Cargando…

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

BACKGROUND: Selecting the optimal combination of HIV drugs for an individual in resource-limited settings is challenging because of the limited availability of drugs and genotyping. OBJECTIVE: The evaluation as a potential treatment support tool of computational models that predict response to thera...

Descripción completa

Detalles Bibliográficos
Autores principales: Revell, Andrew, Khabo, Paul, Ledwaba, Lotty, Emery, Sean, Wang, Dechao, Wood, Robin, Morrow, Carl, Tempelman, Hugo, Hamers, Raph L., Reiss, Peter, van Sighem, Ard, Pozniak, Anton, Montaner, Julio, Lane, H. Clifford, Larder, Brendan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: AOSIS 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5843195/
https://www.ncbi.nlm.nih.gov/pubmed/29568609
http://dx.doi.org/10.4102/sajhivmed.v17i1.450
_version_ 1783305038366507008
author Revell, Andrew
Khabo, Paul
Ledwaba, Lotty
Emery, Sean
Wang, Dechao
Wood, Robin
Morrow, Carl
Tempelman, Hugo
Hamers, Raph L.
Reiss, Peter
van Sighem, Ard
Pozniak, Anton
Montaner, Julio
Lane, H. Clifford
Larder, Brendan
author_facet Revell, Andrew
Khabo, Paul
Ledwaba, Lotty
Emery, Sean
Wang, Dechao
Wood, Robin
Morrow, Carl
Tempelman, Hugo
Hamers, Raph L.
Reiss, Peter
van Sighem, Ard
Pozniak, Anton
Montaner, Julio
Lane, H. Clifford
Larder, Brendan
author_sort Revell, Andrew
collection PubMed
description BACKGROUND: Selecting the optimal combination of HIV drugs for an individual in resource-limited settings is challenging because of the limited availability of drugs and genotyping. OBJECTIVE: The evaluation as a potential treatment support tool of computational models that predict response to therapy without a genotype, using cases from the Phidisa cohort in South Africa. METHODS: Cases from Phidisa of treatment change following failure were identified that had the following data available: baseline CD4 count and viral load, details of failing and previous antiretroviral drugs, drugs in new regimen and time to follow-up. The HIV Resistance Response Database Initiative’s (RDI’s) models used these data to predict the probability of a viral load < 50 copies/mL at follow-up. The models were also used to identify effective alternative combinations of three locally available drugs. RESULTS: The models achieved accuracy (area under the receiver–operator characteristic curve) of 0.72 when predicting response to therapy, which is less accurate than for an independent global test set (0.80) but at least comparable to that of genotyping with rules-based interpretation. The models were able to identify alternative locally available three-drug regimens that were predicted to be effective in 69% of all cases and 62% of those whose new treatment failed in the clinic. CONCLUSION: The predictive accuracy of the models for these South African patients together with the results of previous studies suggest that the RDI’s models have the potential to optimise treatment selection and reduce virological failure in different patient populations, without the use of a genotype.
format Online
Article
Text
id pubmed-5843195
institution National Center for Biotechnology Information
language English
publishDate 2016
publisher AOSIS
record_format MEDLINE/PubMed
spelling pubmed-58431952018-03-22 Computational models as predictors of HIV treatment outcomes for the Phidisa cohort in South Africa Revell, Andrew Khabo, Paul Ledwaba, Lotty Emery, Sean Wang, Dechao Wood, Robin Morrow, Carl Tempelman, Hugo Hamers, Raph L. Reiss, Peter van Sighem, Ard Pozniak, Anton Montaner, Julio Lane, H. Clifford Larder, Brendan South Afr J HIV Med Original Research BACKGROUND: Selecting the optimal combination of HIV drugs for an individual in resource-limited settings is challenging because of the limited availability of drugs and genotyping. OBJECTIVE: The evaluation as a potential treatment support tool of computational models that predict response to therapy without a genotype, using cases from the Phidisa cohort in South Africa. METHODS: Cases from Phidisa of treatment change following failure were identified that had the following data