A selective method for optimizing ensemble docking-based experiments on an InhA Fully-Flexible receptor model

Abstract Background In the rational drug design process, an ensemble of conformations obtained from a molecular dynamics simulation plays a crucial role in docking experiments. Some studies have found that Fully-Flexible Receptor (FFR) models predict realistic binding energy accurately and improve s...

Full description

Bibliographic Details
Main Authors: Renata De Paris, Christian Vahl Quevedo, Duncan D. Ruiz, Furia Gargano, Osmar Norberto de Souza
Format: Article
Language:English
Published: BMC 2018-06-01
Series:BMC Bioinformatics
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12859-018-2222-2
id doaj-471845d5b84a470bb11d91fc2c028932
record_format Article
spelling doaj-471845d5b84a470bb11d91fc2c0289322020-11-25T01:09:28ZengBMCBMC Bioinformatics1471-21052018-06-0119111610.1186/s12859-018-2222-2A selective method for optimizing ensemble docking-based experiments on an InhA Fully-Flexible receptor modelRenata De Paris0Christian Vahl Quevedo1Duncan D. Ruiz2Furia Gargano3Osmar Norberto de Souza4Business Intelligence and Machine Learning Research Group—GPIN, School of Technology, PUCRSBusiness Intelligence and Machine Learning Research Group—GPIN, School of Technology, PUCRSBusiness Intelligence and Machine Learning Research Group—GPIN, School of Technology, PUCRSBioinformatics and Biossystems Modeling and Simulation Lab—LABIO, School of Technology, PUCRSBioinformatics and Biossystems Modeling and Simulation Lab—LABIO, School of Technology, PUCRSAbstract Background In the rational drug design process, an ensemble of conformations obtained from a molecular dynamics simulation plays a crucial role in docking experiments. Some studies have found that Fully-Flexible Receptor (FFR) models predict realistic binding energy accurately and improve scoring to enhance selectiveness. At the same time, methods have been proposed to reduce the high computational costs involved in considering the explicit flexibility of proteins in receptor-ligand docking. This study introduces a novel method to optimize ensemble docking-based experiments by reducing the size of an InhA FFR model at docking runtime and scaling docking workflow invocations on cloud virtual machines. Results First, in order to find the most affordable cost-benefit pool of virtual machines, we evaluated the performance of the docking workflow invocations in different configurations of Azure instances. Second, we validated the gains obtained by the proposed method based on the quality of the Reduced Fully-Flexible Receptor (RFFR) models produced using AutoDock4.2. The analyses show that the proposed method reduced the model size by approximately 50% while covering at least 86% of the best docking results from the 74 ligands tested. Third, we tested our novel method using AutoDock Vina, a different docking software, and showed the positive accuracy achieved in the resulting RFFR models. Finally, our results demonstrated that the method proposed optimized ensemble docking experiments and is applicable to different docking software. In addition, it detected new binding modes, which would be unreachable if employing only the rigid structure used to generate the InhA FFR model. Conclusions Our results showed that the selective method is a valuable strategy for optimizing ensemble docking-based experiments using different docking software. The RFFR models produced by discarding non-promising snapshots from the original model are accurately shaped for a larger number of ligands, and the elapsed time spent in the ensemble docking experiments are considerably reduced.http://link.springer.com/article/10.1186/s12859-018-2222-2Scientific workflowCloud computingMolecular dockingFully-Flexible receptor model
collection DOAJ
language English
format Article
sources DOAJ
author Renata De Paris
Christian Vahl Quevedo
Duncan D. Ruiz
Furia Gargano
Osmar Norberto de Souza
spellingShingle Renata De Paris
Christian Vahl Quevedo
Duncan D. Ruiz
Furia Gargano
Osmar Norberto de Souza
A selective method for optimizing ensemble docking-based experiments on an InhA Fully-Flexible receptor model
BMC Bioinformatics
Scientific workflow
Cloud computing
Molecular docking
Fully-Flexible receptor model
author_facet Renata De Paris
Christian Vahl Quevedo
