首页> 外文期刊>The ISME journal emultidisciplinary journal of microbial ecology >Individual-level trait diversity predicts phytoplankton community properties better than species richness or evenness
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Individual-level trait diversity predicts phytoplankton community properties better than species richness or evenness

机译:个人级特质多样性预测浮游植物群落属性比物种丰富或均匀性更好

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摘要

Understanding how microbial diversity influences ecosystem properties is of paramount importance. Cellular traits-which determine responses to the abiotic and biotic environment-may help us rigorously link them. However, our capacity to measure traits in natural communities has thus far been limited. Here we compared the predictive power of trait richness (trait space coverage), evenness (regularity in trait distribution) and divergence (prevalence of extreme phenotypes) derived from individual-based measurements with two species-level metrics (taxonomic richness and evenness) when modelling the productivity of natural phytoplankton communities. Using phytoplankton data obtained from 28 lakes sampled at different spatial and temporal scales, we found that the diversity in individual-level morphophysiological traits strongly improved our ability to predict community resource-use and biomass yield. Trait evenness-the regularity in distribution of individual cells/colonies within the trait space-was the strongest predictor, exhibiting a robust negative relationship across scales. Our study suggests that quantifying individual microbial phenotypes in trait space may help us understand how to link physiology to ecosystem-scale processes. Elucidating the mechanisms scaling individual-level trait variation to microbial community dynamics could there improve our ability to forecast changes in ecosystem properties across environmental gradients.
机译:了解微生物多样性如何影响生态系统性质是至关重要的。细胞性状 - 决定对非生物和生物环境的反应 - 可以帮助我们严格连接它们。然而,我们迄今为止衡量自然社区的特征的能力。在这里,我们将特性丰富(特质空间覆盖率),均匀度(特质分布规律)的预测力和极端表型的分歧(极端表型患病率)进行了比较,在建模时使用两种物种级度量(分类学丰富性和均匀性)来源于基于基于个体的测量天然浮游植物社区的生产力。使用从不同的空间和时间尺度采样的28湖中获得的浮游植物数据,我们发现个体水平的混合物生理性状的多样性强烈提高了我们预测群落资源利用和生物量产量的能力。特质均匀 - 特征空间内单个细胞/殖民地分布的规律 - 是最强的预测因子,横跨尺度的强大负面关系。我们的研究表明,量化特质空间中的个体微生物表型可以帮助我们了解如何将生理学链接到生态系统规模过程。阐明对微生物群落动态的单个特性变异的机制可以提高我们预测环境梯度的生态系统性能变化的能力。

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