2006 AIChE Annual Meeting
(695a) Coarse MD Exploration of Effective Free Energy Landscape for Alanine-Dipeptide in Water
Authors
Good coarse observables have been proposed for the Alanine Dipeptide system, namely dihedral angles along the backbone of the protein molecule. We first consider reverse ring integration on the low-dimensional landscape parameterized by these coarse observables. A number of distinct "modes" of ring evolution are derived using different transformations of the independent variable in the basic ring evolution equation. The evolving positions of ring replicas during reverse integration constitute new "simulation protocols". Each integration step consists of an initialization where detailed configurations consistent with the coarse observables at the ring nodes are prepared using constrained dynamics followed by a short forward replica burst of MD. Data processing of these MD trajectories (using techniques such as Maximum Likelihood Estimation) provides estimates of coarse gradients along the ring; estimation of tangent vectors along the ring is also required to decompose the gradient vector into components parallel and perpendicular to the ring. Our approach allows rapid escape from local energy wells with detection of neighboring transition states (saddle points). We also present strategies for saddle point escape that facilitate transition between wells using ring integration.
Parameterization of a low-dimensional energy landscape is extremely difficult for systems where experience and intuition do not suggest a suitable set of reaction coordinates. We use a recently developed computional machinery that allows for identification of low-dimensional manifolds possibly underlying high-dimensional data. In this diffusion map approach, MD simulation data points are treated as nodes on a weighted graph with edge weights defined by a matrix of pairwise affinities between points (a "kernel"). Appropriate kernel normalization produces a Markov matrix the eigenvectors and eigenvalues of which provide meaningful information on the dataset geometry. The dimensionality reduction approach is used here to process molecular configurations generated during an MD trajectory to generate "on-the-fly" reaction coordinates. Reverse ring integration in these coordinates is illustrated and represents a promising approach to landscape exploration for systems where the reaction coordinates are unknown. This work is in collaboration with Prof. R. Coifman and M. Maggioni at Yale University.