Publication | Open Access
Smooth statistical torsion angle potential derived from a large conformational database via adaptive kernel density estimation improves the quality of NMR protein structures
66
Citations
57
References
2012
Year
Structural BioinformaticsBiomolecular Structure PredictionMagnetic ResonanceMolecular BiologyAnalytical UltracentrifugationLarge Conformational DatabaseProtein FoldingStatistical PotentialsNmr Structure ElucidationComputational BiochemistryBiophysicsBiochemistryProtein ModelingProtein Structure PredictionSolution Nmr SpectroscopyStructural BiologySmooth Statistical TorsionNmr Protein StructuresNatural SciencesProbability DensitiesProtein NmrMedicine
Statistical potentials that embody torsion angle probability densities in databases of high-quality X-ray protein structures supplement the incomplete structural information of experimental nuclear magnetic resonance (NMR) datasets. By biasing the conformational search during the course of structure calculation toward highly populated regions in the database, the resulting protein structures display better validation criteria and accuracy. Here, a new statistical torsion angle potential is developed using adaptive kernel density estimation to extract probability densities from a large database of more than 10⁶ quality-filtered amino acid residues. Incorporated into the Xplor-NIH software package, the new implementation clearly outperforms an older potential, widely used in NMR structure elucidation, in that it exhibits simultaneously smoother and sharper energy surfaces, and results in protein structures with improved conformation, nonbonded atomic interactions, and accuracy.
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