Literature DB >> 18042678

Robust recognition of zinc binding sites in proteins.

Jessica C Ebert1, Russ B Altman.   

Abstract

Metals play a variety of roles in biological processes, and hence their presence in a protein structure can yield vital functional information. Because the residues that coordinate a metal often undergo conformational changes upon binding, detection of binding sites based on simple geometric criteria in proteins without bound metal is difficult. However, aspects of the physicochemical environment around a metal binding site are often conserved even when this structural rearrangement occurs. We have developed a Bayesian classifier using known zinc binding sites as positive training examples and nonmetal binding regions that nonetheless contain residues frequently observed in zinc sites as negative training examples. In order to allow variation in the exact positions of atoms, we average a variety of biochemical and biophysical properties in six concentric spherical shells around the site of interest. At a specificity of 99.8%, this method achieves 75.5% sensitivity in unbound proteins at a positive predictive value of 73.6%. We also test its accuracy on predicted protein structures obtained by homology modeling using templates with 30%-50% sequence identity to the target sequences. At a specificity of 99.8%, we correctly identify at least one zinc binding site in 65.5% of modeled proteins. Thus, in many cases, our model is accurate enough to identify metal binding sites in proteins of unknown structure for which no high sequence identity homologs of known structure exist. Both the source code and a Web interface are available to the public at http://feature.stanford.edu/metals.

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Year:  2007        PMID: 18042678      PMCID: PMC2144590          DOI: 10.1110/ps.073138508

Source DB:  PubMed          Journal:  Protein Sci        ISSN: 0961-8368            Impact factor:   6.725


  61 in total

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10.  Predicting zinc binding at the proteome level.

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  36 in total

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4.  Characterizing metal-binding sites in proteins with X-ray crystallography.

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6.  Prediction of calcium-binding sites by combining loop-modeling with machine learning.

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7.  Predicting protein ligand binding sites by combining evolutionary sequence conservation and 3D structure.

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8.  Automatic prediction of catalytic residues by modeling residue structural neighborhood.

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9.  Identification of recurring protein structure microenvironments and discovery of novel functional sites around CYS residues.

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10.  Predicting small ligand binding sites in proteins using backbone structure.

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