doi:10.1016/j.polymer.2003.10.081    How to cite or link using doi (opens new window) Cite or link using doi  
Copyright © 2004 Elsevier Ltd. All rights reserved.

 

Improved conformational space annealing method to treat small beta, Greek-structure with the UNRES force-field and to enhance scalability of parallel implementation

Cezary Czaplewskia, b, Adam Liwoa, b, c, JarosImageaw Pillardya, d, StanisImageaw OImagedzieja, b and Harold A. ScheragaCorresponding Author Contact Information, E-mail The Corresponding Author, a

a Baker Laboratory of Chemistry and Chemical Biology, Cornell University, Ithaca, NY 14853-1301, USA
b Faculty of Chemistry, University of GdaImagesk, ul. Sobieskiego 18, 80-952, GdaImagesk, Poland
c Academic Computer Center in GdaImagesk TASK, ul. Narutowicza 11/12, 80-952, GdaImagesk, Poland
d Cornell Theory Center, Cornell University, Ithaca, NY 14853-3801, USA

Received 25 April 2003;  revised 16 May 2003;  accepted 16 May 2003. ; Available online 27 November 2003.
 

Abstract

Successful application of physics-based protein-structure prediction methods depends on sophisticated computational approaches to global optimization of the conformational energy of a polypeptide chain. One of the most effective procedures for the global optimization of protein structures appears to be the Conformational Space Annealing (CSA) method. CSA is a hybrid method which combines genetic algorithms, essential aspects of the build-up method and a local gradient-based minimization. CSA evolves the population of conformations through genetic operators (mutations, i.e. perturbations of selected geometric parameters, and crossovers, i.e. exchange of selected subsets of geometric parameters between conformations) to a final population optimizing their conformational energy. Implementation of the CSA method with the united-residue force field (UNRES, in which each amino-acid residue is represented by two interaction sites, namely the united peptide group and the united side-chain) was enhanced by introducing new crossover operations consisting of (i) copying small beta, Greek-hairpins, (ii) copying remote strand pairs forming non-local small beta, Greek-sheets, and (iii) copying small alpha, Greek-helical segments. A mutation operation, which shifts the position of a small beta, Greek-turn, was also introduced. The new operations promote small beta, Greek-structure, and are essential for searching the conformational space of proteins containing both small alpha, Greek- and small beta, Greek-structure; without these operations, excessive preference of small alpha, Greek-helical structures is obtained, even though these structures are high in energy. Parallelization of the CSA method has also been enhanced by removing most of the synchronization steps; the improved algorithm scales almost linearly up to 1,000 processors with over 75% average performance.

Author Keywords: Protein structure prediction; Global optimization; Conformational space annealing