Issue April 2004No. 5 (p. 615-724) April 2004 ISSN 0739-110 Prediction of Protein Structure by Simulating Coarse-grained Folding Pathways: A Preliminary Report (p. 625-638)A set of software tools designed to study protein structure and kinetics has been developed. The core of these tools is a program called Folding Machine (FM) which is able to generate low resolution folding pathways using modest computational resources. The FM is based on a coarse-grained kinetic ab initio Monte-Carlo sampler that can optionally use information extracted from secondary structure prediction servers or from fragment libraries of local structure. The model underpinning this algorithm contains two novel elements: (a) the conformational space is discretized using the Ramachandran basins defined in the local φ-ψ energy maps; and (b) the solvent is treated implicitly by rescaling the pairwise terms of the non-bonded energy function according to the local solvent environments. The purpose of this hybrid ab initio/knowledge-based approach is threefold: to cover the long time scales of folding, to generate useful 3-dimensional models of protein structures, and to gain insight on the protein folding kinetics. Even though the algorithm is not yet fully developed, it has been used in a recent blind test of protein structure prediction (CASP5). The FM generated models within 6 Å backbone rmsd for fragments of about 60-70 residues of α-helical proteins. For a CASP5 target that turned out to be natively unfolded, the trajectory obtained for this sequence uniquely failed to converge. Also, a new measure to evaluate structure predictions is presented and used along the standard CASP assessment methods. Finally, recent improvements in the prediction of β-sheet structures are briefly described.
Key words: Protein folding, Protein structure prediction, CASP, Folding pathways, Folding kinetics, Fragment libraries, Secondary structure prediction, Coarse-graining, Monte-Carlo sampling, Natively unfolded proteins, Prediction evaluation. Andres Colubri Searle Chemistry Lab Subscription is more cost effective than purchasing PDFs on-the-fly. Click here for details. |