植被恢复
草原
生态学
植物群落
生物
生态系统
环境科学
微生物种群生物学
群落结构
生态演替
农学
细菌
遗传学
作者
Xiaoxia Gao,Shikui Dong,Yudan Xu,Yu Li,Shuai Li,Shengnan Wu,Hao Shen,Shiliang Liu,Ellen L. Fry
出处
期刊:Catena
[Elsevier BV]
日期:2021-05-23
卷期号:205: 105385-105385
被引量:31
标识
DOI:10.1016/j.catena.2021.105385
摘要
Abstract Numerous restoration measures have been implemented to rebuild degraded alpine grasslands on the Qinghai-Tibetan Plateau, one of the most fragile regions in the world. Understanding the responses of soil microbes to restoration activities is critical to predict restoration direction and trajectories, as soil microbes play a key role in ecosystem functioning and nutrients cycling. In this study, we identified the effects of revegetation on soil microbial community composition and diversity, and the interaction between bacterial and fungal taxa in different successional stages (early stage, middle stage, late stage) by using a severely degraded grassland as the baseline, and healthy grassland as the target. Our results show that the composition of bacteria at phylum level and fungi at class level were significantly changed between successional stages. The diversity of bacteria at OTU level was significantly decreased, while the diversity of fungal OTUs were not significantly changed with successional stages. Plant and soil properties explained 53.15% variation of bacterial structure and 46.16% variation of fungal structure. Plant community, soil organic carbon, total nitrogen, and soil pH mainly influence microbial community during recovery process. Bacterial and fungal groups would become more similar to that of the healthy grassland along successional stages, because of the shift in soil resources and plant community. Total links and negative links of bacteria-fungi interaction networks increased along successional stages of revegetated grasslands. Keystone species in each network also changed with successional stages. These findings verified that revegetation could be effective to restore the microbial community of severely degraded grassland on the Qinghai-Tibetan Plateau.
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