| Literature DB >> 28039047 |
Fabio Zanini1, Johanna Brodin2, Jan Albert3, Richard A Neher1.
Abstract
Deep sequencing is a powerful and cost-effective tool to characterize the genetic diversity and evolution of virus populations. While modern sequencing instruments readily cover viral genomes many thousand fold and very rare variants can in principle be detected, sequencing errors, amplification biases, and other artifacts can limit sensitivity and complicate data interpretation. For this reason, the number of studies using whole genome deep sequencing to characterize viral quasi-species in clinical samples is still limited. We have previously undertaken a large scale whole genome deep sequencing study of HIV-1 populations. Here we discuss the challenges, error profiles, control experiments, and computational test we developed to quantify the accuracy of variant frequency estimation.Entities:
Keywords: Amplification bias; Indel errors; Population sequencing
Mesh:
Year: 2016 PMID: 28039047 DOI: 10.1016/j.virusres.2016.12.009
Source DB: PubMed Journal: Virus Res ISSN: 0168-1702 Impact factor: 6.286