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A stochastic Molecular Dynamics method for multiscale

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A stochastic Molecular Dynamics method for multiscale modeling of blood platelet phenomena PIs: G.E. Karniadakis, P.D. Richardson, M.R. Maxey Collaborators: Harvard ... – PowerPoint PPT presentation

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Title: A stochastic Molecular Dynamics method for multiscale


1
A stochastic Molecular Dynamics method for
multiscale modeling of blood platelet phenomena
  • PIs G.E. Karniadakis, P.D. Richardson, M.R.
    Maxey
  • Collaborators Harvard Medical School, Imperial
    College, Ben Gurion
  • Arterioles/venules 50 microns

activated platelets
  • Platelet diameter is 2-4 µm
  • Normal platelet concentration in blood is
    300,000/mm3
  • Functions activation, adhesion to injured walls,
    and other platelets
  • Multiscale Simulation of Arterial Tree on TeraGrid

2
Platelet and Fibrin Aggregation
1
2
3
4
3
Creation of Fibrin Threads
  • Fibrinogen consists of three pairs of protein
    chains
  • Prothrombin/thrombin activate fibrinogen
  • Fibrinogen monomers create fibrin threads

4
Objectives
  • Develop new algorithms that will make
    coarse-grained molecular dynamics (MD), and DPD
    in particular, a very effective simulation tool
    for biological flows.
  • Couple DPD-MD at the molecular level (protein
    interactions, scales less than 10 nm), and
    DPD-continuum at the large scales (hybrid 3D/1D
    arterial tree model).
  • Validate simulations of platelet aggregation
    against existing in-vivo and in-vitro experiments
    and quantify uncertainties.
  • Study thrombous formation and migration in the
    circulatory system.
  • Disseminate algorithmic framework for multiscale
    coupling and software to interested parties.
  • Involve undergraduates in this research and
    introduce high-school students to computational
    science and cyber-infrastructure.

5
Computational Methods
  • Force Coupling Method (FCM) (continuum)
  • Dissipative Particle Dynamics (DPD) (mesoscopic)
  • Molecular Dynamics (LAMMPS)

6
Dissipative Particle Dynamics (DPD)
Coarse-Grained MD
  • Momentum-conserving
  • Galilean-invariant
  • Off-lattice
  • Soft-potentials

DPD
  • Conservative
  • Speed-up w.r.t. MD (N mol/DPD)
  • 1000 x N8/3 e.g. N10 500,000 times
  • Dissipative
  • Random
  • Drag coefficient
  • viscosity

7
Intra-Polymer Forces Combinations Of the
Following
  • Lennard-Jones Repulsion
  • Stiff (Fraenkel) / Hookean Spring
  • Finitely-Extensible Non-linear Elastic (FENE)
    Spring

8
Intra-Polymer Forces (continued)
  • Marko-Siggia WormLike Chain

Can be adjusted if Mgt2 (Underhill, Doyle 2004)
Stiff Schlijper, Hoogerbrugge, Manke,
1995 Hookean Lennard-Jones Nikunen, Karttunen,
Vattulainen, 2003 FENE Chen, Phan-Thien, Fan,
Khoo, 2004
9
Radius of Gyration for Polymer Chains
Linear, ideal
Excluded volume, real
Flory Formula
100 beads
50 beads
20 beads
10 beads
5 beads
10
Mixing Soft-Hard Potentials
Motivation for 2 different time-steps (?t,dt)
Symeonidis Karniadakis, J. Comp. Phys., on
line, 2006
Solvent (soft repulsive)
Polymer Lennard-Jones (hard repulsive)
ForrestSuter, (J. Chem. Phys., 1995) idea of
pre-averaging - in the spirit of conservative
forces in DPD solvent
11
DNA Dynamics Shear Flow Wormlike Chain
Sc 35
Sc 690
Sc 2574
Sc 1.4 x G2
kBT0.2
12
FENE Chains in Poiseuille Flow
10 beads H/2Rg3.96
60 beads H/2Rg1.32
Center-of-Mass Distribution From Wall
13
Stochastic Model - First Simulation of Begent
Born Experiment
  • Thrombus growing on a blood vessel wall in vivo
  • Accumulation of platelets in a thrombus
  • Exponential thrombus growth rate coefficients --
    effects of pulsation (right)

14
Effects of Red Blood Cells
  • DPD simulations show exponential growth rate of
    thrombus
  • RBCs increase diffusivity

15
Future Plans
  • Effects of red blood cells (Experiment I, in
    vitro results)
  • Deformation of cells (effect on aggregation
    rates)
  • Model plasma adhesive proteins (vWf, fibrinogen,
    )
  • Simulate diffusion of chemicals (ADP, )
  • Validation against available experimental results
  • Gorogs hemostatometer (in-vitro)
  • Begent Born (in-vivo)

16
References on Dissipative Particle Dynamics
  • E. Keaveny, I. Pivkin, M.R. Maxey and G.E.
    Karniadakis, A comparative study between
    dissipative
  • particle dynamics and molecular dynamics for
    simple- and complex-geometry flows, J. Chemical
    Physics,
  • vol. 123, p. 104107, 2005.
  • I. Pivkin and G.E. Karniadakis, A new method to
    impose no-slip boundary conditions in dissipative
    particle
  • dynamics, J. Computational Phys., vol. 207,
    pp. 114-128, 2005.
  • V. Symeonidis, G.E. Karniadakis and B. Caswell,
    A seamless approach to multiscale complex fluid
    simulation,
  • Computing in Science Engineering, pp. 39-46,
    May/June 2005.
  • V. Symeonidis, G.E. Karniadakis and B. Caswell,
    Dissipative particle dynamics simulations of
    polymer chains
  • Scaling laws and shearing response compared to
    DNA experiments, Phys. Rev. Lett., vol 95,
    076001, 2005.
  • V. Symeonidis G.E. Karniadakis, A family of
    time-staggered schemes for integrating hybrid
    DPD models for
  • polymers Algorithms and applications, J.
    Computational Phys., available on line, 2006.
  • I. Pivkin and G.E. Karniadakis, Coarse-graining
    limits in open and wall-bounded DPD systems, J.
    Chemical
  • Physics, vol 124, 184101, 2006.
  • I. Pivkin and G.E. Karniadakis, Controlling
    density fluctuations in wall-bounded DPD systems,
    Phys. Rev. Lett.,
  • vol 96 (20), 206001, 2006
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