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A fragment library based on gaussian mixtures predicting favorable molecular interactions

Koski, Timo (författare)
Linköpings universitet,Tekniska högskolan,Matematisk statistik
Rantanen, V.-V. (författare)
Department of Mathematics, University of Turku, FIN-20014, Turku, Finland, Department of Biochemistry and Pharmacy, Åbo Akademi University, Tykistökatu 6 BioCity 3A, FIN-20521, Turku, Finland
Denessiouk, K.A. (författare)
Department of Biochemistry and Pharmacy, Åbo Akademi University, Tykistökatu 6 BioCity 3A, FIN-20521, Turku, Finland
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Gyllenberg, M. (författare)
Department of Mathematics, University of Turku, FIN-20014, Turku, Finland
Johnson, M.S. (författare)
Department of Biochemistry and Pharmacy, Åbo Akademi University, Tykistökatu 6 BioCity 3A, FIN-20521, Turku, Finland
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 (creator_code:org_t)
Elsevier BV, 2001
2001
Engelska.
Ingår i: Journal of Molecular Biology. - : Elsevier BV. - 0022-2836 .- 1089-8638. ; 313:1, s. 197-214
  • Tidskriftsartikel (refereegranskat)
Abstract Ämnesord
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  • Here, a protein atom-ligand fragment interaction library is described. The library is based on experimentally solved structures of protein-ligand and protein-protein complexes deposited in the Protein Data Bank (PDB) and it is able to characterize binding sites given a ligand structure suitable for a protein. A set of 30 ligand fragment types were defined to include three or more atoms in order to unambiguously define a frame of referencefor interactions of ligand atoms with their receptor proteins. Interactions between ligand fragments and 24 classes of protein target atoms plus a water oxygen atom were collected and segregated according to type. The spatial distributions of individual fragment - target atom pairs were visually inspected in order to obtain rough-grained constraints on the interaction volumes. Data fulfilling these constraints were given as input to an iterative expectation-maximization algorithm that produces as output maximum likelihood estimates of the parameters of the finite Gaussian mixture models. Concepts of statistical pattern recognition and the resulting mixture model densities are used (i) to predict the detailed interactions between Chlorella virus DNA ligase and the adenine ring of its ligand and (ii) to evaluate the "error" in prediction for both the training and validation sets of protein-ligand interaction found in the PDB. These analyses demonstrate that this approach can successfully narrow down the possibilities for both the interacting protein atom type and its location relative to a ligand fragment.

Nyckelord

protein-ligand recognition
prior and conditional probabilities
Bayes'
theorem
Gaussian mixture model
expectation-maximization algorithm
protein-ligand interactions
hydrogen-bonding regions
directed drug
design
binding-sites
stochastic complexity
scoring function
probe
groups
ludi
information
positions
TECHNOLOGY

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