Statistical analysis of crystallization database links protein physico-chemical features with crystallization mechanisms.

dc.contributor.author

Fusco, Diana

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Barnum, Timothy J

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Bruno, Andrew E

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Luft, Joseph R

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Snell, Edward H

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Mukherjee, Sayan

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Charbonneau, Patrick

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United States

dc.date.accessioned

2015-09-03T06:35:31Z

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2014

dc.description.abstract

X-ray crystallography is the predominant method for obtaining atomic-scale information about biological macromolecules. Despite the success of the technique, obtaining well diffracting crystals still critically limits going from protein to structure. In practice, the crystallization process proceeds through knowledge-informed empiricism. Better physico-chemical understanding remains elusive because of the large number of variables involved, hence little guidance is available to systematically identify solution conditions that promote crystallization. To help determine relationships between macromolecular properties and their crystallization propensity, we have trained statistical models on samples for 182 proteins supplied by the Northeast Structural Genomics consortium. Gaussian processes, which capture trends beyond the reach of linear statistical models, distinguish between two main physico-chemical mechanisms driving crystallization. One is characterized by low levels of side chain entropy and has been extensively reported in the literature. The other identifies specific electrostatic interactions not previously described in the crystallization context. Because evidence for two distinct mechanisms can be gleaned both from crystal contacts and from solution conditions leading to successful crystallization, the model offers future avenues for optimizing crystallization screens based on partial structural information. The availability of crystallization data coupled with structural outcomes analyzed through state-of-the-art statistical models may thus guide macromolecular crystallization toward a more rational basis.

dc.identifier

http://www.ncbi.nlm.nih.gov/pubmed/24988076

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PONE-D-13-53452

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1932-6203

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https://hdl.handle.net/10161/10578

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eng

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Public Library of Science (PLoS)

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PLoS One

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10.1371/journal.pone.0101123

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Crystallography, X-Ray

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Databases, Protein

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Models, Chemical

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Proteins

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Statistical analysis of crystallization database links protein physico-chemical features with crystallization mechanisms.

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Journal article

duke.contributor.orcid

Charbonneau, Patrick|0000-0001-7174-0821

pubs.author-url

http://www.ncbi.nlm.nih.gov/pubmed/24988076

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e101123

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7

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Chemistry

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Duke

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Physics

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Trinity College of Arts & Sciences

pubs.publication-status

Published online

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9

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