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微生物群落研究的系统建模方法:从宏基因组学到群落结构推断

Systems modeling approaches for microbial community studies: from metagenomics to inference of the community structure.

作者信息

Hanemaaijer Mark, Röling Wilfred F M, Olivier Brett G, Khandelwal Ruchir A, Teusink Bas, Bruggeman Frank J

机构信息

Systems Bioinformatics, Amsterdam Institute for Molecules, Medicines and Systems, VU University Amsterdam Amsterdam, Netherlands ; Molecular Cell Physiology, Amsterdam Institute for Molecules, Medicines and Systems, VU University Amsterdam Amsterdam, Netherlands.

Molecular Cell Physiology, Amsterdam Institute for Molecules, Medicines and Systems, VU University Amsterdam Amsterdam, Netherlands.

出版信息

Front Microbiol. 2015 Mar 19;6:213. doi: 10.3389/fmicb.2015.00213. eCollection 2015.

Abstract

Microbial communities play important roles in health, industrial applications and earth's ecosystems. With current molecular techniques we can characterize these systems in unprecedented detail. However, such methods provide little mechanistic insight into how the genetic properties and the dynamic couplings between individual microorganisms give rise to their dynamic activities. Neither do they give insight into what we call "the community state", that is the fluxes and concentrations of nutrients within the community. This knowledge is a prerequisite for rational control and intervention in microbial communities. Therefore, the inference of the community structure from experimental data is a major current challenge. We will argue that this inference problem requires mathematical models that can integrate heterogeneous experimental data with existing knowledge. We propose that two types of models are needed. Firstly, mathematical models that integrate existing genomic, physiological, and physicochemical information with metagenomics data so as to maximize information content and predictive power. This can be achieved with the use of constraint-based genome-scale stoichiometric modeling of community metabolism which is ideally suited for this purpose. Next, we propose a simpler coarse-grained model, which is tailored to solve the inference problem from the experimental data. This model unambiguously relate to the more detailed genome-scale stoichiometric models which act as heterogeneous data integrators. The simpler inference models are, in our opinion, key to understanding microbial ecosystems, yet until now, have received remarkably little attention. This has led to the situation where the modeling of microbial communities, using only genome-scale models is currently more a computational, theoretical exercise than a method useful to the experimentalist.

摘要

微生物群落对健康、工业应用和地球生态系统起着重要作用。借助当前的分子技术,我们能够以前所未有的详细程度对这些系统进行表征。然而,这些方法对于个体微生物的遗传特性以及它们之间的动态耦合如何产生其动态活动,几乎没有提供任何机制性的见解。它们也无法洞察我们所说的“群落状态”,即群落内营养物质的通量和浓度。这些知识是对微生物群落进行合理控制和干预的先决条件。因此,从实验数据推断群落结构是当前的一项重大挑战。我们认为,这个推断问题需要能够将异构实验数据与现有知识整合起来的数学模型。我们提出需要两种类型的模型。首先,是将现有的基因组、生理学和物理化学信息与宏基因组学数据整合起来的数学模型,以便最大化信息含量和预测能力。这可以通过基于约束的群落代谢基因组规模化学计量模型来实现,该模型非常适合此目的。接下来,我们提出一个更简单的粗粒度模型,该模型是为从实验数据解决推断问题而量身定制的。这个模型与作为异构数据整合器的更详细的基因组规模化学计量模型有着明确的关联。在我们看来,更简单的推断模型是理解微生物生态系统的关键,但到目前为止,它们受到的关注非常少。这导致了一种情况,即仅使用基因组规模模型对微生物群落进行建模目前更多的是一种计算性的理论练习,而不是对实验人员有用的方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f7ea/4365725/b9def4038faa/fmicb-06-00213-g0003.jpg

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