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[白洋淀藻华相关浮游植物群落的代谢条形码分析及相关驱动因素的确定]

[Metabarcoding Profiling of Phytoplankton Communities Associated with Algal Blooms and Determining Related Drivers in Baiyangdian Lake].

作者信息

Chen Ting, Du Xun, Chen Yi-Yong, Guo Xiao-Yu, Xiong Wei

机构信息

College of Resouurces Environment and Tourism, Capital Normal University, Beijing 100048, China.

Research Center for Eco-Environmental Sciences, Chinese Academy of Sciences, Beijing 100085, China.

出版信息

Huan Jing Ke Xue. 2023 Nov 8;44(11):6116-6124. doi: 10.13227/j.hjkx.202211309.

Abstract

Phytoplankton are the main cause of algal blooms. To identify bloom algae and assess the risks of the algal blooms in Baiyangdian Lake, a survey on 373 sites was conducted in August 2020. The phytoplankton were studied via both morphological-based density counting and metabarcoding profiling. Then, the bloom degree was classed according to algae density, and the relationship between the community of bloom algae and environmental variables were modeled to determine key factors constraining spatial variation in bloom algae communities. The results showed that more than 95% of the sampling sites were free from the risk of algal blooms(phytoplankton density<2×10 cells·L), and only five sites had a slight risk of algal blooms. A total of 90 species with potential of algal blooming were detected, including 20 dominant species, which were mainly affiliated with Chlorophyta, Cyanophyta, and Euglenophyta. Communities of bloom algae significantly varied among different regions(<0.05). Total phosphorus(TP), total nitrogen(TN), and ammonia nitrogen(NH-N) were the key factors significantly affecting the spatial variation in algal bloom communities. At the phylum level, these key factors were significantly positively correlated with Chlorophyta, whereas at the species level, species in Bacillariophyta and Chlorophyta responded significantly to these key factors. Thus, our findings suggested that nutrient levels were significantly related to bloom algae communities, and we proposed that controlling the input of nutrients such as nitrogen and phosphorus and regulating the hydrological process of the lake would be effective management techniques to prevent algal blooms in Baiyangdian Lake.

摘要

浮游植物是藻华的主要成因。为识别白洋淀的藻华藻类并评估藻华风险,于2020年8月对373个位点进行了调查。通过基于形态学的密度计数和宏条形码分析对浮游植物进行了研究。然后,根据藻类密度对藻华程度进行分类,并对藻华藻类群落与环境变量之间的关系进行建模,以确定制约藻华藻类群落空间变化的关键因素。结果表明,超过95%的采样位点不存在藻华风险(浮游植物密度<2×10⁶个细胞·L⁻¹),只有5个位点存在轻微藻华风险。共检测到90种具有藻华潜力的物种,包括20种优势物种,它们主要隶属于绿藻门、蓝藻门和裸藻门。藻华藻类群落在不同区域间存在显著差异(P<0.05)。总磷(TP)、总氮(TN)和氨氮(NH₃-N)是显著影响藻华群落空间变化的关键因素。在门水平上,这些关键因素与绿藻门显著正相关,而在物种水平上,硅藻门和绿藻门的物种对这些关键因素有显著响应。因此,我们的研究结果表明营养水平与藻华藻类群落显著相关,我们建议控制氮、磷等营养物质的输入以及调节湖泊水文过程是预防白洋淀藻华的有效管理技术。

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