Deca-Alanine Stretching

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Presentation transcript:

Deca-Alanine Stretching Free Energy Calculation from Steered Molecular Dynamics Simulations Using Jarzynski’s Eqaulity Sanghyun Park May, 2002

Jarzynski’s Equality T T  = f  = i  = (t) heat Q work W  = end-to-end distance, position of substrate along a channel, etc. 2nd law of thermodynamics: W  F = F(f) - F(i) Jarzynski (1997):  exp (-W)  = exp (-F) difficult to estimate

Derivation of Jarzynski’s Equality Process described by a time-dependent Hamiltonian H(x,t) External work W = 0 dt tH (xt,t) Trajectory xt If the process is Markovian: tf(x,t) = L(x,t) f(x,t) satisfies the balance condition: L(x,t) exp[-H(x,t)] = 0 Then, exp { - [ F() - F(0) ] } =  exp (-W)  Isothermal MD schemes (Nose-Hoover, Langevin, …) satisfies the conditions (1) and (2).

Cumulant Expansion of Jarzynski’s Equality F = - (1/) log e-W = W - (/2) ( W2 - W2 ) + (2/6) ( W3 - 3W2W + 2W3 ) + ••• statistical error & truncation error p(W) shift  2 / kBT W  p(W) shift/width   / kBT W2  p(W) width  big in strong nonequilibrium W3  p(W) W e-W  p(W)

Helix-Coil Transition of Deca-Alanine in Vacuum Main purpose: Systematic study of the methodology of free energy calculation - Which averaging scheme works best with small number (~10) of trajectories ? Why decaalanine in vacuum? - small, but not too small: 104 atoms - short relaxation time  reversible pulling  exact free energy

Typical Trajectories v = 0.1 Å/ns v = 10 Å/ns v = 100 Å/ns 30 end-to-end distance (Å) 20 10 600 Force (pN) -600 time time time

Reversible Pulling (v = 0.1 Å/ns) F E, F, S (kcal/mol) work W (kcal/mol) TS end-to-end distance (Å) # of hydrogen bonds F = W TS = E - F end-to-end distance (Å)

PMF and Protein Conformations

Irreversible Pulling ( v = 10 Å/ns ) 10 blocks of 10 trajectories Irreversible Pulling ( v = 10 Å/ns ) PMF (kcal/mol) winner PMF (kcal/mol) end-to-end distance (Å) end-to-end distance (Å)

Irreversible Pulling ( v = 100 Å/ns ) 10 blocks of 10 trajectories Irreversible Pulling ( v = 100 Å/ns ) PMF (kcal/mol) winner PMF (kcal/mol) end-to-end distance (Å) end-to-end distance (Å)

Umbrella Sampling w/ WHAM

Weighted Histogram Analysis Method SMD trajectory Biasing potential: Choice of Dt:

Weighted Histogram Analysis Method P0i(x), i = 1,2,…,M: overlapping local distributions P0(x): reconstructed overall distribution Underlying potential: U0(x) = -kBT ln P0(x) To reconstruct P0(x) from P0i(x) (i=1,2,…,M) Ni = number of data points in distribution i, Biasing potential: Us(x,t) = k(x-vt)2 NIH Resource for Macromolecular Modeling and Bioinformatics Theoretical Biophysics Group, Beckman Institute, UIUC

SMD-Jarzynski Umbrella Sampling (equal amount of simulation time) simple analysis uniform sampling of the reaction coordinate coupled nonlinear equations (WHAM) nonuniform sampling of the reaction coordinate

II. Finding Reaction Paths

Typical Applications of Reaction Path Reaction Path - Background Typical Applications of Reaction Path  Chemical reaction  Protein folding  Conformational changes of protein

steepest-descent path Reaction Path - Background Reaction Path steepest-descent path for simple systems complex systems R P ? Reactions are stochastic: Each reaction event takes a different path and a different amount of time.  Identify a representative path, revealing the reaction mechanism.

Reaction Path Based on the Mean-First Passage Time Reaction Path - Accomplishments Reaction Path Based on the Mean-First Passage Time Reaction coordinate r(x): the location of x in the progress of reaction r(x) = MFPT (x) from x to the product MFPT (x)  average over all reaction events reaction path // -

Smoluchowski equation: tp = D(e-U (eU p)) Reaction Path - Accomplishments Brownian Motion on a Potential Surface three-hole potential U(x) -1 -2 -3 -4 R P Smoluchowski equation: tp = D(e-U (eU p))  -D(e-U ) = e-U

Brownian Motion on a Potential Surface Reaction Path - Accomplishments Brownian Motion on a Potential Surface  = 1  = 8

Brownian Motion on a Potential Surface Reaction Path - Accomplishments Brownian Motion on a Potential Surface  = 8   = 1