Massively-Parallel Computational Identification of Novel Broad Spectrum Antivirals to Combat Coronavirus Infection
Philosophiae Doctor - PhD === Given the significant disease burden caused by human coronaviruses, the discovery of an effective antiviral strategy is paramount, however there is still no effective therapy to combat infection. This thesis details the in silica exploration of ligand libraries to ident...
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ndltd-netd.ac.za-oai-union.ndltd.org-uwc-oai-etd.uwc.ac.za-11394-83212021-08-12T05:09:09Z Massively-Parallel Computational Identification of Novel Broad Spectrum Antivirals to Combat Coronavirus Infection Berry, Michael Gamieldien, Junaid Human coronaviruses 3 Chymotrypsin like protease Structure based drug design Ligand based drug design High throughput virtual screening Molecular docking Pharmacophore modelling Molecular dynamics Lead discovery Philosophiae Doctor - PhD Given the significant disease burden caused by human coronaviruses, the discovery of an effective antiviral strategy is paramount, however there is still no effective therapy to combat infection. This thesis details the in silica exploration of ligand libraries to identify candidate lead compounds that, based on multiple criteria, have a high probability of inhibiting the 3 chymotrypsin-like protease (3CUro) of human coronaviruses. Atomistic models of the 3CUro were obtained from the Protein Data Bank or theoretical models were successfully generated by homology modelling. These structures served the basis of both structure- and ligand-based drug design studies. Consensus molecular docking and pharmacophore modelling protocols were adapted to explore the ZINC Drugs-Now dataset in a high throughput virtual screening strategy to identify ligands which computationally bound to the active site of the 3CUro . Molecular dynamics was further utilized to confirm the binding mode and interactions observed in the static structure- and ligand-based techniques were correct via analysis of various parameters in a IOns simulation. Molecular docking and pharmacophore models identified a total of 19 ligands which displayed the potential to computationally bind to all 3CUro included in the study. Strategies employed to identify these lead compounds also indicated that a known inhibitor of the SARS-Co V 3CUro also has potential as a broad spectrum lead compound. Further analysis by molecular dynamic simulations largely confirmed the binding mode and ligand orientations identified by the former techniques. The comprehensive approach used in this study improves the probability of identifying experimental actives and represents a cost effective pipeline for the often expensive and time consuming process of lead discovery. These identified lead compounds represent an ideal starting point for assays to confirm in vitro activity, where experimentally confirmed actives will be proceeded to subsequent studies on lead optimization. 2021-08-10T13:27:23Z 2021-08-10T13:27:23Z 2015 http://hdl.handle.net/11394/8321 en University of the Western Cape University of the Western Cape |
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Human coronaviruses 3 Chymotrypsin like protease Structure based drug design Ligand based drug design High throughput virtual screening Molecular docking Pharmacophore modelling Molecular dynamics Lead discovery |
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Human coronaviruses 3 Chymotrypsin like protease Structure based drug design Ligand based drug design High throughput virtual screening Molecular docking Pharmacophore modelling Molecular dynamics Lead discovery Berry, Michael Massively-Parallel Computational Identification of Novel Broad Spectrum Antivirals to Combat Coronavirus Infection |
description |
Philosophiae Doctor - PhD === Given the significant disease burden caused by human coronaviruses, the discovery of an effective antiviral strategy is paramount, however there is still no effective therapy to combat infection. This thesis details the in silica exploration of ligand libraries to identify candidate
lead compounds that, based on multiple criteria, have a high probability of inhibiting the 3 chymotrypsin-like protease (3CUro) of human coronaviruses. Atomistic models of the 3CUro were obtained from the Protein Data Bank or theoretical models were successfully generated by homology modelling. These structures served the basis of both structure- and ligand-based drug design studies. Consensus molecular docking and pharmacophore modelling protocols were adapted to explore the ZINC Drugs-Now dataset in a high throughput virtual screening strategy to identify ligands which computationally bound to the active site of the 3CUro . Molecular dynamics was further utilized to confirm the binding mode and interactions observed in the static structure- and ligand-based techniques were correct via analysis of various parameters in a IOns simulation. Molecular docking and pharmacophore models identified a total of 19 ligands which displayed
the potential to computationally bind to all 3CUro included in the study. Strategies employed to identify these lead compounds also indicated that a known inhibitor of the SARS-Co V 3CUro also has potential as a broad spectrum lead compound. Further analysis by molecular dynamic simulations largely confirmed the binding mode and ligand orientations identified by the former techniques. The comprehensive approach used in this study improves the probability of identifying experimental actives and represents a cost effective pipeline for the often expensive and time consuming process of lead discovery. These identified lead compounds represent an ideal
starting point for assays to confirm in vitro activity, where experimentally confirmed actives will be proceeded to subsequent studies on lead optimization. |
author2 |
Gamieldien, Junaid |
author_facet |
Gamieldien, Junaid Berry, Michael |
author |
Berry, Michael |
author_sort |
Berry, Michael |
title |
Massively-Parallel Computational Identification of Novel Broad Spectrum Antivirals to Combat Coronavirus Infection |
title_short |
Massively-Parallel Computational Identification of Novel Broad Spectrum Antivirals to Combat Coronavirus Infection |
title_full |
Massively-Parallel Computational Identification of Novel Broad Spectrum Antivirals to Combat Coronavirus Infection |
title_fullStr |
Massively-Parallel Computational Identification of Novel Broad Spectrum Antivirals to Combat Coronavirus Infection |
title_full_unstemmed |
Massively-Parallel Computational Identification of Novel Broad Spectrum Antivirals to Combat Coronavirus Infection |
title_sort |
massively-parallel computational identification of novel broad spectrum antivirals to combat coronavirus infection |
publisher |
University of the Western Cape |
publishDate |
2021 |
url |
http://hdl.handle.net/11394/8321 |
work_keys_str_mv |
AT berrymichael massivelyparallelcomputationalidentificationofnovelbroadspectrumantiviralstocombatcoronavirusinfection |
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