Biome Makers Inc., West Sacramento, California, USA.
Department of Genetics, Physiology and Microbiology, Complutense University of Madrid, Madrid, Spain.
mSphere. 2021 Aug 25;6(4):e0013021. doi: 10.1128/mSphere.00130-21. Epub 2021 Aug 11.
Understanding the effectiveness and potential mechanism of action of agricultural biological products under different soil profiles and crops will allow more precise product recommendations based on local conditions and will ultimately result in increased crop yield. This study aimed to use bulk soil and rhizosphere microbial composition and structure to evaluate the potential effect of a Bacillus amyloliquefaciens inoculant (strain QST713) on potatoes and to explore its relationship with crop yield. We implemented next-generation sequencing (NGS) and bioinformatics approaches to assess the bacterial and fungal biodiversity in 185 soil samples, distributed over four different time points-from planting to harvest-from three different geographical locations in the United States. In addition to location and sampling time (which includes the difference between bulk soil and rhizosphere) as the main variables defining the microbiome composition, the microbial inoculant applied as a treatment also had a small but significant effect in fungal communities and a marginally significant effect in bacterial communities. However, treatment preserved the native communities without causing a detectable long-lasting effect on the alpha- and beta-diversity patterns after harvest. Using information about the application of the microbial inoculant and considering microbiome composition and structure data, we were able to train a Random Forest model to estimate if a bulk soil or rhizosphere sample came from a low- or high-yield block with relatively high accuracy (84.6%), concluding that the structure of fungal communities gives us more information as an estimator of potato yield than the structure of bacterial communities. Our results reinforce the notion that each cultivar on each location recruits a unique microbial community and that these communities are modulated by the vegetative growth stage of the plant. Moreover, inoculation of a Bacillus amyloliquefaciens strain QST713-based product on potatoes also changed the abundance of specific taxonomic groups and the structure of local networks in those locations where the product caused an increase in the yield. The data obtained, from in-field assays, allowed training a predictive model to estimate the yield of a certain block, identifying microbiome variables-especially those related to microbial community structure-even with a higher predictive power than the geographical location of the block (that is, the principal determinant of microbial beta-diversity). The methods described here can be replicated to fit new models in any other crop and to evaluate the effect of any agricultural input in the composition and structure of the soil microbiome.
了解农业生物制品在不同土壤剖面和作物下的有效性和潜在作用机制,将使我们能够根据当地条件更准确地推荐产品,最终提高作物产量。本研究旨在使用土壤宏基因组和根际微生物组成和结构来评估生防细菌(菌株 QST713)对土豆的潜在影响,并探索其与作物产量的关系。我们采用下一代测序(NGS)和生物信息学方法,评估了来自美国三个不同地理位置的 185 个土壤样本的细菌和真菌生物多样性,这些样本分布在四个不同的时间点(从种植到收获)。除了地理位置和采样时间(包括土壤宏基因组和根际之间的差异)作为定义微生物组组成的主要变量外,作为处理应用的微生物接种剂对真菌群落也有较小但显著的影响,对细菌群落有边缘显著的影响。然而,处理剂保留了本地群落,在收获后没有对 alpha 和 beta 多样性模式产生可检测的持久影响。利用关于微生物接种剂应用的信息,并考虑微生物组组成和结构数据,我们能够训练随机森林模型来估计土壤宏基因组或根际样本是否来自低产或高产田块,并且具有相对较高的准确性(84.6%),这表明真菌群落结构作为土豆产量的估计指标比细菌群落结构提供了更多信息。我们的结果强化了这样一种观点,即每个地点的每个品种都招募了一个独特的微生物群落,这些群落受植物营养生长阶段的调节。此外,在土豆上接种生防细菌(菌株 QST713)产品也改变了特定分类群的丰度和这些产品导致产量增加的地点的局部网络结构。从田间试验中获得的数据允许训练一个预测模型来估计某个田块的产量,确定微生物组变量-特别是与微生物群落结构相关的变量-甚至比田块的地理位置(即微生物 beta 多样性的主要决定因素)具有更高的预测能力。这里描述的方法可以复制到任何其他作物的新模型中,并评估任何农业投入对土壤微生物组组成和结构的影响。