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Energy landscape underlying spontaneous insertion and folding of an alpha-helical transmembrane protein into a bilayer.


ABSTRACT: Membrane protein folding mechanisms and rates are notoriously hard to determine. A recent force spectroscopy study of the folding of an ?-helical membrane protein, GlpG, showed that the folded state has a very high kinetic stability and a relatively low thermodynamic stability. Here, we simulate the spontaneous insertion and folding of GlpG into a bilayer. An energy landscape analysis of the simulations suggests that GlpG folds via sequential insertion of helical hairpins. The rate-limiting step involves simultaneous insertion and folding of the final helical hairpin. The striking features of GlpG's experimentally measured landscape can therefore be explained by a partially inserted metastable state, which leads us to a reinterpretation of the rates measured by force spectroscopy. Our results are consistent with the helical hairpin hypothesis but call into question the two-stage model of membrane protein folding as a general description of folding mechanisms in the presence of bilayers.

SUBMITTER: Lu W 

PROVIDER: S-EPMC6251876 | biostudies-literature | 2018 Nov

REPOSITORIES: biostudies-literature

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Energy landscape underlying spontaneous insertion and folding of an alpha-helical transmembrane protein into a bilayer.

Lu Wei W   Schafer Nicholas P NP   Wolynes Peter G PG  

Nature communications 20181123 1


Membrane protein folding mechanisms and rates are notoriously hard to determine. A recent force spectroscopy study of the folding of an α-helical membrane protein, GlpG, showed that the folded state has a very high kinetic stability and a relatively low thermodynamic stability. Here, we simulate the spontaneous insertion and folding of GlpG into a bilayer. An energy landscape analysis of the simulations suggests that GlpG folds via sequential insertion of helical hairpins. The rate-limiting step  ...[more]

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