Customizing scoring functions for docking

TA Pham, AN Jain - Journal of computer-aided molecular design, 2008 - Springer
TA Pham, AN Jain
Journal of computer-aided molecular design, 2008Springer
Empirical scoring functions used in protein-ligand docking calculations are typically trained
on a dataset of complexes with known affinities with the aim of generalizing across different
docking applications. We report a novel method of scoring-function optimization that
supports the use of additional information to constrain scoring function parameters, which
can be used to focus a scoring function's training towards a particular application, such as
screening enrichment. The approach combines multiple instance learning, positive data in …
Abstract
Empirical scoring functions used in protein-ligand docking calculations are typically trained on a dataset of complexes with known affinities with the aim of generalizing across different docking applications. We report a novel method of scoring-function optimization that supports the use of additional information to constrain scoring function parameters, which can be used to focus a scoring function’s training towards a particular application, such as screening enrichment. The approach combines multiple instance learning, positive data in the form of ligands of protein binding sites of known and unknown affinity and binding geometry, and negative (decoy) data of ligands thought not to bind particular protein binding sites or known not to bind in particular geometries. Performance of the method for the Surflex-Dock scoring function is shown in cross-validation studies and in eight blind test cases. Tuned functions optimized with a sufficient amount of data exhibited either improved or undiminished screening performance relative to the original function across all eight complexes. Analysis of the changes to the scoring function suggest that modifications can be learned that are related to protein-specific features such as active-site mobility.
Springer
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