Objectives: The optimal individualized selection of antiretroviral drugs in resource-limited settings is challenging because of the limited availability of drugs and genotyping. Here we describe the development of the latest computational models to predict the response to combination antiretroviral therapy without a genotype, for potential use in such settings. Methods: Random forest models were trained to predict the probability of a virological response to therapy (<50 copies HIV RNA/mL) following virological failure using the following data from 22 567 treatment-change episodes including 1090 from southern Africa: baseline viral load and CD4 cell count, treatment history, drugs in the new regimen, time to follow-up and follow-up viral...
OBJECTIVES: We compared the use of computational models developed with and without HIV genotype vs. ...
BACKGROUND: Inferring response to antiretroviral therapy from the viral genotype alone is challengi...
This review describes the state-of-the-art in statistical, machine learning, and expert-advised comp...
Objectives: The optimal individualized selection of antiretroviral drugs in resource-limited setting...
Objectives: Optimizing antiretroviral drug combination on an individual basis can be challenging, pa...
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...
Objectives Optimizing antiretroviral drug combination on an individual basis can be challenging, par...
Genotypic HIV drug-resistance testing is typically 6065 predictive of response to combination antire...
Background: Selecting the optimal combination of HIV drugs for an individual in resourcelimited sett...
OBJECTIVES: We compared the use of computational models developed with and without HIV genotype vs. ...
BACKGROUND: Inferring response to antiretroviral therapy from the viral genotype alone is challengi...
This review describes the state-of-the-art in statistical, machine learning, and expert-advised comp...
Objectives: The optimal individualized selection of antiretroviral drugs in resource-limited setting...
Objectives: Optimizing antiretroviral drug combination on an individual basis can be challenging, pa...
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...
Objectives Optimizing antiretroviral drug combination on an individual basis can be challenging, par...
Genotypic HIV drug-resistance testing is typically 6065 predictive of response to combination antire...
Background: Selecting the optimal combination of HIV drugs for an individual in resourcelimited sett...
OBJECTIVES: We compared the use of computational models developed with and without HIV genotype vs. ...
BACKGROUND: Inferring response to antiretroviral therapy from the viral genotype alone is challengi...
This review describes the state-of-the-art in statistical, machine learning, and expert-advised comp...