抵抗性
基因组
适应性
沉积物
环境科学
地表水
抗性(生态学)
丰度(生态学)
生态学
环境化学
环境工程
生物
抗生素
化学
抗生素耐药性
微生物学
生物化学
整合子
基因
古生物学
作者
Cong Wang,Yujie Mao,Lu Zhang,Huimin Wei,Zhi Wang
出处
期刊:Water Research
[Elsevier]
日期:2024-04-08
卷期号:256: 121583-121583
被引量:3
标识
DOI:10.1016/j.watres.2024.121583
摘要
The escalating antibiotic resistance threatens the long-term global health. Lake sediment is a vital hotpot in transmitting antibiotic resistance genes (ARGs); however, their distribution pattern and driving mechanisms in sediment cores remain unclear. This study first utilized metagenomics to reveal how resistome is distributed from surface water to 45 cm sediments in four representative lakes, central China. Significant vertical variations in ARG profiles were observed (R2 = 0.421, p < 0.001), with significant reductions in numbers, abundance, and Shannon index from the surface water to deep sediment (all p-values < 0.05). ARGs also has interconnections within the vertical profile of the lakes: twelve ARGs persistently exist all sites and depths, and shared ARGs (e.g., vanS and mexF) were assembled by diverse hosts at varying depths. The 0–18 cm sediment had the highest mobility and health risk of ARGs, followed by the 18–45 cm sediment and water. The drivers of ARGs transformed along the profile of lakes: microbial communities and mobile genetic elements (MGEs) dominated in water, whereas environmental variables gradually become the primary through regulating microbial communities and MGEs with increasing sediment depth. Interestingly, the stochastic process governed ARG assembly, while the stochasticity diminished under the mediation of Chloroflexi, Candidatus Bathyarcaeota and oxidation-reduction potential with increasing depth. Overall, we formulated a conceptual framework to elucidate the vertical environmental adaptability of resistome in anthropogenic lakes. This study shed on the resistance risks and their environmental adaptability from sediment cores, which could reinforce the governance of public health issues.
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