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18S rRNA V9 metabarcoding for diet characterization: a critical evaluation with two sympatric zooplanktivorous fish species

机译:18S rRNA V9元条形码用于饮食表征:对两种同伴动生鱼类的关键评价

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摘要

The potential of the 18S rRNA V9 metabarcoding approach for diet assessment was explored using MiSeq paired‐end (PE; 2 × 150 bp) technology. To critically evaluate the method′s performance with degraded/digested DNA, the diets of two zooplanktivorous fish species from the Bay of Biscay, European sardine (Sardina pilchardus) and European sprat (Sprattus sprattus), were analysed. The taxonomic resolution and quantitative potential of the 18S V9 metabarcoding was first assessed both in silico and with mock and field plankton samples. Our method was capable of discriminating species within the reference database in a reliable way providing there was at least one variable position in the 18S V9 region. Furthermore, it successfully discriminated diet between both fish species, including habitat and diel differences among sardines, overcoming some of the limitations of traditional visual‐based diet analysis methods. The high sensitivity and semi‐quantitative nature of the 18S V9 metabarcoding approach was supported by both visual microscopy and qPCR‐based results. This molecular approach provides an alternative cost and time effective tool for food‐web analysis.
机译:使用MiSeq配对末端(PE; 2×150bp)技术探索了18S rRNA V9元条形码技术在饮食评估中的潜力。为了严格评估该方法对降解/消化的DNA的性能,分析了比斯开湾的两种浮游鱼类,欧洲沙丁鱼(Sardina pilchardus)和欧洲鲱(Sprattus sprattus)的饮食。首先在计算机上以及模拟和现场浮游生物样品中评估了18S V9元条形码的分类学分辨率和定量潜力。只要在18S V9区域中存在至少一个可变位置,我们的方法就能以可靠的方式区分参考数据库中的物种。此外,它成功地区分了两种鱼类的饮食,包括沙丁鱼之间的生境和diel差异,克服了传统的基于视觉的饮食分析方法的某些局限性。视觉显微镜和基于qPCR的结果都支持18S V9元条形码技术的高灵敏度和半定量性质。这种分子方法为食物网分析提供了另一种节省成本和时间的有效工具。

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