TY - JOUR
T1 - Improved darunavir genotypic mutation score predicting treatment response for patients infected with HIV-1 subtype B and non-subtype B receiving a salvage regimen
AU - de Luca, Andrea
AU - Flandre, Philippe
AU - Dunn, David
AU - Zazzi, Maurizio
AU - Wensing, Annemarie
AU - Santoro, Maria Mercedes
AU - Günthard, Huldrych F.
AU - Wittkop, Linda
AU - Kordossis, Theodoros
AU - Garcia, Federico
AU - Castagna, Antonella
AU - Cozzi-Lepri, Alessandro
AU - Churchill, Duncan
AU - de Wit, Stéphane
AU - Brockmeyer, Norbert H.
AU - Imaz, Arkaitz
AU - Mussini, Cristina
AU - Obel, Niels
AU - Perno, Carlo Federico
AU - Roca, Bernardino
AU - Reiss, Peter
AU - Schülter, Eugen
AU - Torti, Carlo
AU - van Sighem, Ard
AU - Zangerle, Robert
AU - Descamps, Diane
AU - AUTHOR GROUP
AU - Ceccherini-Silberstein, Francesca
AU - Günthard, Huldrych
AU - Touloumi, Giota
AU - Warszawski, Josiane
AU - Meyer, Laurence
AU - Dabis, François
AU - Krause, Murielle Mary
AU - Ghosn, Jade
AU - Leport, Catherine
AU - Wit, Ferdinand
AU - Prins, Maria
AU - Bucher, Heiner
AU - Gibb, Diana
AU - Fätkenheuer, Gerd
AU - del Amo, Julia
AU - Thorne, Claire
AU - Mocroft, Amanda
AU - Kirk, Ole
AU - Stephan, Christoph
AU - Pérez-Hoyos, Santiago
AU - Hamouda, Osamah
AU - Bartmeyer, Barbara
AU - Chkhartishvili, Nikoloz
AU - van der Valk, Marc
PY - 2016
Y1 - 2016
N2 - The objective of this study was to improve the prediction of the impact of HIV-1 protease mutations in different viral subtypes on virological response to darunavir. Darunavir-containing treatment change episodes (TCEs) in patients previously failing PIs were selected from large European databases. HIV-1 subtype B-infected patients were used as the derivation dataset and HIV-1 non-B-infected patients were used as the validation dataset. The adjusted association of each mutation with week 8 HIV RNA change from baseline was analysed by linear regression. A prediction model was derived based on best subset least squares estimation with mutational weights corresponding to regression coefficients. Virological outcome prediction accuracy was compared with that from existing genotypic resistance interpretation systems (GISs) (ANRS 2013, Rega 9.1.0 and HIVdb 7.0). TCEs were selected from 681 subtype B-infected and 199 non-B-infected adults. Accompanying drugs were NRTIs in 87%, NNRTIs in 27% and raltegravir or maraviroc or enfuvirtide in 53%. The prediction model included weighted protease mutations, HIV RNA, CD4 and activity of accompanying drugs. The model's association with week 8 HIV RNA change in the subtype B (derivation) set was R(2) = 0.47 [average squared error (ASE) = 0.67, P < 10(-6)]; in the non-B (validation) set, ASE was 0.91. Accuracy investigated by means of area under the receiver operating characteristic curves with a binary response (above the threshold value of HIV RNA reduction) showed that our final model outperformed models with existing interpretation systems in both training and validation sets. A model with a new darunavir-weighted mutation score outperformed existing GISs in both B and non-B subtypes in predicting virological response to darunavir
AB - The objective of this study was to improve the prediction of the impact of HIV-1 protease mutations in different viral subtypes on virological response to darunavir. Darunavir-containing treatment change episodes (TCEs) in patients previously failing PIs were selected from large European databases. HIV-1 subtype B-infected patients were used as the derivation dataset and HIV-1 non-B-infected patients were used as the validation dataset. The adjusted association of each mutation with week 8 HIV RNA change from baseline was analysed by linear regression. A prediction model was derived based on best subset least squares estimation with mutational weights corresponding to regression coefficients. Virological outcome prediction accuracy was compared with that from existing genotypic resistance interpretation systems (GISs) (ANRS 2013, Rega 9.1.0 and HIVdb 7.0). TCEs were selected from 681 subtype B-infected and 199 non-B-infected adults. Accompanying drugs were NRTIs in 87%, NNRTIs in 27% and raltegravir or maraviroc or enfuvirtide in 53%. The prediction model included weighted protease mutations, HIV RNA, CD4 and activity of accompanying drugs. The model's association with week 8 HIV RNA change in the subtype B (derivation) set was R(2) = 0.47 [average squared error (ASE) = 0.67, P < 10(-6)]; in the non-B (validation) set, ASE was 0.91. Accuracy investigated by means of area under the receiver operating characteristic curves with a binary response (above the threshold value of HIV RNA reduction) showed that our final model outperformed models with existing interpretation systems in both training and validation sets. A model with a new darunavir-weighted mutation score outperformed existing GISs in both B and non-B subtypes in predicting virological response to darunavir
U2 - https://doi.org/10.1093/jac/dkv465
DO - https://doi.org/10.1093/jac/dkv465
M3 - Article
C2 - 26825119
SN - 0305-7453
VL - 71
SP - 1352
EP - 1360
JO - Journal of antimicrobial chemotherapy
JF - Journal of antimicrobial chemotherapy
IS - 5
ER -