莫诺德动力学进行适当建模。该模型可以扩展以纳入来自更大群落的数据,或者应用于在塑造细菌丰度方面共享代谢资源很重要的微生物群落。此外,该模型可用于设计具有所需特性(如更高酸产生)的微生物群落。