在不同计算基础设施上进行可扩展的高效 DNA 测序分析,帮助发现变体。

IF 4 Q1 GENETICS & HEREDITY NAR Genomics and Bioinformatics Pub Date : 2024-04-25 eCollection Date: 2024-06-01 DOI:10.1093/nargab/lqae031
Friederike Hanssen, Maxime U Garcia, Lasse Folkersen, Anders Sune Pedersen, Francesco Lescai, Susanne Jodoin, Edmund Miller, Matthias Seybold, Oskar Wacker, Nicholas Smith, Gisela Gabernet, Sven Nahnsen
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引用次数: 0

摘要

在现代生物医学的许多方面,DNA 变异分析已变得不可或缺,其中最突出的是正常样本和肿瘤样本的比较。本地测序工作和公共数据库收集了数以千计的样本,需要高度可扩展、可移植和自动化的工作流程来简化处理过程。在这里,我们介绍 nf-core/sarek 3,这是一个成熟、全面的变异调用和注释管道,适用于生殖系和体细胞样本。它适用于任何具有已知参考文献的基因组。我们对原始管道进行了全面重写,显示通过使用 CRAM 格式和增加样本内并行化来显著减少存储需求和运行时间。这两种方法都使商业云的成本降低了 70%,使用户能够进行大规模、跨平台的数据分析,同时保持较低的成本和二氧化碳排放量。代码可在 https://nf-co.re/sarek 上获取。
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Scalable and efficient DNA sequencing analysis on different compute infrastructures aiding variant discovery.

DNA variation analysis has become indispensable in many aspects of modern biomedicine, most prominently in the comparison of normal and tumor samples. Thousands of samples are collected in local sequencing efforts and public databases requiring highly scalable, portable, and automated workflows for streamlined processing. Here, we present nf-core/sarek 3, a well-established, comprehensive variant calling and annotation pipeline for germline and somatic samples. It is suitable for any genome with a known reference. We present a full rewrite of the original pipeline showing a significant reduction of storage requirements by using the CRAM format and runtime by increasing intra-sample parallelization. Both are leading to a 70% cost reduction in commercial clouds enabling users to do large-scale and cross-platform data analysis while keeping costs and CO2 emissions low. The code is available at https://nf-co.re/sarek.

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CiteScore
8.00
自引率
2.20%
发文量
95
审稿时长
15 weeks
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