Josephine Bay Paul Center, Marine Biological Laboratory, Woods Hole, Massachusetts, USA.
Department of Botany, University of Wyoming, Laramie, Wyoming, USA.
mSystems. 2022 Jun 28;7(3):e0006022. doi: 10.1128/msystems.00060-22. Epub 2022 May 16.
Microbial communities in the rhizosphere are distinct from those in soils and are influenced by stochastic and deterministic processes during plant development. These communities contain bacteria capable of promoting growth in host plants through various strategies. While some interactions are characterized in mechanistic detail using model systems, others can be inferred from culture-independent methods, such as 16S amplicon sequencing, using machine learning methods that account for this compositional data type. To characterize assembly processes and identify community members associated with plant growth amid the spatiotemporal variability of the rhizosphere, we grew in a greenhouse time series with amended and reduced microbial treatments. Inoculation with a native soil community increased plant leaf area throughout the time series by up to 28%. Despite identifying spatially and temporally variable amplicon sequence variants (ASVs) in both treatments, inoculated communities were more highly connected and assembled more deterministically overall. Using a generalized linear modeling approach controlling for spatial variability, we identified 43 unique ASVs that were positively or negatively associated with leaf area, biomass, or growth rates across treatments and time stages. ASVs of the genus dominated rhizosphere communities and showed some of the strongest positive and negative correlations with plant growth. Members of this genus, and growth-associated ASVs more broadly, exhibited variable connectivity in networks independent of growth association (positive or negative). These findings suggest host-rhizobacterial interactions vary temporally at narrow taxonomic scales and present a framework for identifying rhizobacteria that may work independently or in concert to improve agricultural yields. The rhizosphere, the zone of soil surrounding plant roots, is a hot spot for microbial activity, hosting bacteria capable of promoting plant growth in ways like increasing nutrient availability or fighting plant pathogens. This microbial system is highly diverse and most bacteria are unculturable, so to identify specific bacteria associated with plant growth, we used culture-independent community DNA sequencing combined with machine learning techniques. We identified 43 specific bacterial sequences associated with the growth of the plant in different soil microbial treatments and at different stages of plant development. Most associations between bacterial abundances and plant growth were positive, although similar bacterial groups sometimes had different effects on growth. Why this happens will require more research, but overall, this study provides a way to identify native bacteria from plant roots that might be isolated and applied to boost agricultural yields.
根际微生物群落与土壤中的微生物群落不同,并且在植物发育过程中受到随机和确定性过程的影响。这些群落包含能够通过各种策略促进宿主植物生长的细菌。虽然一些相互作用在使用模型系统的机制细节中得到了描述,但其他相互作用可以从依赖于文化的方法中推断出来,例如使用机器学习方法对 16S 扩增子测序进行推断,这些方法考虑了这种组成数据类型。为了描述组装过程并确定与植物生长相关的群落成员,我们在温室时间序列中种植了 ,并用添加和减少微生物的处理进行了处理。用本地土壤群落接种可使植物叶片面积在整个时间序列中增加高达 28%。尽管在两种处理中都鉴定出了空间和时间上可变的扩增子序列变体 (ASV),但接种的群落总体上具有更高的连接性和更确定的组装。使用广义线性建模方法控制空间变异性,我们鉴定出 43 个独特的 ASV,它们与处理和时间阶段的叶片面积、生物量或生长速率呈正相关或负相关。属 的 ASV 主导着根际群落,与植物生长呈正相关和负相关的最强。该属的成员以及更广泛的与生长相关的 ASV,在与生长无关的网络中表现出可变的连通性(正相关或负相关)。这些发现表明,宿主-根际细菌相互作用在狭窄的分类尺度上随时间而变化,并为鉴定可能独立或协同工作以提高农业产量的根际细菌提供了框架。根际是植物根系周围的土壤区域,是微生物活动的热点,其中存在能够以增加养分可用性或抵御植物病原体等方式促进植物生长的细菌。这个微生物系统非常多样化,大多数细菌是不可培养的,因此为了鉴定与植物生长相关的特定细菌,我们使用了独立于培养的社区 DNA 测序并结合了机器学习技术。我们在不同的土壤微生物处理和植物发育的不同阶段,鉴定了 43 个与植物 生长相关的特定细菌序列。细菌丰度与植物生长之间的大多数关联是正相关的,尽管类似的细菌群有时对生长有不同的影响。为什么会发生这种情况还需要更多的研究,但总的来说,这项研究提供了一种从植物根系中分离出可能被分离并应用于提高农业产量的本土细菌的方法。