放大器
扩增子测序
计算机科学
底漆(化妆品)
计算生物学
基因组
源代码
DNA测序
生物
遗传学
聚合酶链反应
程序设计语言
基因
16S核糖体RNA
有机化学
化学
作者
Michael Wang,Esther G. Lou,Nicolae Sapoval,Eddie Kim,Prashant Kalvapalle,Bryce Kille,R. A. Leo Elworth,Yunxi Liu,Yilei Fu,Lauren B. Stadler,Todd J. Treangen
标识
DOI:10.1038/s41467-024-49957-9
摘要
Abstract Tiled amplicon sequencing has served as an essential tool for tracking the spread and evolution of pathogens. Over 15 million complete SARS-CoV-2 genomes are now publicly available, most sequenced and assembled via tiled amplicon sequencing. While computational tools for tiled amplicon design exist, they require downstream manual optimization both computationally and experimentally, which is slow and costly. Here we present Olivar, a first step towards a fully automated, variant-aware design of tiled amplicons for pathogen genomes. Olivar converts each nucleotide of the target genome into a numeric risk score, capturing undesired sequence features that should be avoided. In a direct comparison with PrimalScheme, we show that Olivar has fewer mismatches overlapping with primers and predicted PCR byproducts. We also compare Olivar head-to-head with ARTIC v4.1, the most widely used primer set for SARS-CoV-2 sequencing, and show Olivar yields similar read mapping rates (~90%) and better coverage to the manually designed ARTIC v4.1 amplicons. We also evaluate Olivar on real wastewater samples and found that Olivar has up to 3-fold higher mapping rates while retaining similar coverage. In summary, Olivar automates and accelerates the generation of tiled amplicons, even in situations of high mutation frequency and/or density. Olivar is available online as a web application at https://olivar.rice.edu and can be installed locally as a command line tool with Bioconda. Source code, installation guide, and usage are available at https://github.com/treangenlab/Olivar .
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