厌氧氨氧化菌
反硝化细菌
反硝化
富营养化
环境化学
异养
硝酸盐
缺氧水域
氮气循环
沉积物
微生物种群生物学
环境科学
生态学
化学
氮气
生物
营养物
细菌
遗传学
古生物学
有机化学
作者
Dandan Zhang,Mingyue Li,Yuchun Yang,Huang Yu,Fanshu Xiao,Chengzhi Mao,Jie Huang,Yuhe Yu,Yunfeng Wang,Bo Wu,Cheng Wang,Longfei Shu,Zhili He,Qingyun Yan
出处
期刊:Water Research
[Elsevier]
日期:2022-05-19
卷期号:220: 118637-118637
被引量:50
标识
DOI:10.1016/j.watres.2022.118637
摘要
The anaerobic microbial nitrogen (N) removal in lake sediments is one of the most important processes driving the nitrogen cycling in lake ecosystems. However, the N removal and its underlying mechanisms regulated by denitrifying and anaerobic ammonia oxidation (anammox) bacteria in lake sediments remain poorly understood. With the field sediments collected from different areas of Lake Donghu (a shallow eutrophic lake), we examined the denitrifying and anammox bacterial communities by sequencing the nirS/K and hzsB genes, respectively. The results indicated that denitrifiers in sediments were affiliated to nine clusters, which are involved in both heterotrophic and autotrophic denitrification. However, anammox bacteria were only dominated by Candidatus Brocadia. We found that NO3- and NO2- concentrations, as well as Nar enzyme activity were the key factors affecting denitrifying and anammox communities in this eutrophic lake. The enrichment experiments in bioreactors confirmed the divergence of denitrification and anammox rates with an additional complement of NO2-, especially under a condition low nitrate reductase activity. The coupled denitrification and anammox may play significant roles in N removal, and the availability of electronic acceptors (i.e., NO2- and NO3-) strongly influenced the N loss in lake sediments. Further path analysis indicated that NO2-, NO3- and some N-related enzymes were the key factors affecting microbial N removal in lake sediments. This study advances our understanding of the mechanisms driving the of denitrification and anammox in lake sediments, which also provides new insights into coupled denitrification-anammox N removal in eutrophic lake ecosystems.
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