Literature DB >> 24275116

An update to the HIV-TRePS system: the development of new computational models that do not require a genotype to predict HIV treatment outcomes.

Andrew D Revell1, Dechao Wang, Robin Wood, Carl Morrow, Hugo Tempelman, Raph Hamers, Gerardo Alvarez-Uria, Adrian Streinu-Cercel, Luminita Ene, Annemarie Wensing, Peter Reiss, Ard I van Sighem, Mark Nelson, Sean Emery, Julio S G Montaner, H Clifford Lane, Brendan A Larder.   

Abstract

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 load. The models were assessed during cross-validation and with an independent global test set of 1000 cases including 100 from southern Africa. The models' accuracy [area under the receiver-operating characteristic curve (AUC)] was evaluated and compared with genotyping using rules-based interpretation systems for those cases with genotypes available.
RESULTS: The models achieved AUCs of 0.79-0.84 (mean 0.82) during cross-validation, 0.80 with the global test set and 0.78 with the southern African subset. The AUCs were significantly lower (0.56-0.57) for genotyping.
CONCLUSIONS: The models predicted virological response to HIV therapy without a genotype as accurately as previous models that included a genotype. They were accurate for cases from southern Africa and significantly more accurate than genotyping. These models will be accessible via the online treatment support tool HIV-TRePS and have the potential to help optimize antiretroviral therapy in resource-limited settings where genotyping is not generally available.

Entities:  

Keywords:  antiretroviral therapy; genotyping; resource-limited settings

Mesh:

Substances:

Year:  2013        PMID: 24275116      PMCID: PMC3956369          DOI: 10.1093/jac/dkt447

Source DB:  PubMed          Journal:  J Antimicrob Chemother        ISSN: 0305-7453            Impact factor:   5.790


  12 in total

1.  Clinical evaluation of the potential utility of computational modeling as an HIV treatment selection tool by physicians with considerable HIV experience.

Authors:  Brendan A Larder; Andrew Revell; Joann M Mican; Brian K Agan; Marianne Harris; Carlo Torti; Ilaria Izzo; Julia A Metcalf; Migdalia Rivera-Goba; Vincent C Marconi; Dechao Wang; Daniel Coe; Brian Gazzard; Julio Montaner; H Clifford Lane
Journal:  AIDS Patient Care STDS       Date:  2011-01       Impact factor: 5.078

2.  The development of artificial neural networks to predict virological response to combination HIV therapy.

Authors:  Brendan Larder; Dechao Wang; Andrew Revell; Julio Montaner; Richard Harrigan; Frank De Wolf; Joep Lange; Scott Wegner; Lidia Ruiz; Maria Jésus Pérez-Elías; Sean Emery; Jose Gatell; Antonella D'Arminio Monforte; Carlo Torti; Maurizio Zazzi; Clifford Lane
Journal:  Antivir Ther       Date:  2007

3.  A comparison of three computational modelling methods for the prediction of virological response to combination HIV therapy.

Authors:  Dechao Wang; Brendan Larder; Andrew Revell; Julio Montaner; Richard Harrigan; Frank De Wolf; Joep Lange; Scott Wegner; Lidia Ruiz; María Jésus Pérez-Elías; Sean Emery; Jose Gatell; Antonella D'Arminio Monforte; Carlo Torti; Maurizio Zazzi; Clifford Lane
Journal:  Artif Intell Med       Date:  2009-06-12       Impact factor: 5.326

Review 4.  Modelling response to HIV therapy without a genotype: an argument for viral load monitoring in resource-limited settings.

Authors:  A D Revell; D Wang; R Harrigan; R L Hamers; A M J Wensing; F Dewolf; M Nelson; A-M Geretti; B A Larder
Journal:  J Antimicrob Chemother       Date:  2010-02-12       Impact factor: 5.790

5.  The development of an expert system to predict virological response to HIV therapy as part of an online treatment support tool.

Authors:  Andrew D Revell; Dechao Wang; Mark A Boyd; Sean Emery; Anton L Pozniak; Frank De Wolf; Richard Harrigan; Julio S G Montaner; Clifford Lane; Brendan A Larder
Journal:  AIDS       Date:  2011-09-24       Impact factor: 4.177

6.  Computational models can predict response to HIV therapy without a genotype and may reduce treatment failure in different resource-limited settings.

Authors:  A D Revell; D Wang; R Wood; C Morrow; H Tempelman; R L Hamers; G Alvarez-Uria; A Streinu-Cercel; L Ene; A M J Wensing; F DeWolf; M Nelson; J S Montaner; H C Lane; B A Larder
Journal:  J Antimicrob Chemother       Date:  2013-03-13       Impact factor: 5.790

7.  Comparing the areas under two or more correlated receiver operating characteristic curves: a nonparametric approach.

Authors:  E R DeLong; D M DeLong; D L Clarke-Pearson
Journal:  Biometrics       Date:  1988-09       Impact factor: 2.571

8.  Prediction of response to antiretroviral therapy by human experts and by the EuResist data-driven expert system (the EVE study).

