Objectives Optimizing antiretroviral drug combination on an individual basis can be challenging, particularly in settings with limited access to drugs and genotypic resistance testing. Here we describe our latest computational models to predict treatment responses, with or without a genotype, and compare their predictive accuracy with that of genotyping. Methods Random forest models were trained to predict the probability of virological response to a new therapy introduced following virological failure using up to 50 000 treatment change episodes (TCEs) without a genotype and 18 000 TCEs including genotypes. Independent data sets were used to evaluate the models. This study tested the effects on model accuracy of relaxing the baseline data...
BACKGROUND: Inferring response to antiretroviral therapy from the viral genotype alone is challengi...
Although genotypic resistance testing (GRT) is recommended to guide combination antiretroviral thera...
BACKGROUND: Although genotypic resistance testing (GRT) is recommended to guide combination antiretr...
Objectives: Optimizing antiretroviral drug combination on an individual basis can be challenging, pa...
Objectives Optimizing antiretroviral drug combination on an individual basis can be challenging, par...
Objectives: The optimal individualized selection of antiretroviral drugs in resource-limited setting...
Objectives: Optimizing antiretroviral drug combination on an individual basis in resource-limited se...
Objectives: Optimizing antiretroviral drug combination on an individual basis in resource-limited se...
Genotypic HIV drug-resistance testing is typically 6065 predictive of response to combination antire...
OBJECTIVES: We compared the use of computational models developed with and without HIV genotype vs. ...
Background: Selecting the optimal combination of HIV drugs for an individual in resourcelimited sett...
Although genotypic resistance testing (GRT) is recommended to guide combination antiretroviral thera...
BACKGROUND: Inferring response to antiretroviral therapy from the viral genotype alone is challengi...
Although genotypic resistance testing (GRT) is recommended to guide combination antiretroviral thera...
BACKGROUND: Although genotypic resistance testing (GRT) is recommended to guide combination antiretr...
Objectives: Optimizing antiretroviral drug combination on an individual basis can be challenging, pa...
Objectives Optimizing antiretroviral drug combination on an individual basis can be challenging, par...
Objectives: The optimal individualized selection of antiretroviral drugs in resource-limited setting...
Objectives: Optimizing antiretroviral drug combination on an individual basis in resource-limited se...
Objectives: Optimizing antiretroviral drug combination on an individual basis in resource-limited se...
Genotypic HIV drug-resistance testing is typically 6065 predictive of response to combination antire...
OBJECTIVES: We compared the use of computational models developed with and without HIV genotype vs. ...
Background: Selecting the optimal combination of HIV drugs for an individual in resourcelimited sett...
Although genotypic resistance testing (GRT) is recommended to guide combination antiretroviral thera...
BACKGROUND: Inferring response to antiretroviral therapy from the viral genotype alone is challengi...
Although genotypic resistance testing (GRT) is recommended to guide combination antiretroviral thera...
BACKGROUND: Although genotypic resistance testing (GRT) is recommended to guide combination antiretr...