用于探究微生物疾病的代谢建模:给实验人员的故事

Metabolic Modeling to Interrogate Microbial Disease: A Tale for Experimentalists.

作者信息

Jean-Pierre Fabrice, Henson Michael A, O'Toole George A

机构信息

Department of Microbiology and Immunology, Geisel School of Medicine at Dartmouth, Hanover, NH, United States.

Department of Chemical Engineering and Institute for Applied Life Sciences, University of Massachusetts, Amherst, MA, United States.

出版信息

Front Mol Biosci. 2021 Feb 18;8:634479. doi: 10.3389/fmolb.2021.634479. eCollection 2021.

Abstract

The explosion of microbiome analyses has helped identify individual microorganisms and microbial communities driving human health and disease, but how these communities function is still an open question. For example, the role for the incredibly complex metabolic interactions among microbial species cannot easily be resolved by current experimental approaches such as 16S rRNA gene sequencing, metagenomics and/or metabolomics. Resolving such metabolic interactions is particularly challenging in the context of polymicrobial communities where metabolite exchange has been reported to impact key bacterial traits such as virulence and antibiotic treatment efficacy. As novel approaches are needed to pinpoint microbial determinants responsible for impacting community function in the context of human health and to facilitate the development of novel anti-infective and antimicrobial drugs, here we review, from the viewpoint of experimentalists, the latest advances in metabolic modeling, a computational method capable of predicting metabolic capabilities and interactions from individual microorganisms to complex ecological systems. We use selected examples from the literature to illustrate how metabolic modeling has been utilized, in combination with experiments, to better understand microbial community function. Finally, we propose how such combined, cross-disciplinary efforts can be utilized to drive laboratory work and drug discovery moving forward.

摘要

微生物组分析的蓬勃发展有助于识别影响人类健康和疾病的个体微生物及微生物群落,但这些群落如何发挥作用仍是一个悬而未决的问题。例如,微生物物种之间极其复杂的代谢相互作用的作用,难以通过目前的实验方法(如16S rRNA基因测序、宏基因组学和/或代谢组学)轻易解决。在多微生物群落的背景下,解决这种代谢相互作用尤其具有挑战性,据报道,在多微生物群落中,代谢物交换会影响关键的细菌特性,如毒力和抗生素治疗效果。由于需要新的方法来确定在人类健康背景下影响群落功能的微生物决定因素,并促进新型抗感染和抗菌药物的开发,在此,我们从实验人员的角度回顾代谢建模的最新进展,代谢建模是一种能够预测从个体微生物到复杂生态系统的代谢能力和相互作用的计算方法。我们引用文献中的选定实例来说明代谢建模如何与实验相结合,以更好地理解微生物群落功能。最后,我们提出如何利用这种跨学科的联合努力推动实验室工作和药物发现向前发展。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5212/7930556/ec47af16fb58/fmolb-08-634479-g001.jpg

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