Section of Microbial Ecology, Department of Biology, Lund University, Ecology Building, Lund, 22362, Sweden.
Forest Soils and Biogeochemistry, Swiss Federal Research Institute WSL, Birmensdorf, 8903, Switzerland.
Ecology. 2022 Feb;103(2):e03594. doi: 10.1002/ecy.3594. Epub 2021 Dec 15.
Soil microbial communities perform vital ecosystem functions, such as the decomposition of organic matter to provide plant nutrition. However, despite the functional importance of soil microorganisms, attribution of ecosystem function to particular constituents of the microbial community has been impeded by a lack of information linking microbial function to community composition and structure. Here, we propose a function-first framework to predict how microbial communities influence ecosystem functions. We first view the microbial community associated with a specific function as a whole and describe the dependence of microbial functions on environmental factors (e.g., the intrinsic temperature dependence of bacterial growth rates). This step defines the aggregate functional response curve of the community. Second, the contribution of the whole community to ecosystem function can be predicted, by combining the functional response curve with current environmental conditions. Functional response curves can then be linked with taxonomic data in order to identify sets of "biomarker" taxa that signal how microbial communities regulate ecosystem functions. Ultimately, such indicator taxa may be used as a diagnostic tool, enabling predictions of ecosystem function from community composition. In this paper, we provide three examples to illustrate the proposed framework, whereby the dependence of bacterial growth on environmental factors, including temperature, pH, and salinity, is defined as the functional response curve used to interlink soil bacterial community structure and function. Applying this framework will make it possible to predict ecosystem functions directly from microbial community composition.
土壤微生物群落发挥着重要的生态系统功能,例如分解有机物为植物提供营养。然而,尽管土壤微生物具有重要的功能,但由于缺乏将微生物功能与群落组成和结构联系起来的信息,微生物群落对生态系统功能的归因一直受到阻碍。在这里,我们提出了一个功能优先的框架来预测微生物群落如何影响生态系统功能。我们首先将与特定功能相关的微生物群落视为一个整体,并描述微生物功能对环境因素的依赖关系(例如,细菌生长速率的固有温度依赖性)。这一步定义了群落的综合功能响应曲线。其次,通过将功能响应曲线与当前环境条件相结合,可以预测整个群落对生态系统功能的贡献。然后,可以将功能响应曲线与分类学数据联系起来,以确定指示微生物群落如何调节生态系统功能的“生物标志物”分类群集。最终,这些指示分类群可能被用作诊断工具,使我们能够从群落组成预测生态系统功能。在本文中,我们提供了三个示例来说明所提出的框架,其中细菌生长对环境因素(包括温度、pH 值和盐度)的依赖性被定义为功能响应曲线,用于将土壤细菌群落结构和功能联系起来。应用这个框架将使我们能够直接从微生物群落组成预测生态系统功能。