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Prediction of coreceptor usage by five bioinformatics tools in a large Ethiopian HIV-1 subtype C cohort

BACKGROUND: Genotypic tropism testing (GTT) has been developed largely on HIV-1 subtype B. Although a few reports have analysed the utility of GTT in other subtypes, more studies using HIV-1 subtype C (HIV-1C) are needed, considering the huge contribution of HIV-1C to the global epidemic. METHODS: P...

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Autores principales: Kalu, Amare Worku, Telele, Nigus Fikrie, Gebreselasie, Solomon, Fekade, Daniel, Abdurahman, Samir, Marrone, Gaetano, Sönnerborg, Anders
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5571954/
https://www.ncbi.nlm.nih.gov/pubmed/28841646
http://dx.doi.org/10.1371/journal.pone.0182384
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author Kalu, Amare Worku
Telele, Nigus Fikrie
Gebreselasie, Solomon
Fekade, Daniel
Abdurahman, Samir
Marrone, Gaetano
Sönnerborg, Anders
author_facet Kalu, Amare Worku
Telele, Nigus Fikrie
Gebreselasie, Solomon
Fekade, Daniel
Abdurahman, Samir
Marrone, Gaetano
Sönnerborg, Anders
author_sort Kalu, Amare Worku
collection PubMed
description BACKGROUND: Genotypic tropism testing (GTT) has been developed largely on HIV-1 subtype B. Although a few reports have analysed the utility of GTT in other subtypes, more studies using HIV-1 subtype C (HIV-1C) are needed, considering the huge contribution of HIV-1C to the global epidemic. METHODS: Plasma was obtained from 420 treatment-naïve HIV-1C infected Ethiopians recruited 2009–2011. The V3 region was sequenced and the coreceptor usage was predicted by five tools: Geno2Pheno clinical–and clonal–models, PhenoSeq-C, C-PSSM and Raymond’s algorithm. The impact of baseline tropism on antiretroviral treatment (ART) outcome was evaluated. RESULTS: Of 352 patients with successful baseline V3 sequences, the proportion of predicted R5 virus varied between the methods by 12.5% (78.1%-90.6%). However, only 58.2% of the predictions were concordant and only 1.7% were predicted to be X4-tropic across the five methods. Compared pairwise, the highest concordance was between C-PSSM and Geno2Pheno clonal (86.4%). In bivariate intention to treat (ITT) analysis, R5 infected patients achieved treatment success more frequently than X4 infected at month six as predicted by Geno2Pheno clinical (77.8% vs 58.7%, P = 0.004) and at month 12 by C-PSSM (61.9% vs 46.6%, P = 0.038). However, in the multivariable analysis adjusted for age, gender, baseline CD4 and viral load, only tropism as predicted by C-PSSM showed an impact on month 12 (P = 0.04, OR 2.47, 95% CI 1.06–5.79). CONCLUSION: Each of the bioinformatics models predicted R5 tropism with comparable frequency but there was a large discordance between the methods. Baseline tropism had an impact on outcome of first line ART at month 12 in multivariable ITT analysis but only based on prediction by C-PSSM which thus possibly could be used for predicting outcome of ART in HIV-1C infected Ethiopians.
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spelling pubmed-55719542017-09-09 Prediction of coreceptor usage by five bioinformatics tools in a large Ethiopian HIV-1 subtype C cohort Kalu, Amare Worku Telele, Nigus Fikrie Gebreselasie, Solomon Fekade, Daniel Abdurahman, Samir Marrone, Gaetano Sönnerborg, Anders PLoS One Research Article BACKGROUND: Genotypic tropism testing (GTT) has been developed largely on HIV-1 subtype B. Although a few reports have analysed the utility of GTT in other subtypes, more studies using HIV-1 subtype C (HIV-1C) are needed, considering the huge contribution of HIV-1C to the global epidemic. METHODS: Plasma was obtained from 420 treatment-naïve HIV-1C infected Ethiopians recruited 2009–2011. The V3 region was sequenced and the coreceptor usage was predicted by five tools: Geno2Pheno clinical–and clonal–models, PhenoSeq-C, C-PSSM and Raymond’s algorithm. The impact of baseline tropism on antiretroviral treatment (ART) outcome was evaluated. RESULTS: Of 352 patients with successful baseline V3 sequences, the proportion of predicted R5 virus varied between the methods by 12.5% (78.1%-90.6%). However, only 58.2% of the predictions were concordant and only 1.7% were predicted to be X4-tropic across the five methods. Compared pairwise, the highest concordance was between C-PSSM and Geno2Pheno clonal (86.4%). In bivariate intention to treat (ITT) analysis, R5 infected patients achieved treatment success more frequently than X4 infected at month six as predicted by Geno2Pheno clinical (77.8% vs 58.7%, P = 0.004) and at month 12 by C-PSSM (61.9% vs 46.6%, P = 0.038). However, in the multivariable analysis adjusted for age, gender, baseline CD4 and viral load, only tropism as predicted by C-PSSM showed an impact on month 12 (P = 0.04, OR 2.47, 95% CI 1.06–5.79). CONCLUSION: Each of the bioinformatics models predicted R5 tropism with comparable frequency but there was a large discordance between the methods. Baseline tropism had an impact on outcome of first line ART at month 12 in multivariable ITT analysis but only based on prediction by C-PSSM which thus possibly could be used for predicting outcome of ART in HIV-1C infected Ethiopians. Public Library of Science 2017-08-25 /pmc/articles/PMC5571954/ /pubmed/28841646 http://dx.doi.org/10.1371/journal.pone.0182384 Text en © 2017 Kalu et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Kalu, Amare Worku
Telele, Nigus Fikrie
Gebreselasie, Solomon
Fekade, Daniel
Abdurahman, Samir
Marrone, Gaetano
Sönnerborg, Anders
Prediction of coreceptor usage by five bioinformatics tools in a large Ethiopian HIV-1 subtype C cohort
title Prediction of coreceptor usage by five bioinformatics tools in a large Ethiopian HIV-1 subtype C cohort
title_full Prediction of coreceptor usage by five bioinformatics tools in a large Ethiopian HIV-1 subtype C cohort
title_fullStr Prediction of coreceptor usage by five bioinformatics tools in a large Ethiopian HIV-1 subtype C cohort
title_full_unstemmed Prediction of coreceptor usage by five bioinformatics tools in a large Ethiopian HIV-1 subtype C cohort
title_short Prediction of coreceptor usage by five bioinformatics tools in a large Ethiopian HIV-1 subtype C cohort
title_sort prediction of coreceptor usage by five bioinformatics tools in a large ethiopian hiv-1 subtype c cohort
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5571954/
https://www.ncbi.nlm.nih.gov/pubmed/28841646
http://dx.doi.org/10.1371/journal.pone.0182384
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