Research Article
Locating Biologically Active Compounds in Medium-Sized Heterogeneous Datasets by Topological Autocorrelation Vectors: Dopamine and Benzodiazepine Agonists
Universität Stuttgart. E-mail: {bauknecht, zell, bayer, levi}@ informatik.uni-stuttgart.de.
Universitat Erlangen-Nürnberg. {wagener, sadowski, gasteiger}@ torvs.ccc.uni-erlangen.de.
In papers with more than one author, the asterisk indicates the name of the author to whom inquiries about the paper should be addressed.
Abstract
Electronic properties located on the atoms of a molecule such as partial atomic charges as well as electronegativity and polarizability values are encoded by an autocorrelation vector accounting for the constitution of a molecule. This encoding procedure is able to distinguish between compounds being dopamine agonists and those being benzodiazepine receptor agonists even after projection into a two-dimensional self-organizing network. The two types of compounds can still be distinguished if they are buried in a dataset of 8323 compounds of a chemical supplier catalog comprising a wide structural variety. The maps obtained by this sequence of events, calculation of empirical physicochemical effects, encoding in a topological autocorrelation vector, and projection by a self-organizing neural network, can thus be used for searching for structural similarity, and, in particular, for finding new lead structures with biological activity.
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