基因组
生态系统
基因组学
生物
生物地球化学
微生物群
特质
微生物种群生物学
生态学
生态系统服务
微生物生态学
基因组
遗传学
计算机科学
基因
细菌
程序设计语言
作者
Zhen Li,W. J. Riley,Gianna L. Marschmann,Ulaş Karaöz,Ian Shirley,Qiong Wu,Nicholas Bouskill,Kuang‐Yu Chang,P. M. Crill,R. F. Grant,Eric King,S. R. Saleska,Matthew B. Sullivan,Jinyun Tang,R. K. Varner,Ben J. Woodcroft,Kelly Wrighton,Eoin Brodie
标识
DOI:10.1038/s41467-025-57386-5
摘要
Microbes drive the biogeochemical cycles of earth systems, yet the long-standing goal of linking emerging genomic information, microbial traits, mechanistic ecosystem models, and projections under climate change has remained elusive despite a wealth of emerging genomic information. Here we developed a general genome-to-ecosystem (G2E) framework for integrating genome-inferred microbial kinetic traits into mechanistic models of terrestrial ecosystems and applied it at a well-studied Arctic wetland by benchmarking predictions against observed greenhouse gas emissions. We found variation in genome-inferred microbial kinetic traits resulted in large differences in simulated annual methane emissions, quantitatively demonstrating that the genomically observable variations in microbial capacity are consequential for ecosystem functioning. Applying microbial community-aggregated traits via genome relative-abundance-weighting gave better methane emissions predictions (i.e., up to 54% decrease in bias) compared to ignoring the observed abundances, highlighting the value of combined trait inferences and abundances. This work provides an example of integrating microbial functional trait-based genomics, mechanistic and pragmatic trait parameterizations of diverse microbial metabolisms, and mechanistic ecosystem modeling. The generalizable G2E framework will enable the use of abundant microbial metagenomics data to improve predictions of microbial interactions in many complex systems, including oceanic microbiomes.
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