基因分型
计算机科学
纳米孔测序
集合(抽象数据类型)
顺序装配
基因组
人类基因组
质量得分
算法
计算生物学
数据挖掘
遗传学
生物
公制(单位)
基因
工程类
基因型
基因表达
运营管理
转录组
程序设计语言
作者
Giulio Formenti,Arang Rhie,Brian P. Walenz,Françoise Thibaud‐Nissen,Kishwar Shafin,Sergey Koren,Eugene W. Myers,Erich D. Jarvis,Adam M. Phillippy
出处
期刊:Nature Methods
[Nature Portfolio]
日期:2022-03-31
卷期号:19 (6): 696-704
被引量:44
标识
DOI:10.1038/s41592-022-01445-y
摘要
Variant calling has been widely used for genotyping and for improving the consensus accuracy of long-read assemblies. Variant calls are commonly hard-filtered with user-defined cutoffs. However, it is impossible to define a single set of optimal cutoffs, as the calls heavily depend on the quality of the reads, the variant caller of choice and the quality of the unpolished assembly. Here, we introduce Merfin, a k-mer based variant-filtering algorithm for improved accuracy in genotyping and genome assembly polishing. Merfin evaluates each variant based on the expected k-mer multiplicity in the reads, independently of the quality of the read alignment and variant caller's internal score. Merfin increased the precision of genotyped calls in several benchmarks, improved consensus accuracy and reduced frameshift errors when applied to human and nonhuman assemblies built from Pacific Biosciences HiFi and continuous long reads or Oxford Nanopore reads, including the first complete human genome. Moreover, we introduce assembly quality and completeness metrics that account for the expected genomic copy numbers.
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