All-atom de novo protein folding with a scalable evolutionary algorithm

Authors
Verma, AbhinavGopal, Srinivasa M.Oh, Jung S.Lee, Kyu H.Wenzel, Wolfgang
Issue Date
2007-12
Publisher
WILEY
Citation
JOURNAL OF COMPUTATIONAL CHEMISTRY, v.28, no.16, pp.2552 - 2558
Abstract
The search for efficient and predictive methods to describe the protein folding process at the all-atom level remains an important grand-computational challenge. The development of multi-teraflop architectures, such as the IBM BlueGene used in this study, has been motivated in part by the large computational requirements of such studies. Here we report the predictive all-atom folding of the forty-amino acid HIV accessory protein using an evolutionary stochastic optimization technique. We implemented the optimization method as a master-client model on an IBM BlueGene, where the algorithm scales near perfectly from 64 to 4096 processors in virtual processor mode. Starting from a completely extended conformation, we optimize a population of 64 conformations of the protein in our all-atom free-energy model PFF01 Using 2048 processors the algorithm predictively folds the protein to a near-native conformation with an RMS deviation of 3.43 angstrom in < 24 h. (c) 2007 Wiley Periodicals, Inc.
Keywords
REPLICA-EXCHANGE SIMULATIONS; ENERGY LANDSCAPE; STRUCTURE PREDICTION; OPTIMIZATION; MINIMIZATION; PATHWAYS; PEPTIDE; SOLVATION; COMPUTER; MINIMUM; REPLICA-EXCHANGE SIMULATIONS; ENERGY LANDSCAPE; STRUCTURE PREDICTION; OPTIMIZATION; MINIMIZATION; PATHWAYS; PEPTIDE; SOLVATION; COMPUTER; MINIMUM; De Novo protein folding; evolutionary algorithm; all-atom folding
ISSN
0192-8651
URI
https://pubs.kist.re.kr/handle/201004/133952
DOI
10.1002/jcc.20750
Appears in Collections:
KIST Article > 2007
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