BACKGROUND: The extreme flexibility of the HIV type-1 (HIV-1) genome makes it challenging to build the ideal antiretroviral treatment regimen. Interpretation of HIV-1 genotypic drug resistance is evolving from rule-based systems guided by expert opinion to data-driven engines developed through machine learning methods. METHODS: The aim of the study was to investigate linear and non-linear statistical learning models for classifying short-term virological outcome of antiretroviral treatment. To optimize the model, different feature selection methods were considered. Robust extra-sample error estimation and different loss functions were used to assess model performance. The results were compared with widely used rule-based genotypic interp...
Genotypic HIV drug-resistance testing is typically 6065 predictive of response to combination antire...
BACKGROUND: Expert-based genotypic interpretation systems are standard methods for guiding treatmen...
The question of whether a score for a specific antiretroviral (e.g. lopinavir/r in this analysis) th...
BACKGROUND: The extreme flexibility of the HIV type-1 (HIV-1) genome makes it challenging to build ...
Background: The extreme flexibility of the HIV type-1 (HIV-1) genome makes it challenging to build t...
BACKGROUND: Inferring response to antiretroviral therapy from the viral genotype alone is challengi...
For a long time, the clinical management of antiretroviral drug resistance was based on sequence ana...
For a long time, the clinical management of antiretroviral drug resistance was based on sequence ana...
This review describes the state-of-the-art in statistical, machine learning, and expert-advised comp...
OBJECTIVES: The development of a genotypic drug resistance interpretation algorithm, and the evaluat...
For a long time, the clinical management of antiretroviral drug resistance was based on sequence ana...
Introduction: When used in combination, antiretroviral drugs are highly effective for suppressing HI...
Introduction: When used in combination, antiretroviral drugs are highly effective for suppressing HI...
INTRODUCTION: When used in combination, antiretroviral drugs are highly effective for suppressing H...
Genotypic HIV drug-resistance testing is typically 6065 predictive of response to combination antire...
BACKGROUND: Expert-based genotypic interpretation systems are standard methods for guiding treatmen...
The question of whether a score for a specific antiretroviral (e.g. lopinavir/r in this analysis) th...
BACKGROUND: The extreme flexibility of the HIV type-1 (HIV-1) genome makes it challenging to build ...
Background: The extreme flexibility of the HIV type-1 (HIV-1) genome makes it challenging to build t...
BACKGROUND: Inferring response to antiretroviral therapy from the viral genotype alone is challengi...
For a long time, the clinical management of antiretroviral drug resistance was based on sequence ana...
For a long time, the clinical management of antiretroviral drug resistance was based on sequence ana...
This review describes the state-of-the-art in statistical, machine learning, and expert-advised comp...
OBJECTIVES: The development of a genotypic drug resistance interpretation algorithm, and the evaluat...
For a long time, the clinical management of antiretroviral drug resistance was based on sequence ana...
Introduction: When used in combination, antiretroviral drugs are highly effective for suppressing HI...
Introduction: When used in combination, antiretroviral drugs are highly effective for suppressing HI...
INTRODUCTION: When used in combination, antiretroviral drugs are highly effective for suppressing H...
Genotypic HIV drug-resistance testing is typically 6065 predictive of response to combination antire...
BACKGROUND: Expert-based genotypic interpretation systems are standard methods for guiding treatmen...
The question of whether a score for a specific antiretroviral (e.g. lopinavir/r in this analysis) th...