High accuracy meets high throughput for near full-length 16S ribosomal RNA amplicon sequencing on the Nanopore platform.

IF 2.2 Q2 MULTIDISCIPLINARY SCIENCES PNAS nexus Pub Date : 2024-10-09 eCollection Date: 2024-10-01 DOI:10.1093/pnasnexus/pgae411
Xuan Lin, Katherine Waring, Hans Ghezzi, Carolina Tropini, John Tyson, Ryan M Ziels
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Abstract

Small subunit (SSU) ribosomal RNA (rRNA) gene amplicon sequencing is a foundational method in microbial ecology. Currently, short-read platforms are commonly employed for high-throughput applications of SSU rRNA amplicon sequencing, but at the cost of poor taxonomic classification due to limited fragment lengths. The Oxford Nanopore Technologies (ONT) platform can sequence full-length SSU rRNA genes, but its lower raw-read accuracy has so-far limited accurate taxonomic classification and de novo feature generation. Here, we present a sequencing workflow, termed ssUMI, that combines unique molecular identifier (UMI)-based error correction with newer (R10.4+) ONT chemistry and sample barcoding to enable high throughput near full-length SSU rRNA (e.g. 16S rRNA) amplicon sequencing. The ssUMI workflow generated near full-length 16S rRNA consensus sequences with 99.99% mean accuracy using a minimum subread coverage of 3×, surpassing the accuracy of Illumina short reads. The consensus sequences generated with ssUMI were used to produce error-free de novo sequence features with no false positives with two microbial community standards. In contrast, Nanopore raw reads produced erroneous de novo sequence features, indicating that UMI-based error correction is currently necessary for high-accuracy microbial profiling with R10.4+ ONT sequencing chemistries. We showcase the cost-competitive scalability of the ssUMI workflow by sequencing 87 time-series wastewater samples and 27 human gut samples, obtaining quantitative ecological insights that were missed by short-read amplicon sequencing. ssUMI, therefore, enables accurate and low-cost full-length 16S rRNA amplicon sequencing on Nanopore, improving accessibility to high-resolution microbiome science.

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在 Nanopore 平台上进行近全长 16S 核糖体 RNA 扩增片段测序的高精度与高通量的完美结合。
小亚基(SSU)核糖体 RNA(rRNA)基因扩增片段测序是微生物生态学的基础方法。目前,SSU rRNA 扩增片段测序的高通量应用通常采用短读取平台,但其代价是由于片段长度有限而导致分类不准确。牛津纳米孔技术公司(ONT)的平台可以对全长的 SSU rRNA 基因进行测序,但其较低的原始读数准确度迄今限制了准确的分类学分类和从头特征生成。在这里,我们介绍了一种测序工作流程(称为 ssUMI),它将基于唯一分子标识符(UMI)的纠错与较新(R10.4+)的 ONT 化学和样本条形码相结合,实现了高通量的近全长 SSU rRNA(如 16S rRNA)扩增片段测序。ssUMI工作流程生成的近全长16S rRNA共识序列平均准确率为99.99%,最小子读取覆盖率为3倍,超过了Illumina短读取的准确率。用 ssUMI 生成的共识序列生成了无差错的新序列特征,在两个微生物群落标准中没有出现假阳性。相比之下,Nanopore 原始读数会产生错误的从头序列特征,这表明目前使用 R10.4+ ONT 测序化学试剂进行高精度微生物图谱分析需要基于 UMI 的纠错。我们通过对 87 个时间序列废水样本和 27 个人类肠道样本进行测序,展示了 ssUMI 工作流程具有成本竞争力的可扩展性,获得了短读程扩增子测序所遗漏的定量生态洞察力。
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