Treffer: Fast and Accurate Algorithms for Protein Side-Chain Packing.

Title:
Fast and Accurate Algorithms for Protein Side-Chain Packing.
Authors:
Jinbo Xu1 j3xu@tti-c.org, Berger, Bonnie2 bab@mit.edu
Source:
Journal of the ACM. Jul2006, Vol. 53 Issue 4, p533-557. 25p.
Database:
Business Source Premier

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This article studies the protein side-chain packing problem using the tree-decomposition of a protein structure. To obtain fast and accurate protein side-chain packing, protein structures are modeled using a geometric neighborhood graph, which can be easily decomposed into smaller blocks. Therefore, the side-chain assignment of the whole protein can be assembled from the assignment of the small blocks. Although we will show that the side-chain packing problem is still NP-hard, we can achieve a tree-decomposition-based globally optimal algorithm with time complexity of O(Nnrottw+1) and several polynomial-time approximation schemes (PTAS), where N is the number of residues contained in the protein, nrot the average number of rotamers for each residue, and tw = O(N2/3 log N) the treewidth of the protein structure graph. Experimental results indicate that after Goldstein dead-end elimination is conducted, nrot is very small and tw is equal to 3 or 4 most of the time. Based on the globally optimal algorithm, we developed a protein side-chain assignment program TreePack, which runs up to 90 times faster than SCWRL 3.0, a widely-used side-chain packing program, on some large test proteins in the SCWRL benchmark database and an average of five times faster on all the test proteins in this database. There are also some real-world instances that TreePack can solve but that SCWRL 3.0 cannot. The TreePack program is available at http://ttic.uchicago.edu/∼jinbo/TreePack.htm. [ABSTRACT FROM AUTHOR]

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