Probability Seminar
Department of Mathematical Sciences |
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Michael Mascagni Florida State University
Title: Novel Stochastic Methods in Biochemical Electrostatics
Abstract:
Electrostatic forces and the electrostatic properties of molecules in
solution are among the most important issues in understanding the
structure and function of large biomolecules. The use of
implicit-solvent models, such as the Poisson-Boltzmann equation (PBE),
have been used with great success as a way of computationally deriving
electrostatics properties such molecules. We discuss how to solve an
elliptic system of partial differential equations (PDEs) involving the
Poisson and the PBEs using path-integral based probabilistic,
Feynman-Kac, representations. This leads to a Monte Carlo method for
the solution of this system which is specified with a stochastic
process, and a score function. We use several techniques to simplify
the Monte Carlo method and the stochastic process used in the
simulation, such as the walk-on-spheres (WOS) algorithm, and an
auxiliary sphere technique to handle internal boundary conditions. We
then specify some optimizations using the error (bias) and variance to
balance the CPU time. We show that our approach is as accurate as
widely used deterministic codes, but has many desirable properties that
these methods do not. In addition, the currently optimized codes
consume comparable CPU times to the widely used deterministic codes.
Thus, we have an very clear example where a Monte Carlo calculation of a
low-dimensional PDE is as fast or faster than deterministic techniques
at similar accuracy levels.
©2010, Department of Mathematical Sciences
Last Modified:
February 26, 2009