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Prediction of HIV-1 protease resistance using genotypic, phenotypic, and molecular information with artificial neural networks

Drug resistance is a primary barrier to effective treatments of HIV/AIDS. Calculating quantitative relations between genotype and phenotype observations for each inhibitor with cell-based assays requires time and money-consuming experiments. Machine learning models are good options for tackling thes...

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Autores principales: Tunc, Huseyin, Dogan, Berna, Darendeli Kiraz, Büşra Nur, Sari, Murat, Durdagi, Serdar, Kotil, Seyfullah
Formato: Online Artículo Texto
Lenguaje:English
Publicado: PeerJ Inc. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10038082/
https://www.ncbi.nlm.nih.gov/pubmed/36967989
http://dx.doi.org/10.7717/peerj.14987
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author Tunc, Huseyin
Dogan, Berna
Darendeli Kiraz, Büşra Nur
Sari, Murat
Durdagi, Serdar
Kotil, Seyfullah
author_facet Tunc, Huseyin
Dogan, Berna
Darendeli Kiraz, Büşra Nur
Sari, Murat
Durdagi, Serdar
Kotil, Seyfullah
author_sort Tunc, Huseyin
collection PubMed
description Drug resistance is a primary barrier to effective treatments of HIV/AIDS. Calculating quantitative relations between genotype and phenotype observations for each inhibitor with cell-based assays requires time and money-consuming experiments. Machine learning models are good options for tackling these problems by generalizing the available data with suitable linear or nonlinear mappings. The main aim of this study is to construct drug isolate fold (DIF) change-based artificial neural network (ANN) models for estimating the resistance potential of molecules inhibiting the HIV-1 protease (PR) enzyme. Throughout the study, seven of eight protease inhibitors (PIs) have been included in the training set and the remaining ones in the test set. We have obtained 11,803 genotype-phenotype data points for eight PIs from Stanford HIV drug resistance database. Using the leave-one-out (LVO) procedure, eight ANN models have been produced to measure the learning capacity of models from the descriptors of the inhibitors. Mean R(2) value of eight ANN models for unseen inhibitors is 0.716, and the 95% confidence interval (CI) is [0.592–0.840]. Predicting the fold change resistance for hundreds of isolates allowed a robust comparison of drug pairs. These eight models have predicted the drug resistance tendencies of each inhibitor pair with the mean 2D correlation coefficient of 0.933 and 95% CI [0.930–0.938]. A classification problem has been created to predict the ordered relationship of the PIs, and the mean accuracy, sensitivity, specificity, and Matthews correlation coefficient (MCC) values are calculated as 0.954, 0.791, 0.791, and 0.688, respectively. Furthermore, we have created an external test dataset consisting of 51 unique known HIV-1 PR inhibitors and 87 genotype-phenotype relations. Our developed ANN model has accuracy and area under the curve (AUC) values of 0.749 and 0.818 to predict the ordered relationships of molecules on the same strain for the external dataset. The currently derived ANN models can accurately predict the drug resistance tendencies of PI pairs. This observation could help test new inhibitors with various isolates.
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spelling pubmed-100380822023-03-25 Prediction of HIV-1 protease resistance using genotypic, phenotypic, and molecular information with artificial neural networks Tunc, Huseyin Dogan, Berna Darendeli Kiraz, Büşra Nur Sari, Murat Durdagi, Serdar Kotil, Seyfullah PeerJ Bioinformatics Drug resistance is a primary barrier to effective treatments of HIV/AIDS. Calculating quantitative relations between genotype and phenotype observations for each inhibitor with cell-based assays requires time and money-consuming experiments. Machine learning models are good options for tackling these problems by generalizing the available data with suitable linear or nonlinear mappings. The main aim of this study is to construct drug isolate fold (DIF) change-based artificial neural network (ANN) models for estimating the resistance potential of molecules inhibiting the HIV-1 protease (PR) enzyme. Throughout the study, seven of eight protease inhibitors (PIs) have been included in the training set and the remaining ones in the test set. We have obtained 11,803 genotype-phenotype data points for eight PIs from Stanford HIV drug resistance database. Using the leave-one-out (LVO) procedure, eight ANN models have been produced to measure the learning capacity of models from the descriptors of the inhibitors. Mean R(2) value of eight ANN models for unseen inhibitors is 0.716, and the 95% confidence interval (CI) is [0.592–0.840]. Predicting the fold change resistance for hundreds of isolates allowed a robust comparison of drug pairs. These eight models have predicted the drug resistance tendencies of each inhibitor pair with the mean 2D correlation coefficient of 0.933 and 95% CI [0.930–0.938]. A classification problem has been created to predict the ordered relationship of the PIs, and the mean accuracy, sensitivity, specificity, and Matthews correlation coefficient (MCC) values are calculated as 0.954, 0.791, 0.791, and 0.688, respectively. Furthermore, we have created an external test dataset consisting of 51 unique known HIV-1 PR inhibitors and 87 genotype-phenotype relations. Our developed ANN model has accuracy and area under the curve (AUC) values of 0.749 and 0.818 to predict the ordered relationships of molecules on the same strain for the external dataset. The currently derived ANN models can accurately predict the drug resistance tendencies of PI pairs. This observation could help test new inhibitors with various isolates. PeerJ Inc. 2023-03-21 /pmc/articles/PMC10038082/ /pubmed/36967989 http://dx.doi.org/10.7717/peerj.14987 Text en ©2023 Tunc et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, reproduction and adaptation in any medium and for any purpose provided that it is properly attributed. For attribution, the original author(s), title, publication source (PeerJ) and either DOI or URL of the article must be cited.
spellingShingle Bioinformatics
Tunc, Huseyin
Dogan, Berna
Darendeli Kiraz, Büşra Nur
Sari, Murat
Durdagi, Serdar
Kotil, Seyfullah
Prediction of HIV-1 protease resistance using genotypic, phenotypic, and molecular information with artificial neural networks
title Prediction of HIV-1 protease resistance using genotypic, phenotypic, and molecular information with artificial neural networks
title_full Prediction of HIV-1 protease resistance using genotypic, phenotypic, and molecular information with artificial neural networks
title_fullStr Prediction of HIV-1 protease resistance using genotypic, phenotypic, and molecular information with artificial neural networks
title_full_unstemmed Prediction of HIV-1 protease resistance using genotypic, phenotypic, and molecular information with artificial neural networks
title_short Prediction of HIV-1 protease resistance using genotypic, phenotypic, and molecular information with artificial neural networks
title_sort prediction of hiv-1 protease resistance using genotypic, phenotypic, and molecular information with artificial neural networks
topic Bioinformatics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10038082/
https://www.ncbi.nlm.nih.gov/pubmed/36967989
http://dx.doi.org/10.7717/peerj.14987
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