Cargando…

Quantifying the fitness cost of HIV-1 drug resistance mutations through phylodynamics

Drug resistant HIV is a major threat to the long-term efficacy of antiretroviral treatment. Around 10% of ART-naïve patients in Europe are infected with drug-resistant HIV type 1. Hence it is important to understand the dynamics of transmitted drug resistance evolution. Thanks to routinely performed...

Descripción completa

Detalles Bibliográficos
Autores principales: Kühnert, Denise, Kouyos, Roger, Shirreff, George, Pečerska, Jūlija, Scherrer, Alexandra U., Böni, Jürg, Yerly, Sabine, Klimkait, Thomas, Aubert, Vincent, Günthard, Huldrych F., Stadler, Tanja, Bonhoeffer, Sebastian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5877888/
https://www.ncbi.nlm.nih.gov/pubmed/29462208
http://dx.doi.org/10.1371/journal.ppat.1006895
_version_ 1783310783976833024
author Kühnert, Denise
Kouyos, Roger
Shirreff, George
Pečerska, Jūlija
Scherrer, Alexandra U.
Böni, Jürg
Yerly, Sabine
Klimkait, Thomas
Aubert, Vincent
Günthard, Huldrych F.
Stadler, Tanja
Bonhoeffer, Sebastian
author_facet Kühnert, Denise
Kouyos, Roger
Shirreff, George
Pečerska, Jūlija
Scherrer, Alexandra U.
Böni, Jürg
Yerly, Sabine
Klimkait, Thomas
Aubert, Vincent
Günthard, Huldrych F.
Stadler, Tanja
Bonhoeffer, Sebastian
author_sort Kühnert, Denise
collection PubMed
description Drug resistant HIV is a major threat to the long-term efficacy of antiretroviral treatment. Around 10% of ART-naïve patients in Europe are infected with drug-resistant HIV type 1. Hence it is important to understand the dynamics of transmitted drug resistance evolution. Thanks to routinely performed drug resistance tests, HIV sequence data is increasingly available and can be used to reconstruct the phylogenetic relationship among viral lineages. In this study we employ a phylodynamic approach to quantify the fitness costs of major resistance mutations in the Swiss HIV cohort. The viral phylogeny reflects the transmission tree, which we model using stochastic birth–death-sampling processes with two types: hosts infected by a sensitive or resistant strain. This allows quantification of fitness cost as the ratio between transmission rates of hosts infected by drug resistant strains and transmission rates of hosts infected by drug sensitive strains. The resistance mutations 41L, 67N, 70R, 184V, 210W, 215D, 215S and 219Q (nRTI-related) and 103N, 108I, 138A, 181C, 190A (NNRTI-related) in the reverse trancriptase and the 90M mutation in the protease gene are included in this study. Among the considered resistance mutations, only the 90M mutation in the protease gene was found to have significantly higher fitness than the drug sensitive strains. The following mutations associated with resistance to reverse transcriptase inhibitors were found to be less fit than the sensitive strains: 67N, 70R, 184V, 219Q. The highest posterior density intervals of the transmission ratios for the remaining resistance mutations included in this study all included 1, suggesting that these mutations do not have a significant effect on viral transmissibility within the Swiss HIV cohort. These patterns are consistent with alternative measures of the fitness cost of resistance mutations. Overall, we have developed and validated a novel phylodynamic approach to estimate the transmission fitness cost of drug resistance mutations.
format Online
Article
Text
id pubmed-5877888
institution National Center for Biotechnology Information
language English
publishDate 2018
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-58778882018-04-12 Quantifying the fitness cost of HIV-1 drug resistance mutations through phylodynamics Kühnert, Denise Kouyos, Roger Shirreff, George Pečerska, Jūlija Scherrer, Alexandra U. Böni, Jürg Yerly, Sabine Klimkait, Thomas Aubert, Vincent Günthard, Huldrych F. Stadler, Tanja Bonhoeffer, Sebastian PLoS Pathog Research Article Drug resistant HIV is a major threat to the long-term efficacy of antiretroviral treatment. Around 10% of ART-naïve patients in Europe are infected with drug-resistant HIV type 1. Hence it is important to understand the dynamics of transmitted drug resistance evolution. Thanks to