This review describes the state-of-the-art in statistical, machine learning, and expert-advised computational methods for the evaluation and optimization of combination antiretroviral therapy, with respect to the virologic outcomes in HIV-1-infected patients. Currently employed methodologies are based on the paradigm for which mutations present in patient viral genotypes, selected either by treatment or already transmitted to the patient as resistant mutants, are the major drivers of virologic outcomes. Genotypic interpretation systems have been designed with the prime objective of characterizing the resistance to individual drugs, deriving scores from the association of viral genotypes with in vitro phenotypic drug susceptibility or in viv...
BACKGROUND: Inferring response to antiretroviral therapy from the viral genotype alone is challengi...
Analysis of the viral genome for drug resistance mutations is state-of-the-art for guiding treatment...
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...
Background: The outcome of antiretroviral combination therapy depends on many factors involving host...
OBJECTIVES: The development of a genotypic drug resistance interpretation algorithm, and the evaluat...
Objectives: The optimal individualized selection of antiretroviral drugs in resource-limited setting...
Development of antiretroviral drug resistance is a major cause for treatment failure in HIV-infected...
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...
Genotypic HIV drug-resistance testing is typically 6065 predictive of response to combination antire...
BACKGROUND: The extreme flexibility of the HIV type-1 (HIV-1) genome makes it challenging to build t...
BACKGROUND: The extreme flexibility of the HIV type-1 (HIV-1) genome makes it challenging to build ...
Background: Selecting the optimal combination of HIV drugs for an individual in resourcelimited sett...
BACKGROUND: Inferring response to antiretroviral therapy from the viral genotype alone is challengi...
Analysis of the viral genome for drug resistance mutations is state-of-the-art for guiding treatment...
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...
Background: The outcome of antiretroviral combination therapy depends on many factors involving host...
OBJECTIVES: The development of a genotypic drug resistance interpretation algorithm, and the evaluat...
Objectives: The optimal individualized selection of antiretroviral drugs in resource-limited setting...
Development of antiretroviral drug resistance is a major cause for treatment failure in HIV-infected...
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...
Genotypic HIV drug-resistance testing is typically 6065 predictive of response to combination antire...
BACKGROUND: The extreme flexibility of the HIV type-1 (HIV-1) genome makes it challenging to build t...
BACKGROUND: The extreme flexibility of the HIV type-1 (HIV-1) genome makes it challenging to build ...
Background: Selecting the optimal combination of HIV drugs for an individual in resourcelimited sett...
BACKGROUND: Inferring response to antiretroviral therapy from the viral genotype alone is challengi...
Analysis of the viral genome for drug resistance mutations is state-of-the-art for guiding treatment...
For a long time, the clinical management of antiretroviral drug resistance was based on sequence ana...