Study of ligand-based virtual screening tools in computer-aided drug design
Data(s) |
14/04/2010
14/04/2010
07/05/2010
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Resumo |
Virtual screening is a central technique in drug discovery today. Millions of molecules can be tested <i>in silico</i> with the aim to only select the most promising and test them experimentally. The topic of this thesis is ligand-based virtual screening tools which take existing active molecules as starting point for finding new drug candidates. One goal of this thesis was to build a model that gives the probability that two molecules are biologically similar as function of one or more chemical similarity scores. Another important goal was to evaluate how well different ligand-based virtual screening tools are able to distinguish active molecules from inactives. One more criterion set for the virtual screening tools was their applicability in scaffold-hopping, i.e. finding new active chemotypes. In the first part of the work, a link was defined between the abstract chemical similarity score given by a screening tool and the probability that the two molecules are biologically similar. These results help to decide objectively which virtual screening hits to test experimentally. The work also resulted in a new type of data fusion method when using two or more tools. In the second part, five ligand-based virtual screening tools were evaluated and their performance was found to be generally poor. Three reasons for this were proposed: false negatives in the benchmark sets, active molecules that do not share the binding mode, and activity cliffs. In the third part of the study, a novel visualization and quantification method is presented for evaluation of the scaffold-hopping ability of virtual screening tools. |
Identificador |
http://www.doria.fi/handle/10024/59769 URN:ISBN:978-951-29-4248-0 |
Idioma(s) |
fi |
Publicador |
Annales Universitatis Turkuensis D 897 |
Tipo |
Doctoral thesis (article-based) |