Cargando…

Adverse Drug Reaction Prediction Using Scores Produced by Large-Scale Drug-Protein Target Docking on High-Performance Computing Machines

Late-stage or post-market identification of adverse drug reactions (ADRs) is a significant public health issue and a source of major economic liability for drug development. Thus, reliable in silico screening of drug candidates for possible ADRs would be advantageous. In this work, we introduce a co...

Descripción completa

Detalles Bibliográficos
Autores principales: LaBute, Montiago X., Zhang, Xiaohua, Lenderman, Jason, Bennion, Brian J., Wong, Sergio E., Lightstone, Felice C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2014
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4156361/
https://www.ncbi.nlm.nih.gov/pubmed/25191698
http://dx.doi.org/10.1371/journal.pone.0106298
_version_ 1782333725973938176
author LaBute, Montiago X.
Zhang, Xiaohua
Lenderman, Jason
Bennion, Brian J.
Wong, Sergio E.
Lightstone, Felice C.
author_facet LaBute, Montiago X.
Zhang, Xiaohua
Lenderman, Jason
Bennion, Brian J.
Wong, Sergio E.
Lightstone, Felice C.
author_sort LaBute, Montiago X.
collection PubMed
description Late-stage or post-market identification of adverse drug reactions (ADRs) is a significant public health issue and a source of major economic liability for drug development. Thus, reliable in silico screening of drug candidates for possible ADRs would be advantageous. In this work, we introduce a computational approach that predicts ADRs by combining the results of molecular docking and leverages known ADR information from DrugBank and SIDER. We employed a recently parallelized version of AutoDock Vina (VinaLC) to dock 906 small molecule drugs to a virtual panel of 409 DrugBank protein targets. L1-regularized logistic regression models were trained on the resulting docking scores of a 560 compound subset from the initial 906 compounds to predict 85 side effects, grouped into 10 ADR phenotype groups. Only 21% (87 out of 409) of the drug-protein binding features involve known targets of the drug subset, providing a significant probe of off-target effects. As a control, associations of this drug subset with the 555 annotated targets of these compounds, as reported in DrugBank, were used as features to train a separate group of models. The Vina off-target models and the DrugBank on-target models yielded comparable median area-under-the-receiver-operating-characteristic-curves (AUCs) during 10-fold cross-validation (0.60–0.69 and 0.61–0.74, respectively). Evidence was found in the PubMed literature to support several putative ADR-protein associations identified by our analysis. Among them, several associations between neoplasm-related ADRs and known tumor suppressor and tumor invasiveness marker proteins were found. A dual role for interstitial collagenase in both neoplasms and aneurysm formation was also identified. These associations all involve off-target proteins and could not have been found using available drug/on-target interaction data. This study illustrates a path forward to comprehensive ADR virtual screening that can potentially scale with increasing number of CPUs to tens of thousands of protein targets and millions of potential drug candidates.
format Online
Article
Text
id pubmed-4156361
institution National Center for Biotechnology Information
language English
publishDate 2014
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-41563612014-09-09 Adverse Drug Reaction Prediction Using Scores Produced by Large-Scale Drug-Protein Target Docking on High-Performance Computing Machines LaBute, Montiago X. Zhang, Xiaohua Lenderman, Jason Bennion, Brian J. Wong, Sergio E. Lightstone, Felice C. PLoS One Research Article Late-stage or post-market identification of adverse drug reactions (ADRs) is a significant public health issue and a source of major economic liability for drug development. Thus, reliable in silico screening of drug candidates for possible ADRs would be advantageous. In this work, we introduce a computational approach that predicts ADRs by combining the results of molecular docking and leverages known ADR information from DrugBank and SIDER. We employed a recently parallelized version of AutoDock Vina (VinaLC) to dock 906 small molecule drugs to a virtual panel of 409 DrugBank protein targets. L1-regularized logistic regression models were trained on the resulting docking scores of a 560 compound subset from the initial 906 compounds to predict 85 side effects, grouped into 10 ADR phenotype groups. Only 21% (87 out of 409) of the drug-protein binding features involve known targets of the drug subset, providing a significant probe of off-target effects. As a control, associations of this drug subset with the 555 annotated targets of these compounds, as reported in DrugBank, were used as features to train a separate group of models. The Vina off-target models and the DrugBank on-target models yielded comparable median area-under-the-receiver-operating-characteristic-curves (AUCs) during 10-fold cross-validation (0.60–0.69 and 0.61–0.74, respectively). Evidence was found in the PubMed literature to support several putative ADR-protein associations identified by our analysis. Among them, several associations between neoplasm-related ADRs and known tumor suppressor and tumor invasiveness marker proteins were found. A dual role for interstitial collagenase in both neoplasms and aneurysm formation was also identified. These associations all involve off-target proteins and could not have been found using available drug/on-target interaction data. This study illustrates a path forward to comprehensive ADR virtual screening that can potentially scale with increasing number of CPUs to tens of thousands of protein targets and millions of potential drug candidates. Public Library of Science 2014-09-05 /pmc/articles/PMC4156361/ /pubmed/25191698 http://dx.doi.org/10.1371/journal.pone.0106298 Text en © 2014 LaBute et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
LaBute, Montiago X.
Zhang, Xiaohua
Lenderman, Jason
Bennion, Brian J.
Wong, Sergio E.
Lightstone, Felice C.
Adverse Drug Reaction Prediction Using Scores Produced by Large-Scale Drug-Protein Target Docking on High-Performance Computing Machines
title Adverse Drug Reaction Prediction Using Scores Produced by Large-Scale Drug-Protein Target Docking on High-Performance Computing Machines
title_full Adverse Drug Reaction Prediction Using Scores Produced by Large-Scale Drug-Protein Target Docking on High-Performance Computing Machines
title_fullStr Adverse Drug Reaction Prediction Using Scores Produced by Large-Scale Drug-Protein Target Docking on High-Performance Computing Machines
title_full_unstemmed Adverse Drug Reaction Prediction Using Scores Produced by Large-Scale Drug-Protein Target Docking on High-Performance Computing Machines
title_short Adverse Drug Reaction Prediction Using Scores Produced by Large-Scale Drug-Protein Target Docking on High-Performance Computing Machines
title_sort adverse drug reaction prediction using scores produced by large-scale drug-protein target docking on high-performance computing machines
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4156361/
https://www.ncbi.nlm.nih.gov/pubmed/25191698
http://dx.doi.org/10.1371/journal.pone.0106298
work_keys_str_mv AT labutemontiagox adversedrugreactionpredictionusingscoresproducedbylargescaledrugproteintargetdockingonhighperformancecomputingmachines
AT zhangxiaohua adversedrugreactionpredictionusingscoresproducedbylargescaledrugproteintargetdockingonhighperformancecomputingmachines
AT lendermanjason adversedrugreactionpredictionusingscoresproducedbylargescaledrugproteintargetdockingonhighperformancecomputingmachines
AT bennionbrianj adversedrugreactionpredictionusingscoresproducedbylargescaledrugproteintargetdockingonhighperformancecomputingmachines
AT wongsergioe adversedrugreactionpredictionusingscoresproducedbylargescaledrugproteintargetdockingonhighperformancecomputingmachines
AT lightstonefelicec adversedrugreactionpredictionusingscoresproducedbylargescaledrugproteintargetdockingonhighperformancecomputingmachines