Multiscale docking using evolutionary optimisation

<p>Molecular docking algorithms are computational methods that predict the binding site and docking pose of specified ligands with a protein target. They have proliferated in recent years, due to the explosion of structural data in biology. Oxdock is an algo...

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Main Authors: Huggins, D, Richards, W, Huggins, David John
Other Authors: Grant, G
Format: Thesis
Language:English
Published: 2005
Subjects:
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author Huggins, D
Richards, W
Huggins, David John
author2 Grant, G
author_facet Grant, G
Huggins, D
Richards, W
Huggins, David John
author_sort Huggins, D
collection OXFORD
description <p>Molecular docking algorithms are computational methods that predict the binding site and docking pose of specified ligands with a protein target. They have proliferated in recent years, due to the explosion of structural data in biology. Oxdock is an algorithm that uses various techniques to simplify this complex task, the most significant being the use of a multiscale approach to analyse the problem using a simple representation in the early stages. Oxdock is shown to be a very useful tool in computational biology, as exemplified by two cases. The first case is the analysis of the NMDA subclass of neuronal glutamate receptors and the subsequent elucidation of their function. The second is the investigation of the newly discovered plant glutamate receptors and the clarification of their natural ligands. The results in both instances open new areas of research into exciting areas of biology.</p> <p>Despite its effectiveness in solving many problems, Oxdock does fail in a number of circumstances. It is thus important to devise a new and improved method for molecular docking. This is achieved by combining the speed of the multiscale approach with the optimising ability of Evolutionary Programming. This yields an algorithm that is shown to be precise, accurate and specific.</p> <p>The new algorithm, Eve, is then modified to illustrate its potential in both lead optimisation and <em>de novo</em> drug design. These capacities, combined with its ability to predict the location of binding sites and the docking pose of a ligand, highlight the promise of computational methods in solving problems in many areas of biological chemistry.</p>
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spelling oxford-uuid:f166d5ec-5085-48b9-838a-626f754f73fb2022-03-27T11:55:45ZMultiscale docking using evolutionary optimisationThesishttp://purl.org/coar/resource_type/c_db06uuid:f166d5ec-5085-48b9-838a-626f754f73fbLigands (Biochemistry)Methyl aspartateProtein bindingEnglishPolonsky Theses Digitisation Project2005Huggins, DRichards, WHuggins, David JohnGrant, G<p>Molecular docking algorithms are computational methods that predict the binding site and docking pose of specified ligands with a protein target. They have proliferated in recent years, due to the explosion of structural data in biology. Oxdock is an algorithm that uses various techniques to simplify this complex task, the most significant being the use of a multiscale approach to analyse the problem using a simple representation in the early stages. Oxdock is shown to be a very useful tool in computational biology, as exemplified by two cases. The first case is the analysis of the NMDA subclass of neuronal glutamate receptors and the subsequent elucidation of their function. The second is the investigation of the newly discovered plant glutamate receptors and the clarification of their natural ligands. The results in both instances open new areas of research into exciting areas of biology.</p> <p>Despite its effectiveness in solving many problems, Oxdock does fail in a number of circumstances. It is thus important to devise a new and improved method for molecular docking. This is achieved by combining the speed of the multiscale approach with the optimising ability of Evolutionary Programming. This yields an algorithm that is shown to be precise, accurate and specific.</p> <p>The new algorithm, Eve, is then modified to illustrate its potential in both lead optimisation and <em>de novo</em> drug design. These capacities, combined with its ability to predict the location of binding sites and the docking pose of a ligand, highlight the promise of computational methods in solving problems in many areas of biological chemistry.</p>
spellingShingle Ligands (Biochemistry)
Methyl aspartate
Protein binding
Huggins, D
Richards, W
Huggins, David John
Multiscale docking using evolutionary optimisation
title Multiscale docking using evolutionary optimisation
title_full Multiscale docking using evolutionary optimisation
title_fullStr Multiscale docking using evolutionary optimisation
title_full_unstemmed Multiscale docking using evolutionary optimisation
title_short Multiscale docking using evolutionary optimisation
title_sort multiscale docking using evolutionary optimisation
topic Ligands (Biochemistry)
Methyl aspartate
Protein binding
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