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Trait-based approaches for understanding microbial biodiversity and ecosystem functioning

机译:基于特征的方法来了解微生物的生物多样性和生态系统功能

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摘要

In ecology, biodiversity-ecosystem functioning (BEE) research has seen a shift in perspective from taxonomy to function in the last two decades, with successful application of trait-based approaches. This shift offers opportunities for a deeper mechanistic understanding of the role of biodiversity in maintaining multiple ecosystem processes and services. In this paper, we highlight studies that have focused on BEE of microbial communities with an emphasis on integrating trait-based approaches to microbial ecology. In doing so, we explore some of the inherent challenges and opportunities of understanding BEE using microbial systems. For example, microbial biologists characterize communities using gene phylogenies that are often unable to resolve functional traits. Additionally, experimental designs of existing microbial BEE studies are often inadequate to unravel BEE relationships. We argue that combining eco-physiological studies with contemporary molecular tools in a trait-based framework can reinforce our ability to link microbial diversity to ecosystem processes. We conclude that such trait-based approaches are a promising framework to increase the understanding of microbial BEE relationships and thus generating systematic principles in microbial ecology and more generally ecology.
机译:在生态学方面,随着成功应用基于特征的方法,在过去的二十年中,生物多样性-生态系统功能(BEE)研究的观点已从分类学转向功能。这种转变为深入了解生物多样性在维持多种生态系统过程和服务中的作用提供了机会。在本文中,我们重点介绍了专注于微生物群落BEE的研究,重点是整合基于特征的微生物生态学方法。在此过程中,我们探索了使用微生物系统了解BEE的一些固有挑战和机遇。例如,微生物生物学家使用通常无法解析功能性状的基因系统发育来表征社区。此外,现有微生物BEE研究的实验设计通常不足以阐明BEE关系。我们认为,在基于特征的框架中将生态生理研究与当代分子工具相结合可以增强我们将微生物多样性与生态系统过程联系起来的能力。我们得出的结论是,这种基于特征的方法是一个有前途的框架,可以增进对微生物BEE关系的理解,从而在微生物生态学以及更广泛的生态学中产生系统的原理。

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