available: baseline CD4 count and viral load, details of failing and previous antiretroviral drugs, drugs in new regimen and time to follow-up. The HIV Resistance Response Database Initiative’s (RDI’s) models used these data to predict the probability of a viral load < 50 copies/mL at follow-up. The models were also used to identify effective alternative combinations of three locally available drugs. RESULTS: The models achieved accuracy (area under the receiver–operator characteristic curve) of 0.72 when predicting response to therapy, which is less accurate than for an independent global test set (0.80) but at least comparable to that of genotyping with rules-based interpretation. The models were able to identify alternative locally available three-drug regimens that were predicted to be effective in 69% of all cases and 62% of those whose new treatment failed in the clinic. CONCLUSION: The predictive accuracy of the models for these South African patients together with the results of previous studies suggest that the RDI’s models have the potential to optimise treatment selection and reduce virological failure in different patient populations, without the use of a genotype. AOSIS 2016-06-30 /pmc/articles/PMC5843195/ /pubmed/29568609 http://dx.doi.org/10.4102/sajhivmed.v17i1.450 Text en © 2016. The Authors http://creativecommons.org/licenses/by/2.0/ Licensee: AOSIS. This work is licensed under the Creative Commons Attribution License.
spellingShingle Original Research
Revell, Andrew
Khabo, Paul
Ledwaba, Lotty
Emery, Sean
Wang, Dechao
Wood, Robin
Morrow, Carl
Tempelman, Hugo
Hamers, Raph L.
Reiss, Peter
van Sighem, Ard
Pozniak, Anton
Montaner, Julio
Lane, H. Clifford
Larder, Brendan
Computational models as predictors of HIV treatment outcomes for the Phidisa cohort in South Africa
title Computational models as predictors of HIV treatment outcomes for the Phidisa cohort in South Africa
title_full Computational models as predictors of HIV treatment outcomes for the Phidisa cohort in South Africa
title_fullStr Computational models as predictors of HIV treatment outcomes for the Phidisa cohort in South Africa
title_full_unstemmed Computational models as predictors of HIV treatment outcomes for the Phidisa cohort in South Africa
title_short Computational models as predictors of HIV treatment outcomes for the Phidisa cohort in South Africa
title_sort computational models as predictors of hiv treatment outcomes for the phidisa cohort in south africa
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5843195/
https://www.ncbi.nlm.nih.gov/pubmed/29568609
http://dx.doi.org/10.4102/sajhivmed.v17i1.450
work_keys_str_mv AT revellandrew computationalmodelsaspredictorsofhivtreatmentoutcomesforthephidisacohortinsouthafrica
AT khabopaul computationalmodelsaspredictorsofhivtreatmentoutcomesforthephidisacohortinsouthafrica
AT ledwabalotty computationalmodelsaspredictorsofhivtreatmentoutcomesforthephidisacohortinsouthafrica
AT emerysean computationalmodelsaspredictorsofhivtreatmentoutcomesforthephidisacohortinsouthafrica
AT wangdechao computationalmodelsaspredictorsofhivtreatmentoutcomesforthephidisacohortinsouthafrica
AT woodrobin computationalmodelsaspredictorsofhivtreatmentoutcomesforthephidisacohortinsouthafrica
AT morrowcarl computationalmodelsaspredictorsofhivtreatmentoutcomesforthephidisacohortinsouthafrica
AT tempelmanhugo computationalmodelsaspredictorsofhivtreatmentoutcomesforthephidisacohortinsouthafrica
AT hamersraphl computationalmodelsaspredictorsofhivtreatmentoutcomesforthephidisacohortinsouthafrica
AT reisspeter computationalmodelsaspredictorsofhivtreatmentoutcomesforthephidisacohortinsouthafrica
AT vansighemard computationalmodelsaspredictorsofhivtreatmentoutcomesforthephidisacohortinsouthafrica
AT pozniakanton computationalmodelsaspredictorsofhivtreatmentoutcomesforthephidisacohortinsouthafrica
AT montanerjulio computationalmodelsaspredictorsofhivtreatmentoutcomesforthephidisacohortinsouthafrica
AT lanehclifford computationalmodelsaspredictorsofhivtreatmentoutcomesforthephidisacohortinsouthafrica
AT larderbrendan computationalmodelsaspredictorsofhivtreatmentoutcomesforthephidisacohortinsouthafrica