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Coarse grained molecular dynamics simulations of transmembrane protein-lipid systems.


ABSTRACT: Many biological cellular processes occur at the micro- or millisecond time scale. With traditional all-atom molecular modeling techniques it is difficult to investigate the dynamics of long time scales or large systems, such as protein aggregation or activation. Coarse graining (CG) can be used to reduce the number of degrees of freedom in such a system, and reduce the computational complexity. In this paper the first version of a coarse grained model for transmembrane proteins is presented. This model differs from other coarse grained protein models due to the introduction of a novel angle potential as well as a hydrogen bonding potential. These new potentials are used to stabilize the backbone. The model has been validated by investigating the adaptation of the hydrophobic mismatch induced by the insertion of WALP-peptides into a lipid membrane, showing that the first step in the adaptation is an increase in the membrane thickness, followed by a tilting of the peptide.

SUBMITTER: Spijker P 

PROVIDER: S-EPMC2904924 | biostudies-literature | 2010

REPOSITORIES: biostudies-literature

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Coarse grained molecular dynamics simulations of transmembrane protein-lipid systems.

Spijker Peter P   van Hoof Bram B   Debertrand Michel M   Markvoort Albert J AJ   Vaidehi Nagarajan N   Hilbers Peter A J PA  

International journal of molecular sciences 20100609 6


Many biological cellular processes occur at the micro- or millisecond time scale. With traditional all-atom molecular modeling techniques it is difficult to investigate the dynamics of long time scales or large systems, such as protein aggregation or activation. Coarse graining (CG) can be used to reduce the number of degrees of freedom in such a system, and reduce the computational complexity. In this paper the first version of a coarse grained model for transmembrane proteins is presented. Thi  ...[more]

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