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Browsing by Author "Monecke, Peter"

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Now showing 1 - 3 of 3
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    A Combination of Spin Diffusion Methods for the Determination of Protein-Ligand Complex Structural Ensembles
    (2015)
    Pilger, Jens  
    ;
    Mazur, Adam  
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    Monecke, Peter
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    Schreuder, Herman
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    Elshorst, Bettina
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    Bartoschek, Stefan
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    Langer, Thomas
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    Schiffer, Alexander
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    Krimm, Isabelle
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    Wegstroth, Melanie  
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    Lee, Donghan  
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    Hessler, Gerhard
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    Wendt, K. Ulrich
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    Becker, Stefan  
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    Griesinger, Christian  
    Structure-based drug design (SBDD) is a powerful and widely used approach to optimize affinity of drug candidates. With the recently introduced INPHARMA method, the binding mode of small molecules to their protein target can be characterized even if no spectroscopic information about the protein is known. Here, we show that the combination of the spin-diffusion-based NMR methods INPHARMA, trNOE, and STD results in an accurate scoring function for docking modes and therefore determination of protein-ligand complex structures. Applications are shown on the model system protein kinaseA and the drug targets glycogen phosphorylase and soluble epoxide hydrolase (sEH). Multiplexing of several ligands improves the reliability of the scoring function further. The new score allows in the case of sEH detecting two binding modes of the ligand in its binding site, which was corroborated by X-ray analysis.
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    An NMR-based scoring function improves the accuracy of binding pose predictions by docking by two orders of magnitude
    (Springer, 2012)
    Orts, Julien
    ;
    Bartoschek, Stefan
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    Griesinger, Christian  
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    Monecke, Peter
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    Carlomagno, Teresa  
    Low-affinity ligands can be efficiently optimized into high-affinity drug leads by structure based drug design when atomic-resolution structural information on the protein/ligand complexes is available. In this work we show that the use of a few, easily obtainable, experimental restraints improves the accuracy of the docking experiments by two orders of magnitude. The experimental data are measured in nuclear magnetic resonance spectra and consist of protein-mediated NOEs between two competitively binding ligands. The methodology can be widely applied as the data are readily obtained for low-affinity ligands in the presence of non-labelled receptor at low concentration. The experimental inter-ligand NOEs are efficiently used to filter and rank complex model structures that have been pre-selected by docking protocols. This approach dramatically reduces the degeneracy and inaccuracy of the chosen model in docking experiments, is robust with respect to inaccuracy of the structural model used to represent the free receptor and is suitable for high-throughput docking campaigns.
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    Crystallography-independent determination of ligand binding modes
    (Wiley-v C H Verlag Gmbh, 2008)
    Orts, Julien
    ;
    Tuma, Jennifer
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    Reese, Marcel
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    Grimm, S. Kaspar
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    Monecke, Peter
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    Bartoschek, Stefan
    ;
    Schiffer, Alexander
    ;
    Wendt, K. Ulrich
    ;
    Griesinger, Christian  
    ;
    Carlomagno, Teresa  

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