Development and use of databases for ligand-protein interaction studies
dc.contributor.advisor
Walkinshaw, Malcolm
en
dc.contributor.advisor
Taylor, Paul
en
dc.contributor.author
Hsin, Kun-Yi
en
dc.date.accessioned
2010-10-15T14:14:06Z
dc.date.available
2010-10-15T14:14:06Z
dc.date.issued
2010
dc.description.abstract
This project applies structure-activity relationship (SAR), structure-based and
database mining approaches to study ligand-protein interactions. To support these
studies, we have developed a relational database system called EDinburgh University
Ligand Selection System (EDULISS 2.0) which stores the structure-data files of +5.5
million commercially available small molecules (+4.0 million are recognised as
unique) and over 1,500 various calculated molecular properties (descriptors) for each
compound. A user-friendly web-based interface for EDULISS 2.0 has been
established and is available at http://eduliss.bch.ed.ac.uk/.
We have utilised PubChem bioassay data from an NMR based screen assay for a
human FKBP12 protein (PubChem AID: 608). A prediction model using a Logistic
Regression approach was constructed to relate the assay result with a series of
molecular descriptors. The model reveals 38 descriptors which are found to be good
predictors. These are mainly 3D-based descriptors, however, the presence of some
predictive functional groups is also found to give a positive contribution to the
binding interaction. The application of a neural network technique called Self
Organising Maps (SOMs) succeeded in visualising the similarity of the PubChem
compounds based on the 38 descriptors and clustering the 36 % of active compounds
(16 out of 44) in a cluster and discriminating them from 95 % of inactive compounds.
We have developed a molecular descriptor called the Atomic Characteristic Distance
(ACD) to profile the distribution of specified atom types in a compound. ACD has
been implemented as a pharmacophore searching tool within EDULISS 2.0. A
structure-based screen succeeded in finding inhibitors for pyruvate kinase and the
ligand-protein complexes have been successfully crystallised.
This study also discusses the interaction of metal-binding sites in metalloproteins.
We developed a database system and web-based interface to store and apply
geometrical information of these metal sites. The programme is called MEtal Sites
in Proteins at Edinburgh UniverSity (MESPEUS;
http://eduliss.bch.ed.ac.uk/MESPEUS/). MESPEUS is an exceptionally versatile
tool for the collation and abstraction of data on a wide range of structural questions.
As an example we carried out a survey using this database indicating that the most
common protein types which contain Mg-OATP-phosphate site are transferases and the
most common pattern is linkage through the β- and γ-phosphate groups.
en
dc.identifier.uri
http://hdl.handle.net/1842/3974
dc.language.iso
en
dc.publisher
The University of Edinburgh
en
dc.subject
ligand-protein interaction
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dc.subject
drug discovery
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dc.subject
metalloprotein
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dc.title
Development and use of databases for ligand-protein interaction studies
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dc.type
Thesis or Dissertation
en
dc.type.qualificationlevel
Doctoral
en
dc.type.qualificationname
PhD Doctor of Philosophy
en
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