routinely performed drug resistance tests, HIV sequence data is increasingly available and can be used to reconstruct the phylogenetic relationship among viral lineages. In this study we employ a phylodynamic approach to quantify the fitness costs of major resistance mutations in the Swiss HIV cohort. The viral phylogeny reflects the transmission tree, which we model using stochastic birth–death-sampling processes with two types: hosts infected by a sensitive or resistant strain. This allows quantification of fitness cost as the ratio between transmission rates of hosts infected by drug resistant strains and transmission rates of hosts infected by drug sensitive strains. The resistance mutations 41L, 67N, 70R, 184V, 210W, 215D, 215S and 219Q (nRTI-related) and 103N, 108I, 138A, 181C, 190A (NNRTI-related) in the reverse trancriptase and the 90M mutation in the protease gene are included in this study. Among the considered resistance mutations, only the 90M mutation in the protease gene was found to have significantly higher fitness than the drug sensitive strains. The following mutations associated with resistance to reverse transcriptase inhibitors were found to be less fit than the sensitive strains: 67N, 70R, 184V, 219Q. The highest posterior density intervals of the transmission ratios for the remaining resistance mutations included in this study all included 1, suggesting that these mutations do not have a significant effect on viral transmissibility within the Swiss HIV cohort. These patterns are consistent with alternative measures of the fitness cost of resistance mutations. Overall, we have developed and validated a novel phylodynamic approach to estimate the transmission fitness cost of drug resistance mutations. Public Library of Science 2018-02-20 /pmc/articles/PMC5877888/ /pubmed/29462208 http://dx.doi.org/10.1371/journal.ppat.1006895 Text en © 2018 Kühnert 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
Kühnert, Denise
Kouyos, Roger
Shirreff, George
Pečerska, Jūlija
Scherrer, Alexandra U.
Böni, Jürg
Yerly, Sabine
Klimkait, Thomas
Aubert, Vincent
Günthard, Huldrych F.
Stadler, Tanja
Bonhoeffer, Sebastian
Quantifying the fitness cost of HIV-1 drug resistance mutations through phylodynamics
title Quantifying the fitness cost of HIV-1 drug resistance mutations through phylodynamics
title_full Quantifying the fitness cost of HIV-1 drug resistance mutations through phylodynamics
title_fullStr Quantifying the fitness cost of HIV-1 drug resistance mutations through phylodynamics
title_full_unstemmed Quantifying the fitness cost of HIV-1 drug resistance mutations through phylodynamics
title_short Quantifying the fitness cost of HIV-1 drug resistance mutations through phylodynamics
title_sort quantifying the fitness cost of hiv-1 drug resistance mutations through phylodynamics
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5877888/
https://www.ncbi.nlm.nih.gov/pubmed/29462208
http://dx.doi.org/10.1371/journal.ppat.1006895
work_keys_str_mv AT kuhnertdenise quantifyingthefitnesscostofhiv1drugresistancemutationsthroughphylodynamics
AT kouyosroger quantifyingthefitnesscostofhiv1drugresistancemutationsthroughphylodynamics
AT shirreffgeorge quantifyingthefitnesscostofhiv1drugresistancemutationsthroughphylodynamics
AT pecerskajulija quantifyingthefitnesscostofhiv1drugresistancemutationsthroughphylodynamics
AT scherreralexandrau quantifyingthefitnesscostofhiv1drugresistancemutationsthroughphylodynamics
AT bonijurg quantifyingthefitnesscostofhiv1drugresistancemutationsthroughphylodynamics
AT yerlysabine quantifyingthefitnesscostofhiv1drugresistancemutationsthroughphylodynamics
AT klimkaitthomas quantifyingthefitnesscostofhiv1drugresistancemutationsthroughphylodynamics
AT aubertvincent quantifyingthefitnesscostofhiv1drugresistancemutationsthroughphylodynamics
AT gunthardhuldrychf quantifyingthefitnesscostofhiv1drugresistancemutationsthroughphylodynamics
AT stadlertanja quantifyingthefitnesscostofhiv1drugresistancemutationsthroughphylodynamics
AT bonhoeffersebastian quantifyingthefitnesscostofhiv1drugresistancemutationsthroughphylodynamics
AT quantifyingthefitnesscostofhiv1drugresistancemutationsthroughphylodynamics