Please use this identifier to cite or link to this item: http://hdl.handle.net/10668/11923
Title: Hepatitis C virus deep sequencing for sub-genotype identification in mixed infections: A real-life experience.
Authors: Del Campo, José A
Parra-Sánchez, Manuel
Figueruela, Blanca
García-Rey, Silvia
Quer, Josep
Gregori, Josep
Bernal, Samuel
Grande, Lourdes
Palomares, José C
Romero-Gómez, Manuel
Keywords: Deep sequencing;Direct-acting antivirals;HCV;Mixed infection;NGS
metadata.dc.subject.mesh: Adult
Coinfection
Female
Genotype
Hepacivirus
Hepatitis C
High-Throughput Nucleotide Sequencing
Humans
Male
Middle Aged
Sequence Analysis, DNA
Viral Load
Viral Nonstructural Proteins
Issue Date: 15-Dec-2017
Abstract: The effectiveness of the new generation of hepatitis C treatments named direct-acting antiviral agents (DAAs) depends on the genotype, subtype, and resistance-associated substitutions present in individual patients. The aim of this study was to evaluate a massive sequencing platform for the analysis of genotypes and subtypes of hepatitis C virus (HCV) in order to optimize therapy. A total of 84 patients with hepatitis C were analyzed. The routine genotyping methodology for HCV used at the study institution (Versant HCV Assay, LiPA) was compared with a deep sequencing platform (454/GS-Junior and Illumina MiSeq). The mean viral load in these HCV patients was 6.89×106±7.02×105. Viral genotypes analyzed by LiPA were distributed as follows: 26% genotype 1a (22/84), 55% genotype 1b (46/84), 1% genotype 1 (1/84), 2.5% genotype 3 (2/84), 6% genotype 3a (5/84), 6% genotype 4a/c/d (5/84). When analyzed by deep sequencing, the samples were distributed as follows: 27% genotype 1a (23/84), 56% genotype 1b (47/84), 8% genotype 3a (7/84), 5% genotype 4d (4/84), 2.5% genotype 4f (2/84). Six of the 84 patients (7%) were infected with more than one subtype. Among these, 33% (2/6) failed DAA-based triple therapy. The detection of mixed infection could explain some treatment failures. Accurate determination of viral genotypes and subtypes would allow optimal patient management and improve the effectiveness of DAA therapy.
URI: http://hdl.handle.net/10668/11923
metadata.dc.identifier.doi: 10.1016/j.ijid.2017.12.016
Appears in Collections:Producción 2020

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