Wilkes Martin A, Edwards François, Jones J Iwan, Murphy John F, England Judy, Friberg Nikolai, Hering Daniel, Poff N LeRoy, Usseglio-Polatera Philippe, Verberk Wilco C E P, Webb Jon, Brown Lee E
Centre for Agroecology, Water and Resilience, Coventry University, Ryton-on-Dunsmore, UK.
Centre for Ecology and Hydrology, Wallingford, UK.
Glob Chang Biol. 2020 Dec;26(12):7255-7267. doi: 10.1111/gcb.15344. Epub 2020 Oct 18.
The growing use of functional traits in ecological research has brought new insights into biodiversity responses to global environmental change. However, further progress depends on overcoming three major challenges involving (a) statistical correlations between traits, (b) phylogenetic constraints on the combination of traits possessed by any single species, and (c) spatial effects on trait structure and trait-environment relationships. Here, we introduce a new framework for quantifying trait correlations, phylogenetic constraints and spatial variability at large scales by combining openly available species' trait, occurrence and phylogenetic data with gridded, high-resolution environmental layers and computational modelling. Our approach is suitable for use among a wide range of taxonomic groups inhabiting terrestrial, marine and freshwater habitats. We demonstrate its application using freshwater macroinvertebrate data from 35 countries in Europe. We identified a subset of available macroinvertebrate traits, corresponding to a life-history model with axes of resistance, resilience and resource use, as relatively unaffected by correlations and phylogenetic constraints. Trait structure responded more consistently to environmental variation than taxonomic structure, regardless of location. A re-analysis of existing data on macroinvertebrate communities of European alpine streams supported this conclusion, and demonstrated that occurrence-based functional diversity indices are highly sensitive to the traits included in their calculation. Overall, our findings suggest that the search for quantitative trait-environment relationships using single traits or simple combinations of multiple traits is unlikely to be productive. Instead, there is a need to embrace the value of conceptual frameworks linking community responses to environmental change via traits which correspond to the axes of life-history models. Through a novel integration of tools and databases, our flexible framework can address this need.
功能性状在生态学研究中的使用日益增加,为生物多样性对全球环境变化的响应带来了新的见解。然而,进一步的进展取决于克服三个主要挑战,这些挑战涉及:(a)性状之间的统计相关性;(b)任何单个物种所拥有的性状组合的系统发育限制;以及(c)对性状结构和性状 - 环境关系的空间效应。在这里,我们通过将公开可用的物种性状、分布和系统发育数据与网格化的高分辨率环境图层及计算建模相结合,引入了一个用于在大尺度上量化性状相关性、系统发育限制和空间变异性的新框架。我们的方法适用于栖息在陆地、海洋和淡水栖息地的广泛分类群。我们使用来自欧洲35个国家的淡水大型无脊椎动物数据展示了其应用。我们确定了一组可用的大型无脊椎动物性状,这些性状对应于一个具有抗性、恢复力和资源利用轴的生活史模型,相对不受相关性和系统发育限制的影响。无论位置如何,性状结构对环境变化的响应都比分类结构更为一致。对欧洲高山溪流大型无脊椎动物群落现有数据的重新分析支持了这一结论,并表明基于分布的功能多样性指数对其计算中所包含的性状高度敏感。总体而言,我们的研究结果表明,使用单个性状或多个性状的简单组合来寻找定量的性状 - 环境关系不太可能有成效。相反,需要认识到通过与生活史模型轴相对应的性状将群落响应与环境变化联系起来的概念框架的价值。通过对工具和数据库的新颖整合,我们灵活的框架可以满足这一需求。