Cargando…

An Innovative Sequence-to-Structure-Based Approach to Drug Resistance Interpretation and Prediction: The Use of Molecular Interaction Fields to Detect HIV-1 Protease Binding-Site Dissimilarities

In silico methodologies have opened new avenues of research to understanding and predicting drug resistance, a pressing health issue that keeps rising at alarming pace. Sequence-based interpretation systems are routinely applied in clinical context in an attempt to predict mutation-based drug resist...

Descripción completa

Detalles Bibliográficos
Autores principales: Alves, Nuno G., Mata, Ana I., Luís, João P., Brito, Rui M. M., Simões, Carlos J. V.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7202381/
https://www.ncbi.nlm.nih.gov/pubmed/32411655
http://dx.doi.org/10.3389/fchem.2020.00243
_version_ 1783529699189719040
author Alves, Nuno G.
Mata, Ana I.
Luís, João P.
Brito, Rui M. M.
Simões, Carlos J. V.
author_facet Alves, Nuno G.
Mata, Ana I.
Luís, João P.
Brito, Rui M. M.
Simões, Carlos J. V.
author_sort Alves, Nuno G.
collection PubMed
description In silico methodologies have opened new avenues of research to understanding and predicting drug resistance, a pressing health issue that keeps rising at alarming pace. Sequence-based interpretation systems are routinely applied in clinical context in an attempt to predict mutation-based drug resistance and thus aid the choice of the most adequate antibiotic and antiviral therapy. An important limitation of approaches based on genotypic data exclusively is that mutations are not considered in the context of the three-dimensional (3D) structure of the target. Structure-based in silico methodologies are inherently more suitable to interpreting and predicting the impact of mutations on target-drug interactions, at the cost of higher computational and time demands when compared with sequence-based approaches. Herein, we present a fast, computationally inexpensive, sequence-to-structure-based approach to drug resistance prediction, which makes use of 3D protein structures encoded by input target sequences to draw binding-site comparisons with susceptible templates. Rather than performing atom-by-atom comparisons between input target and template structures, our workflow generates and compares Molecular Interaction Fields (MIFs) that map the areas of energetically favorable interactions between several chemical probe types and the target binding site. Quantitative, pairwise dissimilarity measurements between the target and the template binding sites are thus produced. The method is particularly suited to understanding changes to the 3D structure and the physicochemical environment introduced by mutations into the target binding site. Furthermore, the workflow relies exclusively on freeware, making it accessible to anyone. Using four datasets of known HIV-1 protease sequences as a case-study, we show that our approach is capable of correctly classifying resistant and susceptible sequences given as input. Guided by ROC curve analyses, we fined-tuned a dissimilarity threshold of classification that results in remarkable discriminatory performance (accuracy ≈ ROC AUC ≈ 0.99), illustrating the high potential of sequence-to-structure-, MIF-based approaches in the context of drug resistance prediction. We discuss the complementarity of the proposed methodology to existing prediction algorithms based on genotypic data. The present work represents a new step toward a more comprehensive and structurally-informed interpretation of the impact of genetic variability on the response to HIV-1 therapies.
format Online
Article
Text
id pubmed-7202381
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-72023812020-05-14 An Innovative Sequence-to-Structure-Based Approach to Drug Resistance Interpretation and Prediction: The Use of Molecular Interaction Fields to Detect HIV-1 Protease Binding-Site Dissimilarities Alves, Nuno G. Mata, Ana I. Luís, João P. Brito, Rui M. M. Simões, Carlos J. V. Front Chem Chemistry In silico methodologies have opened new avenues of research to understanding and predicting drug resistance, a pressing health issue that keeps rising at alarming pace. Sequence-based interpretation systems are routinely applied in clinical context in an attempt to predict mutation-based drug resistance and thus aid the choice of the most adequate antibiotic and antiviral therapy. An important limitation of approaches based on genotypic data exclusively is that mutations are not considered in the context of the three-dimensional (3D) structure of the target. Structure-based in silico methodologies are inherently more suitable to interpreting and predicting the impact of mutations on target-drug interactions, at the cost of higher computational and time demands when compared with sequence-based approaches. Herein, we present a fast, computationally inexpensive, sequence-to-structure-based approach to drug resistance prediction, which makes use of 3D protein structures encoded by input target sequences to draw binding-site comparisons with susceptible templates. Rather than performing atom-by-atom comparisons