环境科学
土壤水分
陆地生态系统
土壤碳
生态系统
碳循环
微生物种群生物学
生态学
碳纤维
环境化学
地球科学
生物
土壤科学
化学
地质学
材料科学
遗传学
复合数
复合材料
细菌
作者
Yongxing Cui,Shushi Peng,Manuel Delgado‐Baquerizo,Matthias C. Rillig,César Terrer,Biao Zhu,Xin Jing,Ji Chen,Jinquan Li,Jiao Feng,Yue He,Linchuan Fang,Daryl Moorhead,Robert L. Sinsabaugh,Josep Peñuelas
摘要
Abstract Microbial communities in soils are generally considered to be limited by carbon (C), which could be a crucial control for basic soil functions and responses of microbial heterotrophic metabolism to climate change. However, global soil microbial C limitation (MCL) has rarely been estimated and is poorly understood. Here, we predicted MCL, defined as limited availability of substrate C relative to nitrogen and/or phosphorus to meet microbial metabolic requirements, based on the thresholds of extracellular enzyme activity across 847 sites (2476 observations) representing global natural ecosystems. Results showed that only about 22% of global sites in terrestrial surface soils show relative C limitation in microbial community. This finding challenges the conventional hypothesis of ubiquitous C limitation for soil microbial metabolism. The limited geographic extent of C limitation in our study was mainly attributed to plant litter, rather than soil organic matter that has been processed by microbes, serving as the dominant C source for microbial acquisition. We also identified a significant latitudinal pattern of predicted MCL with larger C limitation at mid‐ to high latitudes, whereas this limitation was generally absent in the tropics. Moreover, MCL significantly constrained the rates of soil heterotrophic respiration, suggesting a potentially larger relative increase in respiration at mid‐ to high latitudes than low latitudes, if climate change increases primary productivity that alleviates MCL at higher latitudes. Our study provides the first global estimates of MCL, advancing our understanding of terrestrial C cycling and microbial metabolic feedback under global climate change.
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