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Benthic monitoring of salmon farms in Norway using foraminiferal metabarcoding

机译:使用有孔虫超条形码技术对挪威鲑鱼养殖场进行底栖监测

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ABSTRACT: The rapid growth of the salmon industry necessitates the development of fast and accurate tools to assess its environmental impact. Macrobenthic monitoring is commonly used to measure the impact of organic enrichment associated with salmon farm activities. However, classical benthic monitoring can hardly answer the rapidly growing demand because the morphological identification of macro-invertebrates is time-consuming, expensive and requires taxonomic expertise. Environmental DNA (eDNA) metabarcoding of meiofauna-sized organisms, such as Foraminifera, was proposed to overcome the drawbacks of macrofauna-based benthic monitoring. Here, we tested the application of foraminiferal metabarcoding to benthic monitoring of salmon farms in Norway. We analysed 140 samples of eDNA and environmental RNA (eRNA) extracted from surface sediment samples collected at 4 salmon farming sites in Norway. We sequenced the variable region 37f of the 18S rRNA gene specific to Foraminifera. We compared our data to the results of macrofaunal surveys of the same sites and tested the congruence between various diversity indices inferred from metabarcoding and morphological data. The results of our study confirm the usefulness of Foraminifera as bioindicators of organic enrichment associated with salmon farming. The foraminiferal diversity increased with the distance to fish cages, and metabarcoding provides an assessment of the ecological quality comparable to the morphological analyses. The foraminiferal metabarcoding approach appears to be a promising alternative to classical benthic monitoring, providing a solution to the morpho-taxonomic bottleneck of macrofaunal surveys.
机译:摘要:鲑鱼产业的快速增长需要开发快速准确的工具来评估其对环境的影响。大型底栖动物监测通常用于测量与鲑鱼养殖场活动相关的有机物富集的影响。但是,传统的底栖监测很难满足快速增长的需求,因为大型无脊椎动物的形态学鉴定既费时,昂贵又需要生物分类学专业知识。为了克服大型动物底栖生物监测的缺点,提出了对有规模的生物(如有孔虫)进行环境DNA(eDNA)元条形码。在这里,我们测试了有孔虫超条形码技术在挪威鲑鱼养殖场底栖监测中的应用。我们分析了从挪威4个鲑鱼养殖场收集的地表沉积物样品中提取的140个eDNA和环境RNA(eRNA)样品。我们对有孔虫特异性的18S rRNA基因的可变区37f进行了测序。我们将我们的数据与同一地点的大型动物调查结果进行了比较,并测试了由元条形码和形态数据推断出的各种多样性指标之间的一致性。我们的研究结果证实了有孔虫作为与鲑鱼养殖有关的有机富集生物指标的有用性。有孔虫的多样性随着与鱼笼的距离的增加而增加,元条形码技术可以提供与形态分析相当的生态质量评估。有孔虫的metabarcoding方法似乎是经典底栖监测的有前途的替代方法,为大型动物调查的形态分类学瓶颈提供了解决方案。

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