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Design of self-assembling transmembrane helical bundles to elucidate principles required for membrane protein folding and ion transport.


ABSTRACT: Ion transporters and channels are able to identify and act on specific substrates among myriads of ions and molecules critical to cellular processes, such as homeostasis, cell signalling, nutrient influx and drug efflux. Recently, we designed Rocker, a minimalist model for Zn2+/H+ co-transport. The success of this effort suggests that de novo membrane protein design has now come of age so as to serve a key approach towards probing the determinants of membrane protein folding, assembly and function. Here, we review general principles that can be used to design membrane proteins, with particular reference to helical assemblies with transport function. We also provide new functional and NMR data that probe the dynamic mechanism of conduction through Rocker.This article is part of the themed issue 'Membrane pores: from structure and assembly, to medicine and technology'.

SUBMITTER: Joh NH 

PROVIDER: S-EPMC5483517 | biostudies-literature | 2017 Aug

REPOSITORIES: biostudies-literature

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Design of self-assembling transmembrane helical bundles to elucidate principles required for membrane protein folding and ion transport.

Joh Nathan H NH   Grigoryan Gevorg G   Wu Yibing Y   DeGrado William F WF  

Philosophical transactions of the Royal Society of London. Series B, Biological sciences 20170801 1726


Ion transporters and channels are able to identify and act on specific substrates among myriads of ions and molecules critical to cellular processes, such as homeostasis, cell signalling, nutrient influx and drug efflux. Recently, we designed Rocker, a minimalist model for Zn<sup>2+</sup>/H<sup>+</sup> co-transport. The success of this effort suggests that <i>de novo</i> membrane protein design has now come of age so as to serve a key approach towards probing the determinants of membrane protein  ...[more]

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