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Analysis of Microbial Functions in the Rhizosphere Using a Metabolic-Network Based Framework for Metagenomics Interpretation

机译:使用基于代谢网络的元基因组学解释框架分析根际中的微生物功能

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摘要

Advances in metagenomics enable high resolution description of complex bacterial communities in their natural environments. Consequently, conceptual approaches for community level functional analysis are in high need. Here, we introduce a framework for a metagenomics-based analysis of community functions. Environment-specific gene catalogs, derived from metagenomes, are processed into metabolic-network representation. By applying established ecological conventions, network-edges (metabolic functions) are assigned with taxonomic annotations according to the dominance level of specific groups. Once a function-taxonomy link is established, prediction of the impact of dominant taxa on the overall community performances is assessed by simulating removal or addition of edges (taxa associated functions). This approach is demonstrated on metagenomic data describing the microbial communities from the root environment of two crop plants – wheat and cucumber. Predictions for environment-dependent effects revealed differences between treatments (root vs. soil), corresponding to documented observations. Metabolism of specific plant exudates (e.g., organic acids, flavonoids) was linked with distinct taxonomic groups in simulated root, but not soil, environments. These dependencies point to the impact of these metabolite families as determinants of community structure. Simulations of the activity of pairwise combinations of taxonomic groups (order level) predicted the possible production of complementary metabolites. Complementation profiles allow formulating a possible metabolic role for observed co-occurrence patterns. For example, production of tryptophan-associated metabolites through complementary interactions is unique to the tryptophan-deficient cucumber root environment. Our approach enables formulation of testable predictions for species contribution to community activity and exploration of the functional outcome of structural shifts in complex bacterial communities. Understanding community-level metabolism is an essential step toward the manipulation and optimization of microbial function. Here, we introduce an analysis framework addressing three key challenges of such data: producing quantified links between taxonomy and function; contextualizing discrete functions into communal networks; and simulating environmental impact on community performances. New technologies will soon provide a high-coverage description of biotic and a-biotic aspects of complex microbial communities such as these found in gut and soil. This framework was designed to allow the integration of high-throughput metabolomic and metagenomic data toward tackling the intricate associations between community structure, community function, and metabolic inputs.
机译:宏基因组学的进步使得能够对自然环境中的复杂细菌群落进行高分辨率描述。因此,迫切需要用于社区级别功能分析的概念方法。在这里,我们介绍了一个基于宏基因组学的社区功能分析框架。源自元基因组的特定于环境的基因目录被处理成代谢网络表示形式。通过应用已建立的生态惯例,可以根据特定群体的优势级别为网络边缘(代谢功能)分配分类注释。一旦建立了功能-分类法链接,就可以通过模拟边缘的去除或添加(与分类法相关的功能)来评估主要分类法对整体社区绩效的影响。宏基因组学数据证明了这种方法,该数据描述了两种农作物(小麦和黄瓜)根系环境中的微生物群落。对与环境有关的影响的预测表明,处理之间(根与土壤)之间存在差异,与已记录的观察结果相对应。特定植物渗出物(例如有机酸,类黄酮)的代谢与模拟的根系(而非土壤)环境中的不同分类群相关。这些依赖性指出了这些代谢物家族作为社区结构决定因素的影响。分类组成对组合的活性(顺序水平)的模拟预测了可能产生互补代谢产物。补充概况允许为观察到的共现模式制定可能的代谢作用。例如,色氨酸缺乏黄瓜根系环境通过互补相互作用产生色氨酸相关代谢产物。我们的方法能够为物种对社区活动的贡献制定可检验的预测,并探索复杂细菌群落中结构转变的功能结果。了解社区水平的代谢是朝着操纵和优化微生物功能迈出的重要一步。在这里,我们介绍一个分析框架,解决此类数据的三个主要挑战:在分类法和功能之间建立量化的联系;将离散功能结合到公共网络中;并模拟环境对社区绩效的影响。新技术很快将为复杂微生物群落的生物和非生物方面提供高覆盖率的描述,例如在肠道和土壤中发现的微生物。该框架旨在允许整合高通量代谢组学和宏基因组学数据,以解决社区结构,社区功能和代谢输入之间的复杂联系。

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