Abstract
The prediction of the correct β-sheet topology for pure βand mixed α/βproteins is a critical intermediate step toward the three dimensional protein structure prediction. The predicted beta sheet topology provides distance constraints between sequentially separated residues, which reduces the three dimensional search space for a protein structure prediction algorithm. Here, we present a novel mixed integer linear optimization based framework for the prediction of β-sheet topology in β and mixed β/α proteins. The objective is to maximize the total strand-to-strand contact potential of the protein. A large number of physical constraints are applied to provide biologically meaningful topology results. The formulation permits the creation of a rank-ordered list of preferred β-sheet arrangements. Finally, the generated topologies are re-ranked using a fully atomistic approach involving torsion angle dynamics and clustering. For a large, non-redundant data set of 2102 β and mixed α/β proteins with at least 3 strands taken from the PDB, the proposed approach provides the top 5 solutions with average precision and recall greater than 78%. Consistent results are obtained in the β-sheet topology prediction for blind targets provided during the CASP8 and CASP9 experiments, as well as for actual and predicted secondary structures. The β-sheet topology prediction algorithm, BeST, is available to the scientific community http://www.w3.org/1999/xlink>http://selene.princeton.edu/BeST/. © 2012 Subramani and Floudas.
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CITATION STYLE
Subramani, A., & Floudas, C. A. (2012). Β-sheet topology prediction with high precision and recall for β and mixed α/β proteins. PLoS ONE, 7(3). https://doi.org/10.1371/journal.pone.0032461
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