» Articles » PMID: 28394945

Using Drug Exposure for Predicting Drug Resistance - A Data-driven Genotypic Interpretation Tool

Overview
Journal PLoS One
Date 2017 Apr 11
PMID 28394945
Citations 5
Authors
Affiliations
Soon will be listed here.
Abstract

Antiretroviral treatment history and past HIV-1 genotypes have been shown to be useful predictors for the success of antiretroviral therapy. However, this information may be unavailable or inaccurate, particularly for patients with multiple treatment lines often attending different clinics. We trained statistical models for predicting drug exposure from current HIV-1 genotype. These models were trained on 63,742 HIV-1 nucleotide sequences derived from patients with known therapeutic history, and on 6,836 genotype-phenotype pairs (GPPs). The mean performance regarding prediction of drug exposure on two test sets was 0.78 and 0.76 (ROC-AUC), respectively. The mean correlation to phenotypic resistance in GPPs was 0.51 (PhenoSense) and 0.46 (Antivirogram). Performance on prediction of therapy-success on two test sets based on genetic susceptibility scores was 0.71 and 0.63 (ROC-AUC), respectively. Compared to geno2pheno[resistance], our novel models display a similar or superior performance. Our models are freely available on the internet via www.geno2pheno.org. They can be used for inferring which drug compounds have previously been used by an HIV-1-infected patient, for predicting drug resistance, and for selecting an optimal antiretroviral therapy. Our data-driven models can be periodically retrained without expert intervention as clinical HIV-1 databases are updated and therefore reduce our dependency on hard-to-obtain GPPs.

Citing Articles

Developing a Prototype Machine Learning Model to Predict Quality of Life Measures in People Living With HIV.

Mercadal-Orfila G, Serrano Lopez de Las Hazas J, Riera-Jaume M, Herrera-Perez S Integr Pharm Res Pract. 2025; 14:1-16.

PMID: 39872224 PMC: 11766232. DOI: 10.2147/IPRP.S492422.


Incorporating temporal dynamics of mutations to enhance the prediction capability of antiretroviral therapy's outcome for HIV-1.

Di Teodoro G, Pirkl M, Incardona F, Vicenti I, Sonnerborg A, Kaiser R Bioinformatics. 2024; 40(6).

PMID: 38775719 PMC: 11153833. DOI: 10.1093/bioinformatics/btae327.


Web Service for HIV Drug Resistance Prediction Based on Analysis of Amino Acid Substitutions in Main Drug Targets.

Paremskaia A, Rudik A, Filimonov D, Lagunin A, Poroikov V, Tarasova O Viruses. 2023; 15(11).

PMID: 38005921 PMC: 10674809. DOI: 10.3390/v15112245.


RHIVDB: A Freely Accessible Database of HIV Amino Acid Sequences and Clinical Data of Infected Patients.

Tarasova O, Rudik A, Kireev D, Poroikov V Front Genet. 2021; 12:679029.

PMID: 34178036 PMC: 8222909. DOI: 10.3389/fgene.2021.679029.


A Computational Approach for the Prediction of Treatment History and the Effectiveness or Failure of Antiretroviral Therapy.

Tarasova O, Biziukova N, Kireev D, Lagunin A, Ivanov S, Filimonov D Int J Mol Sci. 2020; 21(3).

PMID: 31979356 PMC: 7037494. DOI: 10.3390/ijms21030748.


References
1.
Kempf D, Marsh K, Kumar G, Rodrigues A, Denissen J, McDonald E . Pharmacokinetic enhancement of inhibitors of the human immunodeficiency virus protease by coadministration with ritonavir. Antimicrob Agents Chemother. 1997; 41(3):654-60. PMC: 163767. DOI: 10.1128/AAC.41.3.654. View

2.
Vermeiren H, Van Craenenbroeck E, Alen P, Bacheler L, Picchio G, Lecocq P . Prediction of HIV-1 drug susceptibility phenotype from the viral genotype using linear regression modeling. J Virol Methods. 2007; 145(1):47-55. DOI: 10.1016/j.jviromet.2007.05.009. View

3.
Santos A, Soares M . HIV Genetic Diversity and Drug Resistance. Viruses. 2011; 2(2):503-531. PMC: 3185604. DOI: 10.3390/v2020503. View

4.
Johnson V, Calvez V, Gunthard H, Paredes R, Pillay D, Shafer R . Update of the drug resistance mutations in HIV-1: March 2013. Top Antivir Med. 2013; 21(1):6-14. PMC: 6148891. View

5.
Langford S, Ananworanich J, Cooper D . Predictors of disease progression in HIV infection: a review. AIDS Res Ther. 2007; 4:11. PMC: 1887539. DOI: 10.1186/1742-6405-4-11. View