优势(遗传学)
马尾松
木本植物
生物
植物群落
生态学
生态系统
灌木
微生物种群生物学
物种多样性
植物
生态演替
生物化学
遗传学
细菌
基因
作者
Jing Guo,Boliang Wei,Jinliang Liu,David M. Eissenstat,Shuisheng Yu,Xiaofei Gong,Jianguo Wu,Xiaoyong He,Mingjian Yu
出处
期刊:Plants
[MDPI AG]
日期:2023-04-24
卷期号:12 (9): 1750-1750
被引量:1
标识
DOI:10.3390/plants12091750
摘要
Plant species identity influences soil microbial communities directly by host specificity and root exudates, and indirectly by changing soil properties. As a native pioneer species common in early successional communities, Masson pine (Pinus massoniana) forests are widely distributed in subtropical China, and play a key role in improving ecosystem productivity. However, how pine forest composition, especially the dominance of plant functional groups, affects soil microbial diversity remains unclear. Here, we investigated linkages among woody plant composition, soil physicochemical properties, and microbial diversity in forests along a dominance gradient of Masson pine. Soil bacterial and fungal communities were mainly explained by woody plant community composition rather than by woody species alpha diversity, with the dominance of tree (without including shrub) species and ectomycorrhizal woody plant species accounting for more of the variation among microbial communities than pine dominance alone. Structural equation modeling revealed that bacterial diversity was associated with woody plant compositional variation via altered soil physicochemical properties, whereas fungal diversity was directly driven by woody plant composition. Bacterial functional groups involved in carbohydrate and amino acid metabolism were negatively correlated with the availability of soil nitrogen and phosphorus, whereas saprotrophic and pathogenic fungal groups showed negative correlations with the dominance of tree species. These findings indicate strong linkages between woody plant composition than soil microbial diversity; meanwhile, the high proportion of unexplained variability indicates great necessity of further definitive demonstration for better understanding of forest-microbe interactions and associated ecosystem processes.
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