通过深度测序改进宿主内低频变异的检测:人类乳头瘤病毒案例研究

IF 5.5 2区 医学 Q1 VIROLOGY Virus Evolution Pub Date : 2024-02-12 DOI:10.1093/ve/veae013
Sambit K Mishra, Chase W Nelson, Bin Zhu, Maisa Pinheiro, Hyo Jung Lee, Michael Dean, Laurie Burdett, Meredith Yeager, Lisa Mirabello
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引用次数: 0

摘要

高覆盖率测序可以研究样本中出现频率较低的变异,但容易因测序错误造成假阳性。Ion Torrent 的单核苷酸变异(SNV)错误率非常低,已被用于大多数人类乳头瘤病毒(HPV)全基因组测序。然而,对宿主内 SNV(iSNV)进行基准测试一直是个挑战,部分原因是 HPV 生命周期造成的限制。我们通过对 31 个 HPV 18 型(HPV18)样本中每个样本的三个重复序列进行深度测序来解决这个问题。错误(定义为仅在三个重复序列中的一个中观察到的 iSNV)主要是 C→T (G→A) 变化,与三核苷酸上下文无关。真正的 iSNVs 是指在所有三个重复序列中都观察到的 iSNVs,它们的 SNV 类型分布更为多样,CCG 上下文(CCG→CTG;CGG→CAG)中的 C→T 率和 ACG 上下文(ACG→AAG;CGT→CTT)中的 C→A 率特别高。通过对真正 iSNV 的特征描述,我们开发出了两种检测真正变异的方法:(1) VCFgenie,这是一种动态二项式过滤工具,它使用每个变异的等位基因数和覆盖率而不是固定的频率截断值;(2) 机器学习二元分类器,它根据变异特征(如质量和三核苷酸上下文)训练梯度提升模型。每种方法的性能都优于 iSNV 的固定频率截断过滤法,当两种方法同时使用时,性能会得到提高。我们的研究结果为在跨测序平台的宿主内应用中识别真正的 iSNV 提供了更好的方法,特别是以 HPV18 为案例进行了研究。
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Improved detection of low-frequency within-host variants from deep sequencing: A case study with human papillomavirus
High-coverage sequencing allows the study of variants occurring at low frequencies within samples, but is susceptible to false-positives caused by sequencing error. Ion Torrent has a very low single nucleotide variant (SNV) error rate and has been employed for the majority of human papillomavirus (HPV) whole genome sequences. However, benchmarking of intrahost SNVs (iSNVs) has been challenging, partly due to limitations imposed by the HPV life cycle. We address this problem by deep sequencing three replicates for each of 31 samples of HPV type 18 (HPV18). Errors, defined as iSNVs observed in only one of three replicates, are dominated by C→T (G→A) changes, independently of trinucleotide context. True iSNVs, defined as those observed in all three replicates, instead show a more diverse SNV type distribution, with particularly elevated C→T rates in CCG context (CCG→CTG; CGG→CAG) and C→A rates in ACG context (ACG→AAG; CGT→CTT). Characterization of true iSNVs allowed us to develop two methods for detecting true variants: (1) VCFgenie, a dynamic binomial filtering tool which uses each variant’s allele count and coverage instead of fixed frequency cut-offs; and (2) a machine learning binary classifier which trains eXtreme Gradient Boosting models on variant features such as quality and trinucleotide context. Each approach outperforms fixed-cut-off filtering of iSNVs, and performance is enhanced when both are used together. Our results provide improved methods for identifying true iSNVs in within-host applications across sequencing platforms, specifically using HPV18 as a case study.
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来源期刊
Virus Evolution
Virus Evolution Immunology and Microbiology-Microbiology
CiteScore
10.50
自引率
5.70%
发文量
108
审稿时长
14 weeks
期刊介绍: Virus Evolution is a new Open Access journal focusing on the long-term evolution of viruses, viruses as a model system for studying evolutionary processes, viral molecular epidemiology and environmental virology. The aim of the journal is to provide a forum for original research papers, reviews, commentaries and a venue for in-depth discussion on the topics relevant to virus evolution.
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