Soil as an extended composite phenotype of the microbial metagenome

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作者
Andrew L. Neal
Aurélie Bacq-Labreuil
Xiaoxian Zhang
Ian M. Clark
Kevin Coleman
Sacha J. Mooney
Karl Ritz
John W. Crawford
机构
[1] Rothamsted Research,Department of Sustainable Agriculture Sciences
[2] The University of Nottingham,Division of Agriculture and Environmental Science, School of Biosciences
[3] Rothamsted Research,Department of Sustainable Agriculture Sciences
[4] Greenback,Adam Smith Business School
[5] University of Glasgow,undefined
来源
Scientific Reports | / 10卷
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摘要
We use a unique set of terrestrial experiments to demonstrate how soil management practises result in emergence of distinct associations between physical structure and biological functions. These associations have a significant effect on the flux, resilience and efficiency of nutrient delivery to plants (including water). Physical structure, determining the air–water balance in soil as well as transport rates, is influenced by nutrient and physical interventions. Contrasting emergent soil structures exert selective pressures upon the microbiome metagenome. These selective pressures are associated with the quality of organic carbon inputs, the prevalence of anaerobic microsites and delivery of nutrients to microorganisms attached to soil surfaces. This variety results in distinctive gene assemblages characterising each state. The nature of the interactions provide evidence that soil behaves as an extended composite phenotype of the resident microbiome, responsive to the input and turnover of plant-derived organic carbon. We provide new evidence supporting the theory that soil-microbe systems are self-organising states with organic carbon acting as a critical determining parameter. This perspective leads us to propose carbon flux, rather than soil organic carbon content as the critical factor in soil systems, and we present evidence to support this view.
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