| Literature DB >> 18073112 |
Gunnar F Schröder1, Axel T Brunger, Michael Levitt.
Abstract
Structural studies of large proteins and protein assemblies are a difficult and pressing challenge in molecular biology. Experiments often yield only low-resolution or sparse data that are not sufficient to fully determine atomistic structures. We have developed a general geometry-based algorithm that efficiently samples conformational space under constraints imposed by low-resolution density maps obtained from electron microscopy or X-ray crystallography experiments. A deformable elastic network (DEN) is used to restrain the sampling to prior knowledge of an approximate structure. The DEN restraints dramatically reduce over-fitting, especially at low resolution. Cross-validation is used to optimally weight the structural information and experimental data. Our algorithm is robust even for noise-added density maps and has a large radius of convergence for our test case. The DEN restraints can also be used to enhance reciprocal space simulated annealing refinement.Entities:
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Year: 2007 PMID: 18073112 PMCID: PMC2213367 DOI: 10.1016/j.str.2007.09.021
Source DB: PubMed Journal: Structure ISSN: 0969-2126 Impact factor: 5.006