Centler Florian, Günnigmann Sarah, Fetzer Ingo, Wendeberg Annelie
Department of Environmental Microbiology, UFZ-Helmholtz Centre for Environmental Research, Permoserstraße 15, 04318 Leipzig, Germany.
Stockholm Resilience Centre, Stockholm University, Kräftriket 2B, 11419 Stockholm, Sweden.
Microorganisms. 2020 Jan 30;8(2):190. doi: 10.3390/microorganisms8020190.
Natural microbial communities in soils are highly diverse, allowing for rich networks of microbial interactions to unfold. Identifying key players in these networks is difficult as the distribution of microbial diversity at the local scale is typically non-uniform, and is the outcome of both abiotic environmental factors and microbial interactions. Here, using spatially resolved microbial presence-absence data along an aquifer transect contaminated with hydrocarbons, we combined co-occurrence analysis with association rule mining to identify potential keystone species along the hydrocarbon degradation process. Derived co-occurrence networks were found to be of a modular structure, with modules being associated with specific spatial locations and metabolic activity along the contamination plume. Association rules identify species that never occur without another, hence identifying potential one-sided cross-feeding relationships. We find that hub nodes in the rule network appearing in many rules as targets qualify as potential keystone species that catalyze critical transformation steps and are able to interact with varying partners. By contrasting analysis based on data derived from bulk samples and individual soil particles, we highlight the importance of spatial sample resolution. While individual inferred interactions are hypothetical in nature, requiring experimental verification, the observed global network patterns provide a unique first glimpse at the complex interaction networks at work in the microbial world.
土壤中的自然微生物群落高度多样,使得丰富的微生物相互作用网络得以展现。由于局部尺度上微生物多样性的分布通常不均匀,且是 abiotic 环境因素和微生物相互作用的结果,因此识别这些网络中的关键参与者很困难。在这里,我们利用沿受烃类污染的含水层断面的空间分辨微生物存在 - 缺失数据,将共现分析与关联规则挖掘相结合,以识别烃类降解过程中的潜在关键物种。发现衍生的共现网络具有模块化结构,模块与污染羽流沿线的特定空间位置和代谢活动相关联。关联规则识别那些没有另一个物种就不会出现的物种,从而识别潜在的单向交叉喂养关系。我们发现,规则网络中的枢纽节点在许多规则中作为目标出现,可被视为潜在的关键物种,它们催化关键的转化步骤,并能够与不同的伙伴相互作用。通过对比基于大量样本和单个土壤颗粒数据的分析,我们强调了空间样本分辨率的重要性。虽然单个推断的相互作用本质上是假设性的,需要实验验证,但观察到的全球网络模式为微生物世界中正在起作用的复杂相互作用网络提供了独特的初步视角。