Literature DB >> 22033979

In silico predictions of 3D structures of linear and cyclic peptides with natural and non-proteinogenic residues.

Jérôme Beaufays1, Laurence Lins, Annick Thomas, Robert Brasseur.   

Abstract

We extended the use of Peplook, an in silico procedure for the prediction of three-dimensional (3D) models of linear peptides to the prediction of 3D models of cyclic peptides and thanks to the ab initio calculation procedure, to the calculation of peptides with non-proteinogenic amino acids. Indeed, such peptides cannot be predicted by homology or threading. We compare the calculated models with NMR and X-ray models and for the cyclic peptides, with models predicted by other in silico procedures (Pep-Fold and I-Tasser). For cyclic peptides, on a set of 38 peptides, average root mean square deviation of backbone atoms (BB-RMSD) was 3.8 and 4.1 Å for Peplook and Pep-Fold, respectively. The best results are obtained with I-Tasser (2.5 Å) although evaluations were biased by the fact that the resolved Protein Data Bank models could be used as template by the server. Peplook and Pep-Fold give similar results, better for short (up to 20 residues) than for longer peptides. For peptides with non-proteinogenic residues, performances of Peplook are sound with an average BB-RMSD of 3.6 Å for 'non-natural peptides' and 3.4 Å for peptides combining non-proteinogenic residues and cyclic structure. These results open interesting possibilities for the design of peptidic drugs.
Copyright © 2011 European Peptide Society and John Wiley & Sons, Ltd.

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Year:  2011        PMID: 22033979     DOI: 10.1002/psc.1410

Source DB:  PubMed          Journal:  J Pept Sci        ISSN: 1075-2617            Impact factor:   1.905


  21 in total

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