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Evaluation of different analysis pipelines for the detection of HIV-1 minority resistant variants
OBJECTIVE: Reliable detection of HIV minority resistant variants (MRVs) requires bioinformatics analysis with specific algorithms to obtain good quality alignments. The aim of this study was to analyze ultra-deep sequencing (UDS) data using different analysis pipelines. METHODS: HIV-1 protease, reve...
Autores principales: | , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Public Library of Science
2018
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5983569/ https://www.ncbi.nlm.nih.gov/pubmed/29856864 http://dx.doi.org/10.1371/journal.pone.0198334 |
Sumario: | OBJECTIVE: Reliable detection of HIV minority resistant variants (MRVs) requires bioinformatics analysis with specific algorithms to obtain good quality alignments. The aim of this study was to analyze ultra-deep sequencing (UDS) data using different analysis pipelines. METHODS: HIV-1 protease, reverse transcriptase (RT) and integrase sequences from antiretroviral-naïve patients were obtained using GS-Junior(®) (Roche) and MiSeq(®) (Illumina) platforms. MRVs were defined as variants harbouring resistance-mutation present at a frequency of 1%–20%. Reads were analyzed using different alignment algorithms: Amplicon Variant Analyzer(®), Geneious(®) compared to SmartGene(®) NGS HIV-1 module. RESULTS: 101 protease and 51 RT MRVs identified in 139 protease and 124 RT sequences generated with a GS-Junior(®) platform were analyzed using AVA(®) and SmartGene(®) software. The correlation coefficients for the MRVs were R(2) = 0.974 for protease and R(2) = 0.972 for RT. Discordances (n = 13 in protease and n = 15 in RT) mainly concerned low-level MRVs (i.e., with frequencies of 1%–2%, n = 18/28) and they were located in homopolymeric regions (n = 10/15). Geneious(®) and SmartGene(®) software were used to analyze 143 protease, 45 RT and 26 integrase MRVs identified in 172 protease, 69 RT, and 72 integrase sequences generated with a MiSeq(®) platform. The correlation coefficients for the MRVs were R(2) = 0.987 for protease, R(2) = 0.995 for RT and R(2) = 0.993 for integrase. Discordances (n = 9 in protease, n = 3 in RT, and n = 3 in integrase) mainly concerned low-level MRVs (n = 13/15). CONCLUSION: We found an excellent correlation between the various UDS analysis pipelines that we tested. However, our results indicate that specific attention should be paid to low-level MRVs, for which the use of two different analysis pipelines and visual inspection of sequences alignments might be beneficial. Thus, our results argue for use of a 2% threshold for MRV detection, rather than the 1% threshold, to minimize misalignments and time-consuming sight reading steps essential to ensure accurate results for MRV frequencies below 2%. |
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