Accurate somatic small variant discovery for multiple sequencing technologies with DeepSomatic.

IF 41.7 1区 生物学 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Jimin Park,Daniel E Cook,Pi-Chuan Chang,Alexey Kolesnikov,Lucas Brambrink,Juan Carlos Mier,Joshua Gardner,Brandy McNulty,Samuel Sacco,Ayse G Keskus,Asher Bryant,Tanveer Ahmad,Jyoti Shetty,Yongmei Zhao,Bao Tran,Giuseppe Narzisi,Adrienne Helland,Byunggil Yoo,Irina Pushel,Lisa A Lansdon,Chengpeng Bi,Adam Walter,Margaret Gibson,Tomi Pastinen,Rebecca Reiman,Sharvari Mankame,T Rhyker Ranallo-Benavidez,Christine Brown,Nicolas Robine,Floris P Barthel,Midhat S Farooqi,Karen H Miga,Andrew Carroll,Mikhail Kolmogorov,Benedict Paten,Kishwar Shafin
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引用次数: 0

Abstract

Somatic variant detection is an integral part of cancer genomics analysis. While most methods have focused on short-read sequencing, long-read technologies offer potential advantages in repeat mapping and variant phasing. We present DeepSomatic, a deep-learning method for detecting somatic small nucleotide variations and insertions and deletions from both short-read and long-read data. The method has modes for whole-genome and whole-exome sequencing and can run on tumor-normal, tumor-only and formalin-fixed paraffin-embedded samples. To train DeepSomatic and help address the dearth of publicly available training and benchmarking data for somatic variant detection, we generated and make openly available the Cancer Standards Long-read Evaluation (CASTLE) dataset of six matched tumor-normal cell line pairs whole-genome sequenced with Illumina, PacBio HiFi and Oxford Nanopore Technologies, along with benchmark variant sets. Across samples, both cell line and patient-derived, and across short-read and long-read sequencing technologies, DeepSomatic consistently outperforms existing callers.
利用DeepSomatic精确的体细胞小变异发现多种测序技术。
体细胞变异检测是癌症基因组学分析的重要组成部分。虽然大多数方法都集中在短读段测序,但长读段技术在重复定位和变异相位方面具有潜在的优势。我们提出了DeepSomatic,这是一种深度学习方法,用于从短读和长读数据中检测体细胞小核苷酸变异和插入和删除。该方法具有全基因组和全外显子组测序模式,可在肿瘤正常、肿瘤单一和福尔马林固定石蜡包埋样品上运行。为了训练DeepSomatic并帮助解决体细胞变异检测公开可用的培训和基准数据的缺乏,我们生成并公开提供了六个匹配的肿瘤-正常细胞系对全基因组测序的癌症标准长读评估(CASTLE)数据集,以及基准变异集。无论是细胞系还是患者来源的样本,无论是短读测序技术还是长读测序技术,DeepSomatic都始终优于现有的调用者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Nature biotechnology
Nature biotechnology 工程技术-生物工程与应用微生物
CiteScore
63.00
自引率
1.70%
发文量
382
审稿时长
3 months
期刊介绍: Nature Biotechnology is a monthly journal that focuses on the science and business of biotechnology. It covers a wide range of topics including technology/methodology advancements in the biological, biomedical, agricultural, and environmental sciences. The journal also explores the commercial, political, ethical, legal, and societal aspects of this research. The journal serves researchers by providing peer-reviewed research papers in the field of biotechnology. It also serves the business community by delivering news about research developments. This approach ensures that both the scientific and business communities are well-informed and able to stay up-to-date on the latest advancements and opportunities in the field. Some key areas of interest in which the journal actively seeks research papers include molecular engineering of nucleic acids and proteins, molecular therapy, large-scale biology, computational biology, regenerative medicine, imaging technology, analytical biotechnology, applied immunology, food and agricultural biotechnology, and environmental biotechnology. In summary, Nature Biotechnology is a comprehensive journal that covers both the scientific and business aspects of biotechnology. It strives to provide researchers with valuable research papers and news while also delivering important scientific advancements to the business community.
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