Abstract

BackgroundDrug design against proteins to cure various diseases has been studied for several years. Numerous design techniques were discovered for small organic molecules for specific protein targets. The specificity, toxicity and selectivity of small molecules are hard problems to solve. The use of peptide drugs enables a partial solution to the toxicity problem. There has been a wide interest in peptide design, but the design techniques of a specific and selective peptide inhibitor against a protein target have not yet been established.Methodology/Principal FindingsA novel de novo peptide design approach is developed to block activities of disease related protein targets. No prior training, based on known peptides, is necessary. The method sequentially generates the peptide by docking its residues pair by pair along a chosen path on a protein. The binding site on the protein is determined via the coarse grained Gaussian Network Model. A binding path is determined. The best fitting peptide is constructed by generating all possible peptide pairs at each point along the path and determining the binding energies between these pairs and the specific location on the protein using AutoDock. The Markov based partition function for all possible choices of the peptides along the path is generated by a matrix multiplication scheme. The best fitting peptide for the given surface is obtained by a Hidden Markov model using Viterbi decoding. The suitability of the conformations of the peptides that result upon binding on the surface are included in the algorithm by considering the intrinsic Ramachandran potentials.Conclusions/SignificanceThe model is tested on known protein-peptide inhibitor complexes. The present algorithm predicts peptides that have better binding energies than those of the existing ones. Finally, a heptapeptide is designed for a protein that has excellent binding affinity according to AutoDock results.

Highlights

  • The determination of a specific peptide sequence with affinity to a particular protein surface is a problem of high degree of complexity arising from the fact that each residue of the peptide could be chosen from a pool of twenty natural amino acids

  • We evaluate the transition probabilities based on this partition function, and select the best peptide for the given surface employing a Hidden Markov model (HMM) using Viterbi decoding [35]

  • The Viterbi algorithm is successful in predicting tripeptides to the five proteins

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Summary

Introduction

The determination of a specific peptide sequence with affinity to a particular protein surface is a problem of high degree of complexity arising from the fact that each residue of the peptide could be chosen from a pool of twenty natural amino acids. Even for a peptide with three amino acid residues, there exist 86103 possible peptide sequences. Screening of such a large number of molecules is complicated with both experimental and computational techniques. Numerous design techniques were discovered for small organic molecules for specific protein targets. The specificity, toxicity and selectivity of small molecules are hard problems to solve. There has been a wide interest in peptide design, but the design techniques of a specific and selective peptide inhibitor against a protein target have not yet been established

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