AbstractEight docking programs (DOCK, FLEXX, FRED, GLIDE, GOLD, SLIDE, SURFLEX, and QXP) that can be used for either singleāligand docking or database screening have been compared for their propensity Show more
AbstractEight docking programs (DOCK, FLEXX, FRED, GLIDE, GOLD, SLIDE, SURFLEX, and QXP) that can be used for either singleāligand docking or database screening have been compared for their propensity to recover the Xāray pose of 100 smallāmolecularāweight ligands, and for their capacity to discriminate known inhibitors of an enzyme (thymidine kinase) from randomly chosen ādrugālikeā molecules. Interestingly, both properties are found to be correlated, since the tools showing the best docking accuracy (GLIDE, GOLD, and SURFLEX) are also the most successful in ranking known inhibitors in a virtual screening experiment. Moreover, the current study pinpoints some physicochemical descriptors of either the ligand or its cognate proteinābinding site that generally lead to docking/scoring inaccuracies. Proteins 2004. Ā© 2004 WileyāLiss, Inc. Show less
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DOI: 10.1002/prot.20149 š
AbstractProteinābased virtual screening of chemical libraries is a powerful technique for identifying new molecules that may interact with a macromolecular target of interest. Because of docking and s Show more
AbstractProteinābased virtual screening of chemical libraries is a powerful technique for identifying new molecules that may interact with a macromolecular target of interest. Because of docking and scoring limitations, it is more difficult to apply as a lead optimization method because it requires that the docking/scoring tool is able to propose as few solutions as possible and all of them with a very good accuracy for both the proteinābound orientation and the conformation of the ligand. In the present study, we present a consensus docking approach (ConsDock) that takes advantage of three widely used docking tools (Dock, FlexX, and Gold). The consensus analysis of all possible poses generated by several docking tools is performed sequentially in four steps: (i) hierarchical clustering of all poses generated by a docking tool into families represented by a leader; (ii) definition of all consensus pairs from leaders generated by different docking programs; (iii) clustering of consensus pairs into classes, represented by a mean structure; and (iv) ranking the different means starting from the most populated class of consensus pairs. When applied to a test set of 100 proteināligand complexes from the Protein Data Bank, ConsDock significantly outperforms single docking with respect to the docking accuracy of the topāranked pose. In 60% of the cases investigated here, ConsDock was able to rank as top solution a pose within 2 Ć
RMSD of the Xāray structure. It can be applied as a postprocessing filter to either singleā or multipleādocking programs to prioritize threeādimensional guided lead optimization from the most likely docking solution. Proteins 2002;47:521ā533. Ā© 2002 WileyāLiss, Inc. Show less
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DOI: 10.1002/prot.10119 š