Iterative convex quadratic approximation for global optimization in protein docking

Iterative convex quadratic approximation for global optimization in protein docking

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Article ID: iaor2006488
Country: United Kingdom
Volume: 32
Issue: 3
Start Page Number: 285
End Page Number: 297
Publication Date: Dec 2005
Journal: Computational Optimization and Applications
Authors: , ,
Keywords: programming: nonlinear
Abstract:

An algorithm for finding an approximate global minimum of a funnel shaped function with many local minima is described. It is applied to compute the minimum energy docking position of a ligand with respect to a protein molecule. The method is based on the iterative use of a convex, general quadratic approximation that underestimates a set of local minima, where the error in the approximation is minimized in the L1 norm. The quadratic approximation is used to generate a reduced domain, which is assumed to contain the global minimum of the funnel shaped function. Additional local minima are computed in this reduced domain, and an improved approximation is computed. This process is iterated until a convergence tolerance is satisfied. The algorithm has been applied to find the global minimum of the energy function generated by the Docking Mesh Evaluator program. Results for three different protein docking examples are presented. Each of these energy functions has thousands of local minima. Convergence of the algorithm to an approximate global minimum is shown for all three examples.

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