分解者
生态学
碳循环
环境科学
生物多样性
土壤碳
土壤生物学
生物量(生态学)
土壤生态学
微生物种群生物学
生态系统
生物
土壤有机质
土壤水分
土壤生物多样性
遗传学
细菌
作者
Ember M. Morrissey,Jennifer Kane,Binu M. Tripathi,Md Shafiul Islam Rion,Bruce A. Hungate,Rima B. Franklin,Chris Walter,Benjamin N. Sulman,Edward Brzostek
标识
DOI:10.1016/j.soilbio.2022.108893
摘要
Soil carbon feedbacks to global change are uncertain, and the biological processes that govern soil organic matter decomposition are not resolved in current ecosystem models. Though it is recognized that microbial biodiversity influences decomposition rates, incorporating this relationship into ecosystem models is challenging because microbial communities are prohibitively diverse. It is likely necessary to distill microbial biodiversity by focusing on functional groups or ecological strategies. The ecological strategies that currently dominate the microbial ecology literature derive from macroecological theory, have clear weaknesses, and have had limited success when applied to predict soil carbon dynamics. Here, we present a new framework for soil microorganisms: Carbon Acquisition Ecological Strategies (CAES), and we outline a path toward incorporating microbial biodiversity into ecosystem models using this framework to enhance predictions of soil carbon feedbacks to global change. Because a microorganism's diet is central to its ecological niche and likely to covary with other ecologically significant traits, we posit that carbon acquisition may serve as a tractable foundation for developing ecological strategies. We describe four candidate ecological strategies for soil microorganisms: 1° decomposers that assimilate complex plant polymers, 2° decomposers that assimilate microbial necromass, passive consumers that assimilate dissolved organic carbon, and predatory microbes that assimilate live microbial biomass. These strategies are directly linked to soil carbon pools currently represented in ecosystem models and may provide a foundation for greater integration of microbial community dynamics into ecosystem models.
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