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BSAseq: an interactive and integrated web-based workflow for identification of causal mutations in bulked F2 populations

机译:BSASEQ:基于互动和集成的基于Web的工作流程,用于识别膨胀F2人群中的因果突变

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摘要

With the advance of next-generation sequencing technologies and reductions in the costs of these techniques, bulked segregant analysis (BSA) has become not only a powerful tool for mapping quantitative trait loci but also a useful way to identify causal gene mutations underlying phenotypes of interest. However, due to the presence of background mutations and errors in sequencing, genotyping, and reference assembly, it is often difficult to distinguish true causal mutations from background mutations. In this study, we developed the BSAseq workflow, which includes an automated bioinformatics analysis pipeline with a probabilistic model for estimating the linked region (the region linked to the causal mutation) and an interactive Shiny web application for visualizing the results. We deeply sequenced a sorghum male-sterile parental line (ms8) to capture the majority of background mutations in our bulked F2 data. We applied the workflow to 11 bulked sorghum F2 populations and 1 rice F2 population and identified the true causal mutation in each population. The workflow is intuitive and straightforward, facilitating its adoption by users without bioinformatics analysis skills. We anticipate that the BSAseq workflow will be broadly applicable to the identification of causal mutations for many phenotypes of interest.
机译:随着下一代测序技术的进步和这些技术成本的降低,大规模分离分析(BSA)不仅已成为绘制数量性状位点的有力工具,而且已成为确定感兴趣表型下的因果基因突变的有用方法。然而,由于存在背景突变以及测序、基因分型和参考装配中的错误,通常很难区分真正的因果突变和背景突变。在这项研究中,我们开发了BSAseq工作流,其中包括一个自动生物信息学分析管道,该管道带有一个概率模型,用于估计链接区域(与因果突变相关的区域),以及一个交互式闪亮的web应用程序,用于可视化结果。我们对高粱雄性不育亲本系(ms8)进行了深度测序,以捕获大量F2数据中的大部分背景突变。我们将该工作流程应用于11个高粱F2群体和1个水稻F2群体,并在每个群体中确定了真正的原因突变。该工作流程直观直观,便于没有生物信息学分析技能的用户采用。我们预计BSAseq工作流程将广泛适用于许多感兴趣的表型的因果突变识别。

著录项

  • 来源
    《Bioinformatics》 |2021年第3期|共6页
  • 作者单位

    Cold Spring Harbor Lab POB 100 Cold Spring Harbor NY 11724 USA;

    Cold Spring Harbor Lab POB 100 Cold Spring Harbor NY 11724 USA;

    Cold Spring Harbor Lab POB 100 Cold Spring Harbor NY 11724 USA;

    Texas Tech Univ Dept Plant &

    Soil Sci Lubbock TX 79409 USA;

    USDA ARS Cropping Syst Res Lab Lubbock TX 79415 USA;

    Cold Spring Harbor Lab POB 100 Cold Spring Harbor NY 11724 USA;

    USDA ARS Cropping Syst Res Lab Lubbock TX 79415 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物工程学(生物技术);
  • 关键词

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