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Generation of Comprehensive Ecosystem-Specific Reference Databases with Species-Level Resolution by High-Throughput Full-Length 16S rRNA Gene Sequencing and Automated Taxonomy Assignment (AutoTax)

机译:通过高通量全长16S rRNA基因测序和自动分类分配(AutoTax),使用物种级分辨率生成综合生态系统特定的参考数据库

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High-throughput 16S rRNA gene amplicon sequencing is an essential method for studying the diversity and dynamics of microbial communities. However, this method is presently hampered by the lack of high-identity reference sequences for many environmental microbes in the public 16S rRNA gene reference databases and by the absence of a systematic and comprehensive taxonomy for the uncultured majority. Here, we demonstrate how high-throughput synthetic long-read sequencing can be applied to create ecosystem-specific full-length 16S rRNA gene amplicon sequence variant (FL-ASV) resolved reference databases that include high-identity references (&98.7% identity) for nearly all abundant bacteria (&0.01% relative abundance) using Danish wastewater treatment systems and anaerobic digesters as an example. In addition, we introduce a novel sequence identity-based approach for automated taxonomy assignment (AutoTax) that provides a complete seven-rank taxonomy for all reference sequences, using the SILVA taxonomy as a backbone, with stable placeholder names for unclassified taxa. The FL-ASVs are perfectly suited for the evaluation of taxonomic resolution and bias associated with primers commonly used for amplicon sequencing, allowing researchers to choose those that are ideal for their ecosystem. Reference databases processed with AutoTax greatly improves the classification of short-read 16S rRNA ASVs at the genus- and species-level, compared with the commonly used universal reference databases. Importantly, the placeholder names provide a way to explore the unclassified environmental taxa at different taxonomic ranks, which in combination with in situ analyses can be used to uncover their ecological roles.
机译:高通量16SRRNA基因扩增子测序是研究微生物社区的多样性和动态的必要方法。然而,这种方法通过公共16S rRNA基因参考数据库中的许多环境微生物缺乏高度高度参考序列而受到阻碍,并且由于没有对未审查的多数的系统和综合分类而缺乏系统和综合分类。在这里,我们证明了如何应用高通量合成的长读取测序来产生生态系统特异性全长16S rRNA基因扩增子序列变体(FL-ASV)分辨的参考数据库,包括高同型参考(& 98.7%的身份)使用丹麦废水处理系统和厌氧消化器,几乎所有丰富的细菌(& 0.01%的相对丰度)作为一个例子。此外,我们介绍了一种新的基于序列形式的自动分类分配方法(AutoTax),为所有参考序列提供完整的七级分类法,使用Silva分类序列作为骨干,具有稳定的占位符号,用于未分类的分类机。 FL-ASV非常适合评估与常用于扩增子测序的引物相关的分类学分辨率和偏差,允许研究人员选择那些非常适合其生态系统的人。与常用的通用参考数据库相比,使用AutoTax处理的参考数据库大大提高了在Genus和物种级别的短读16s rRNA ASV的分类。重要的是,占位符名称提供了一种探索不同分类法中未分类的环境分类群的方法,这与原位分析相结合可用于揭示其生态角色。

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