Duncan D. Ruiz
Furia Gargano
Osmar Norberto de Souza
author_sort Renata De Paris
title A selective method for optimizing ensemble docking-based experiments on an InhA Fully-Flexible receptor model
title_short A selective method for optimizing ensemble docking-based experiments on an InhA Fully-Flexible receptor model
title_full A selective method for optimizing ensemble docking-based experiments on an InhA Fully-Flexible receptor model
title_fullStr A selective method for optimizing ensemble docking-based experiments on an InhA Fully-Flexible receptor model
title_full_unstemmed A selective method for optimizing ensemble docking-based experiments on an InhA Fully-Flexible receptor model
title_sort selective method for optimizing ensemble docking-based experiments on an inha fully-flexible receptor model
publisher BMC
series BMC Bioinformatics
issn 1471-2105
publishDate 2018-06-01
description Abstract Background In the rational drug design process, an ensemble of conformations obtained from a molecular dynamics simulation plays a crucial role in docking experiments. Some studies have found that Fully-Flexible Receptor (FFR) models predict realistic binding energy accurately and improve scoring to enhance selectiveness. At the same time, methods have been proposed to reduce the high computational costs involved in considering the explicit flexibility of proteins in receptor-ligand docking. This study introduces a novel method to optimize ensemble docking-based experiments by reducing the size of an InhA FFR model at docking runtime and scaling docking workflow invocations on cloud virtual machines. Results First, in order to find the most affordable cost-benefit pool of virtual machines, we evaluated the performance of the docking workflow invocations in different configurations of Azure instances. Second, we validated the gains obtained by the proposed method based on the quality of the Reduced Fully-Flexible Receptor (RFFR) models produced using AutoDock4.2. The analyses show that the proposed method reduced the model size by approximately 50% while covering at least 86% of the best docking results from the 74 ligands tested. Third, we tested our novel method using AutoDock Vina, a different docking software, and showed the positive accuracy achieved in the resulting RFFR models. Finally, our results demonstrated that the method proposed optimized ensemble docking experiments and is applicable to different docking software. In addition, it detected new binding modes, which would be unreachable if employing only the rigid structure used to generate the InhA FFR model. Conclusions Our results showed that the selective method is a valuable strategy for optimizing ensemble docking-based experiments using different docking software. The RFFR models produced by discarding non-promising snapshots from the original model are accurately shaped for a larger number of ligands, and the elapsed time spent in the ensemble docking experiments are considerably reduced.
topic Scientific workflow
Cloud computing
Molecular docking
Fully-Flexible receptor model
url http://link.springer.com/article/10.1186/s12859-018-2222-2
work_keys_str_mv AT renatadeparis aselectivemethodforoptimizingensembledockingbasedexperimentsonaninhafullyflexiblereceptormodel
AT christianvahlquevedo aselectivemethodforoptimizingensembledockingbasedexperimentsonaninhafullyflexiblereceptormodel
AT duncandruiz aselectivemethodforoptimizingensembledockingbasedexperimentsonaninhafullyflexiblereceptormodel
AT furiagargano aselectivemethodforoptimizingensembledockingbasedexperimentsonaninhafullyflexiblereceptormodel
AT osmarnorbertodesouza aselectivemethodforoptimizingensembledockingbasedexperimentsonaninhafullyflexiblereceptormodel
AT renatadeparis selectivemethodforoptimizingensembledockingbasedexperimentsonaninhafullyflexiblereceptormodel
AT christianvahlquevedo selectivemethodforoptimizingensembledockingbasedexperimentsonaninhafullyflexiblereceptormodel
AT duncandruiz selectivemethodforoptimizingensembledockingbasedexperimentsonaninhafullyflexiblereceptormodel
AT furiagargano selectivemethodforoptimizingensembledockingbasedexperimentsonaninhafullyflexiblereceptormodel
AT osmarnorbertodesouza selectivemethodforoptimizingensembledockingbasedexperimentsonaninhafullyflexiblereceptormodel
_version_ 1725178591428214784