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Department of Mechanical Engineering

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1 Department of Mechanical Engineering
Bioinformatics: Practical Application of Simulation and Data Mining Protein Folding II Prof. Corey O’Hern Department of Mechanical Engineering Department of Physics Yale University

2 What did we learn about proteins?
Many degrees of freedom; exponentially growing # of energy minima/structures Folding is process of exploring energy landscape to find global energy minimum Need to identify pathways in energy landscape; # of pathways grows exponentially with # of structures Coarse-graining/clumping required energy minimum transition Transitions are temperature dependent

3 Coarse-grained (continuum, implicit solvent, C) models for proteins
J. D. Honeycutt and D. Thirumalai, “The nature of folded states of globular proteins,” Biopolymers 32 (1992) 695. T. Veitshans, D. Klimov, and D. Thirumalai, “Protein folding kinetics: timescales, pathways and energy landscapes in terms of sequence-dependent properties,” Folding & Design 2 (1996)1.

4 3-letter C model: B9N3(LB)4N3B9N3(LB)5L
B=hydrophobic N=neutral L=hydrophilic Number of sequences for Nm=46 Nsequences= ~ 1022 Number of structures per sequence Np ~ exp(aNm)~1019

5 and dynamics different mapping?

6 Molecular Dynamics: Equations of Motion
Coupled 2nd order Diff. Eq. How are they coupled? for i=1,…Natoms

7 (iv) Bond length potential

8 Pair Forces: Lennard-Jones Interactions
Parallelogram rule force on i due to j -dV/drij > 0; repulsive -dV/drij < 0; attractive

9 ‘Long-range interactions’
BB LL, LB NB, NL, NN V(r) hard-core attractions -dV/dr < 0 r*=21/6 r/

10 Bond Angle Potential 0=105 ijk k i j ijk=[0,]

11 Dihedral Angle Potential
Vd(ijkl) Successive N’s Vd(ijkl) ijkl

12 Bond Stretch Potential
for i, j=i+1, i-1 i j

13 Equations of Motion Constant Energy vs. Constant Temperature
velocity verlet algorithm Constant Energy vs. Constant Temperature (velocity rescaling, Langevin/Nosé-Hoover thermostats)

14 T0=5h; fast quench; (Rg/)2= 5.48
Collapsed Structure T0=5h; fast quench; (Rg/)2= 5.48

15 T0=h; slow quench; (Rg/)2= 7.78
Native State T0=h; slow quench; (Rg/)2= 7.78

16

17 start end

18 Total Potential Energy
native states

19 Radius of Gyration unfolded Tf native state slow quench

20 2-letter C model: (BN3)3B
(1) Construct the backbone in 2D N B (2) Assign sequence of hydrophobic (B) and neutral (N) residues, B residues experience an effective attraction. No bond bending potential. (3) Evolve system under Langevin dynamics at temperature T. (4) Collapse/folding induced by decreasing temperature at rate r.

21

22 Energy Landscape E/C E/C end-to-end distance end-to-end distance
5 contacts 4 contacts 3 contacts

23 Rate Dependence 2 contacts 3 contacts 4 contacts 5 contacts

24 Misfolding

25 Reliable Folding at Low Rate

26 Slow rate

27 Fast rate

28 So far… Uh-oh, proteins do not fold reliably… Quench rates and potentials Next… Thermostats…Yuck! More results on coarse-grained models Results for atomistic models Homework Next Lecture: Protein Folding III (2/15/10)


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