Department of Genome Sciences, University of Washington, Seattle, WA 98102, USA.
Proc Natl Acad Sci U S A. 2013 Jul 30;110(31):12804-9. doi: 10.1073/pnas.1300926110. Epub 2013 Jul 15.
The human microbiome plays a key role in human health and is associated with numerous diseases. Metagenomic-based studies are now generating valuable information about the composition of the microbiome in health and in disease, demonstrating nonneutral assembly processes and complex co-occurrence patterns. However, the underlying ecological forces that structure the microbiome are still unclear. Specifically, compositional studies alone with no information about mechanisms of interaction, potential competition, or syntrophy, cannot clearly distinguish habitat-filtering and species assortment assembly processes. To address this challenge, we introduce a computational framework, integrating metagenomic-based compositional data with genome-scale metabolic modeling of species interaction. We use in silico metabolic network models to predict levels of competition and complementarity among 154 microbiome species and compare predicted interaction measures to species co-occurrence. Applying this approach to two large-scale datasets describing the composition of the gut microbiome, we find that species tend to co-occur across individuals more frequently with species with which they strongly compete, suggesting that microbiome assembly is dominated by habitat filtering. Moreover, species' partners and excluders exhibit distinct metabolic interaction levels. Importantly, we show that these trends cannot be explained by phylogeny alone and hold across multiple taxonomic levels. Interestingly, controlling for host health does not change the observed patterns, indicating that the axes along which species are filtered are not fully defined by macroecological host states. The approach presented here lays the foundation for a reverse-ecology framework for addressing key questions concerning the assembly of host-associated communities and for informing clinical efforts to manipulate the microbiome.
人类微生物组在人类健康中起着关键作用,与许多疾病有关。基于宏基因组学的研究现在正在生成关于健康和疾病中微生物组组成的有价值的信息,展示了非中性组装过程和复杂的共同发生模式。然而,仍然不清楚构成微生物组的潜在生态力量。具体来说,仅进行组成学研究而不了解相互作用的机制、潜在竞争或共生,就无法清楚地区分栖息地过滤和物种分类组装过程。为了解决这一挑战,我们引入了一个计算框架,将基于宏基因组学的组成数据与物种相互作用的基因组规模代谢建模相结合。我们使用计算机代谢网络模型来预测 154 种微生物物种之间的竞争和互补水平,并将预测的相互作用度量与物种共同发生进行比较。将这种方法应用于描述肠道微生物组组成的两个大型数据集,我们发现物种在个体之间更频繁地共同出现,与它们强烈竞争的物种一起出现,这表明微生物组的组装主要由栖息地过滤决定。此外,物种的伙伴和排斥者表现出不同的代谢相互作用水平。重要的是,我们表明这些趋势不能仅用系统发育来解释,并且在多个分类水平上都成立。有趣的是,控制宿主健康并不能改变观察到的模式,这表明沿着哪些轴进行物种过滤的轴不完全由宏观生态宿主状态定义。这里提出的方法为解决与宿主相关群落组装的关键问题以及为临床干预微生物组提供信息奠定了基础。