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In silico identification of novel IL-1β inhibitors to target protein–protein interfaces

[Display omitted] •The study encompasses QSAR modeling, pharmacophore modeling and docking simulation.•QSAR and pharmacophore modeling was performed for IL-1β inhibitors.•The activity of 7 million compounds from ZINC database was predicted by QSAR model.•The best predicted compounds were subjected t...

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Published in:Computational biology and chemistry 2015-10, Vol.58, p.158-166
Main Authors: Halim, Sobia Ahsan, Jawad, Muhammad, Ilyas, Muhammad, Mir, Zulfiqar, Mirza, Atif Anwar, Husnain, Tayyab
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container_title Computational biology and chemistry
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creator Halim, Sobia Ahsan
Jawad, Muhammad
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description [Display omitted] •The study encompasses QSAR modeling, pharmacophore modeling and docking simulation.•QSAR and pharmacophore modeling was performed for IL-1β inhibitors.•The activity of 7 million compounds from ZINC database was predicted by QSAR model.•The best predicted compounds were subjected to molecular docking by MOE and FRED.•Docking results showed 7 compounds as potential IL-1β inhibitors. Interleukin-1β is a drug target in rheumatoid arthritis and several auto-immune disorders. In this study, a set of 48 compounds with the determined IC50 values were used for QSAR analysis by MOE. The QSAR model was developed by using training set of 41 compounds, based on 12 unique descriptors. Model was validated by predicting the IC50 values for a test set of 7 compounds. A correlation analysis was carried out comparing the statistics of the measured IC50 values with predicted ones. Subsequently, model was used for the screening of a large data set of 7,397,957 compounds obtained from “Drugs Now” category of ZINC database. The activities of those compounds were predicted by developed model. 708,960 compounds that showed best predicted activities were chosen for further studies. Additionally this set of 708,960 compounds was screened by pharmacophore modeling that led to the retrieval of 1809 molecules. Finally docking of 1809 molecules was conducted at the IL-1β receptor binding site using MOE and FRED docking program. Several new compounds were predicted as IL-1β inhibitors in silico. This study provides valuable insight for designing more potent and selective inhibitors for the treatment of inflammatory diseases.
doi_str_mv 10.1016/j.compbiolchem.2015.06.004
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Interleukin-1β is a drug target in rheumatoid arthritis and several auto-immune disorders. In this study, a set of 48 compounds with the determined IC50 values were used for QSAR analysis by MOE. The QSAR model was developed by using training set of 41 compounds, based on 12 unique descriptors. Model was validated by predicting the IC50 values for a test set of 7 compounds. A correlation analysis was carried out comparing the statistics of the measured IC50 values with predicted ones. Subsequently, model was used for the screening of a large data set of 7,397,957 compounds obtained from “Drugs Now” category of ZINC database. The activities of those compounds were predicted by developed model. 708,960 compounds that showed best predicted activities were chosen for further studies. Additionally this set of 708,960 compounds was screened by pharmacophore modeling that led to the retrieval of 1809 molecules. 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subjects Binding Sites
Computer Simulation
Drug Design
Humans
IL-1β
Interleukin-1beta - antagonists & inhibitors
Interleukin-1beta - metabolism
Molecular docking
Molecular Docking Simulation
Pharmacophore modeling
Protein Binding
QSAR
Quantitative Structure-Activity Relationship
Receptors, Interleukin-1 - metabolism
Virtual screening
title In silico identification of novel IL-1β inhibitors to target protein–protein interfaces
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