| Description | Estimation of an in vivo fitness landscape experienced by HIV-1 under drug selective pressure useful for prediction of drug resistance evolution during treatment. Deforche K, Camacho R, Van Laethem K, Lemey P, Rambaut A, Moreau Y,
Vandamme AM. 2008 ;24(1):34-41.
Abstract: HIV-1 antiviral resistance is a major cause of antiviral treatment
failure. The in vivo fitness landscape experienced by the virus in
presence of treatment could in principle be used to determine both the
susceptibility of the virus to the treatment and the genetic barrier
to resistance. We propose a method to estimate this fitness landscape
from cross-sectional clinical genetic sequence data of different
subtypes, by reverse engineering the required selective pressure for
HIV-1 sequences obtained from treatment naive patients, to evolve
towards sequences obtained from treated patients. The method was
evaluated for recovering 10 random fictive selective pressures in
simulation experiments, and for modeling the selective pressure under
treatment with the protease inhibitor nelfinavir. RESULTS: The
estimated fitness function under nelfinavir treatment considered
fitness contributions of 114 mutations at 48 sites. Estimated fitness
correlated significantly with the in vitro resistance phenotype in 519
matched genotype-phenotype pairs (R(2) = 0.47 (0.41 - 0.54)) and
variation in predicted evolution under nelfinavir selective pressure
correlated significantly with observed in vivo evolution during
nelfinavir treatment for 39 mutations (with FDR = 0.05). AVAILABILITY:
The software is available on request from the authors, and data sets
are available from Nelfinavir fitness landscape: data sets and results page |