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Default 3D Computational Modeling of Proteins Using Sparse Paramagnetic NMR Data.

3D Computational Modeling of Proteins Using Sparse Paramagnetic NMR Data.

3D Computational Modeling of Proteins Using Sparse Paramagnetic NMR Data.

Methods Mol Biol. 2017;1526:3-21

Authors: Pilla KB, Otting G, Huber T

Abstract
Computational modeling of proteins using evolutionary or de novo approaches offers rapid structural characterization, but often suffers from low success rates in generating high quality models comparable to the accuracy of structures observed in X-ray crystallography or nuclear magnetic resonance (NMR) spectroscopy. A computational/experimental hybrid approach incorporating sparse experimental restraints in computational modeling algorithms drastically improves reliability and accuracy of 3D models. This chapter discusses the use of structural information obtained from various paramagnetic NMR measurements and demonstrates computational algorithms implementing pseudocontact shifts as restraints to determine the structure of proteins at atomic resolution.


PMID: 27896733 [PubMed - in process]



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