| Literature DB >> 26613047 |
Ryan Bradley1, Ravi Radhakrishnan2.
Abstract
The physiological properties of biological soft matter are the product of collective interactions, which span many time and length scales. Recent computational modeling efforts have helped illuminate experiments that characterize the ways in which proteins modulate membrane physics. Linking these models across time and length scales in a multiscale model explains how atomistic information propagates to larger scales. This paper reviews continuum modeling and coarse-grained molecular dynamics methods, which connect atomistic simulations and single-molecule experiments with the observed microscopic or mesoscale properties of soft-matter systems essential to our understanding of cells, particularly those involved in sculpting and remodeling cell membranes.Entities:
Keywords: coarse-grained model; membrane proteins; molecular dynamics
Year: 2013 PMID: 26613047 PMCID: PMC4656979 DOI: 10.3390/polym5030890
Source DB: PubMed Journal: Polymers (Basel) ISSN: 2073-4360 Impact factor: 4.329
Figure 1Diagram of computational methods for studying biophysical systems across a range of time- and length-scales. Representative snapshots depict an all-atom lipid bilayer, peptides embedded in a coarse-grained bilayer and proteins remodeling a continuum mechanics membrane model. Bilayers were simulated with the CHARMM36 [15] and Martini [16] force fields and rendered with Visual Molecular Dynamics [17].
Figure 2Representative snapshots of all-atom (upper right) and Martini coarse-grained (bottom) molecular dynamics simulations of a 4:1 dioleoylphosphatidylcholine with dioleoylphospatidylserine (DOPC/DOPS) bilayer. The upper left shows the coarse-grained mapping of a single DOPC lipid, with beads colored by bead type (gray for hydrocarbons-, pink for glycerol-, brown for phosphate- and blue for choline-type). The all-atom system contains 800 lipids, while the coarse-grained system contains 3,200 lipids (water molecules are not pictured here). Bilayers were simulated with the CHARMM36 [15] and Martini [16] force fields and rendered with Visual Molecular Dynamics [17].
Summary of key modeling calculations and target data for representative coarse-grained models discussed in Sections 2.2 –2.4. This list is not exhaustive, however, and these models reproduce a wide range of experimental data.
| Model | Key Methods | Key Target Data |
|---|---|---|
| CMM-CG [ | structure matching, energy matching, Boltzmann inversion, reverse Monte Carlo | density distributions, interfacial tension, area per lipid, bending modulus, area compressibility modulus, lipid order parameters |
| MS-CG [ | bottom-up force matching, variational optimization, cubic spline basis functions, hybrid analytic-systematic coarse-graining, screened electrostatics | atomistic site-to-site radial distribution functions, density distributions, bending modulus, area compressibility modulus, lipid diffusion rates |
| Martini [ | top-down energy matching, potential of mean force between phases, bilayer stress profile, free energy of lipid desorption or flip-flop, short-range electrostatics | free energy of hydration, free energy of vaporization, partitioning free energies, surface tension, interfacial tension, density distributions, bending modulus, area per lipid |
Summary of corresponding experimental methods and simulation measurements which may be used match key physical properties of soft matter systems. GUV, giant unilamellar vesicle.
| Property | Experimental Method | Simulation Measurement |
|---|---|---|
| partition coefficient | titration calorimetry | potential of mean force of a particle pulled between phases |
| self-diffusion coefficient | magnetic resonance spin echo | mean-squared displacement |
| electron density profile | X-ray scattering | electron density |
| area per lipid | neutron scattering | area measurement (bilayer mid-plane) |
| lipid order parameter | nuclear magnetic resonance (NMR) | lipid tail angles to the bilayer normal |
| phase transition temperature | cryo-transmission electron microscopy (cryo-TEM) | structure factor |
| pressure-area isotherm | Langmuir trough, captive bubble surfactometer | pressure tensor, area measurement |
| line tension | fluorescence microscopy of GUVs, micropipette aspiration | pressure tensor height-height fluctuation |
| bending rigidity | video phase contrast microscopy, GUV shear flow | spectrum |
Figure 3Coarse-grained representation of the Martini model extension to amino acids [181], colored by bead type (where purple is apolar, blue and green are intermediate, gray and orange are polar and red represents charged particles).
Figure 4An example protein helix in all-atom (left) and Martini coarse-grained representations (center, backbone beads in gray and side-chain beads in yellow) with both images merged (right) to show how the fine-grained structure is mapped onto the coarse-grained beads. This image was rendered with Visual Molecular Dynamics [17].
Figure 5Simulations of six Bin/Amphiphysin/Rvs (BAR) domains remodeling a membrane. These simulations show that the proteins require a staggered arrangement (right) to bend the membrane, while the non-staggered arrangement (left) fails to generate curvature. Figure adapted from Arkhipov, et al. [105].