Authors:  M Zazzi; R Kaiser; A Sönnerborg; D Struck; A Altmann; M Prosperi; M Rosen-Zvi; A Petroczi; Y Peres; E Schülter; C A Boucher; F Brun-Vezinet; P R Harrigan; L Morris; M Obermeier; C-F Perno; P Phanuphak; D Pillay; R W Shafer; A-M Vandamme; K van Laethem; A M J Wensing; T Lengauer; F Incardona
Journal:  HIV Med       Date:  2010-08-19       Impact factor: 3.180

9.  Antiretroviral therapy optimisation without genotype resistance testing: a perspective on treatment history based models.

Authors:  Mattia C F Prosperi; Michal Rosen-Zvi; André Altmann; Maurizio Zazzi; Simona Di Giambenedetto; Rolf Kaiser; Eugen Schülter; Daniel Struck; Peter Sloot; David A van de Vijver; Anne-Mieke Vandamme; Anders Sönnerborg
Journal:  PLoS One       Date:  2010-10-29       Impact factor: 3.240

Review 10.  Multidrug resistance: a clinical approach.

Authors:  Yazdan Yazdanpanah
Journal:  Curr Opin HIV AIDS       Date:  2009-11       Impact factor: 4.283

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  7 in total

1.  2018 update to the HIV-TRePS system: the development of new computational models to predict HIV treatment outcomes, with or without a genotype, with enhanced usability for low-income settings.

Authors:  Andrew D Revell; Dechao Wang; Maria-Jesus Perez-Elias; Robin Wood; Dolphina Cogill; Hugo Tempelman; Raph L Hamers; Peter Reiss; Ard I van Sighem; Catherine A Rehm; Anton Pozniak; Julio S G Montaner; H Clifford Lane; Brendan A Larder
Journal:  J Antimicrob Chemother       Date:  2018-08-01       Impact factor: 5.790

2.  An update to the HIV-TRePS system: the development and evaluation of new global and local computational models to predict HIV treatment outcomes, with or without a genotype.

Authors:  Andrew D Revell; Dechao Wang; Robin Wood; Carl Morrow; Hugo Tempelman; Raph L Hamers; Peter Reiss; Ard I van Sighem; Mark Nelson; Julio S G Montaner; H Clifford Lane; Brendan A Larder
Journal:  J Antimicrob Chemother       Date:  2016-06-20       Impact factor: 5.790

Review 3.  Human Immunodeficiency Virus Resistance Testing Technologies and Their Applicability in Resource-Limited Settings of Africa.

Authors:  Idris Abdullahi Nasir; Anthony Uchenna Emeribe; Iduda Ojeamiren; Hafeez Aderinsayo Adekola
Journal:  Infect Dis (Auckl)       Date:  2017-12-19

4.  Using drug exposure for predicting drug resistance - A data-driven genotypic interpretation tool.

Authors:  Alejandro Pironti; Nico Pfeifer; Hauke Walter; Björn-Erik O Jensen; Maurizio Zazzi; Perpétua Gomes; Rolf Kaiser; Thomas Lengauer
Journal:  PLoS One       Date:  2017-04-10       Impact factor: 3.240

5.  Computational models as predictors of HIV treatment outcomes for the Phidisa cohort in South Africa.

Authors:  Andrew Revell; Paul Khabo; Lotty Ledwaba; Sean Emery; Dechao Wang; Robin Wood; Carl Morrow; Hugo Tempelman; Raph L Hamers; Peter Reiss; Ard van Sighem; Anton Pozniak; Julio Montaner; H Clifford Lane; Brendan Larder
Journal:  South Afr J HIV Med       Date:  2016-06-30       Impact factor: 2.744

Review 6.  HIV Resistance Prediction to Reverse Transcriptase Inhibitors: Focus on Open Data.

Authors:  Olga Tarasova; Vladimir Poroikov
Journal:  Molecules       Date:  2018-04-19       Impact factor: 4.411

7.  AIDS Therapy Evaluation in the Netherlands (ATHENA) national observational HIV cohort: cohort profile.

Authors:  Tamara Sonia Boender; Colette Smit; Ard van Sighem; Daniela Bezemer; Catriona J Ester; Sima Zaheri; Ferdinand W N M Wit; Peter Reiss
Journal:  BMJ Open       Date:  2018-09-24       Impact factor: 2.692

  7 in total

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