between input target and template structures, our workflow generates and compares Molecular Interaction Fields (MIFs) that map the areas of energetically favorable interactions between several chemical probe types and the target binding site. Quantitative, pairwise dissimilarity measurements between the target and the template binding sites are thus produced. The method is particularly suited to understanding changes to the 3D structure and the physicochemical environment introduced by mutations into the target binding site. Furthermore, the workflow relies exclusively on freeware, making it accessible to anyone. Using four datasets of known HIV-1 protease sequences as a case-study, we show that our approach is capable of correctly classifying resistant and susceptible sequences given as input. Guided by ROC curve analyses, we fined-tuned a dissimilarity threshold of classification that results in remarkable discriminatory performance (accuracy ≈ ROC AUC ≈ 0.99), illustrating the high potential of sequence-to-structure-, MIF-based approaches in the context of drug resistance prediction. We discuss the complementarity of the proposed methodology to existing prediction algorithms based on genotypic data. The present work represents a new step toward a more comprehensive and structurally-informed interpretation of the impact of genetic variability on the response to HIV-1 therapies. Frontiers Media S.A. 2020-04-29 /pmc/articles/PMC7202381/ /pubmed/32411655 http://dx.doi.org/10.3389/fchem.2020.00243 Text en Copyright © 2020 Alves, Mata, Luís, Brito and Simões. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Chemistry
Alves, Nuno G.
Mata, Ana I.
Luís, João P.
Brito, Rui M. M.
Simões, Carlos J. V.
An Innovative Sequence-to-Structure-Based Approach to Drug Resistance Interpretation and Prediction: The Use of Molecular Interaction Fields to Detect HIV-1 Protease Binding-Site Dissimilarities
title An Innovative Sequence-to-Structure-Based Approach to Drug Resistance Interpretation and Prediction: The Use of Molecular Interaction Fields to Detect HIV-1 Protease Binding-Site Dissimilarities
title_full An Innovative Sequence-to-Structure-Based Approach to Drug Resistance Interpretation and Prediction: The Use of Molecular Interaction Fields to Detect HIV-1 Protease Binding-Site Dissimilarities
title_fullStr An Innovative Sequence-to-Structure-Based Approach to Drug Resistance Interpretation and Prediction: The Use of Molecular Interaction Fields to Detect HIV-1 Protease Binding-Site Dissimilarities
title_full_unstemmed An Innovative Sequence-to-Structure-Based Approach to Drug Resistance Interpretation and Prediction: The Use of Molecular Interaction Fields to Detect HIV-1 Protease Binding-Site Dissimilarities
title_short An Innovative Sequence-to-Structure-Based Approach to Drug Resistance Interpretation and Prediction: The Use of Molecular Interaction Fields to Detect HIV-1 Protease Binding-Site Dissimilarities
title_sort innovative sequence-to-structure-based approach to drug resistance interpretation and prediction: the use of molecular interaction fields to detect hiv-1 protease binding-site dissimilarities
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7202381/
https://www.ncbi.nlm.nih.gov/pubmed/32411655
http://dx.doi.org/10.3389/fchem.2020.00243
work_keys_str_mv AT alvesnunog aninnovativesequencetostructurebasedapproachtodrugresistanceinterpretationandpredictiontheuseofmolecularinteractionfieldstodetecthiv1proteasebindingsitedissimilarities
AT mataanai aninnovativesequencetostructurebasedapproachtodrugresistanceinterpretationandpredictiontheuseofmolecularinteractionfieldstodetecthiv1proteasebindingsitedissimilarities
AT luisjoaop aninnovativesequencetostructurebasedapproachtodrugresistanceinterpretationandpredictiontheuseofmolecularinteractionfieldstodetecthiv1proteasebindingsitedissimilarities
AT britoruimm aninnovativesequencetostructurebasedapproachtodrugresistanceinterpretationandpredictiontheuseofmolecularinteractionfieldstodetecthiv1proteasebindingsitedissimilarities
AT simoescarlosjv aninnovativesequencetostructurebasedapproachtodrugresistanceinterpretationandpredictiontheuseofmolecularinteractionfieldstodetecthiv1proteasebindingsitedissimilarities
AT alvesnunog innovativesequencetostructurebasedapproachtodrugresistanceinterpretationandpredictiontheuseofmolecularinteractionfieldstodetecthiv1proteasebindingsitedissimilarities
AT mataanai innovativesequencetostructurebasedapproachtodrugresistanceinterpretationandpredictiontheuseofmolecularinteractionfieldstodetecthiv1proteasebindingsitedissimilarities
AT luisjoaop innovativesequencetostructurebasedapproachtodrugresistanceinterpretationandpredictiontheuseofmolecularinteractionfieldstodetecthiv1proteasebindingsitedissimilarities
AT britoruimm innovativesequencetostructurebasedapproachtodrugresistanceinterpretationandpredictiontheuseofmolecularinteractionfieldstodetecthiv1proteasebindingsitedissimilarities
AT simoescarlosjv innovativesequencetostructurebasedapproachtodrugresistanceinterpretationandpredictiontheuseofmolecularinteractionfieldstodetecthiv1proteasebindingsitedissimilarities