A lipophilicity-based energy function for membrane-protein modelling and design.
Membrane-protein design is an exciting and increasingly successful research area which has led to landmarks including the design of stable and accurate membrane-integral proteins based on coiled-coil motifs. Design of topologically more complex proteins, such as most receptors, channels, and transpo...
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doaj-45dd9649e0bc4cb68d274d20c7be74e12021-04-21T15:10:23ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582019-08-01158e100731810.1371/journal.pcbi.1007318A lipophilicity-based energy function for membrane-protein modelling and design.Jonathan Yaacov WeinsteinAssaf ElazarSarel Jacob FleishmanMembrane-protein design is an exciting and increasingly successful research area which has led to landmarks including the design of stable and accurate membrane-integral proteins based on coiled-coil motifs. Design of topologically more complex proteins, such as most receptors, channels, and transporters, however, demands an energy function that balances contributions from intra-protein contacts and protein-membrane interactions. Recent advances in water-soluble all-atom energy functions have increased the accuracy in structure-prediction benchmarks. The plasma membrane, however, imposes different physical constraints on protein solvation. To understand these constraints, we recently developed a high-throughput experimental screen, called dsTβL, and inferred apparent insertion energies for each amino acid at dozens of positions across the bacterial plasma membrane. Here, we express these profiles as lipophilicity energy terms in Rosetta and demonstrate that the new energy function outperforms previous ones in modelling and design benchmarks. Rosetta ab initio simulations starting from an extended chain recapitulate two-thirds of the experimentally determined structures of membrane-spanning homo-oligomers with <2.5Å root-mean-square deviation within the top-predicted five models (available online: http://tmhop.weizmann.ac.il). Furthermore, in two sequence-design benchmarks, the energy function improves discrimination of stabilizing point mutations and recapitulates natural membrane-protein sequences of known structure, thereby recommending this new energy function for membrane-protein modelling and design.https://doi.org/10.1371/journal.pcbi.1007318 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jonathan Yaacov Weinstein Assaf Elazar Sarel Jacob Fleishman |
spellingShingle |
Jonathan Yaacov Weinstein Assaf Elazar Sarel Jacob Fleishman A lipophilicity-based energy function for membrane-protein modelling and design. PLoS Computational Biology |
author_facet |
Jonathan Yaacov Weinstein Assaf Elazar Sarel Jacob Fleishman |
author_sort |
Jonathan Yaacov Weinstein |
title |
A lipophilicity-based energy function for membrane-protein modelling and design. |
title_short |
A lipophilicity-based energy function for membrane-protein modelling and design. |
title_full |
A lipophilicity-based energy function for membrane-protein modelling and design. |
title_fullStr |
A lipophilicity-based energy function for membrane-protein modelling and design. |
title_full_unstemmed |
A lipophilicity-based energy function for membrane-protein modelling and design. |
title_sort |
lipophilicity-based energy function for membrane-protein modelling and design. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS Computational Biology |
issn |
1553-734X 1553-7358 |
publishDate |
2019-08-01 |
description |
Membrane-protein design is an exciting and increasingly successful research area which has led to landmarks including the design of stable and accurate membrane-integral proteins based on coiled-coil motifs. Design of topologically more complex proteins, such as most receptors, channels, and transporters, however, demands an energy function that balances contributions from intra-protein contacts and protein-membrane interactions. Recent advances in water-soluble all-atom energy functions have increased the accuracy in structure-prediction benchmarks. The plasma membrane, however, imposes different physical constraints on protein solvation. To understand these constraints, we recently developed a high-throughput experimental screen, called dsTβL, and inferred apparent insertion energies for each amino acid at dozens of positions across the bacterial plasma membrane. Here, we express these profiles as lipophilicity energy terms in Rosetta and demonstrate that the new energy function outperforms previous ones in modelling and design benchmarks. Rosetta ab initio simulations starting from an extended chain recapitulate two-thirds of the experimentally determined structures of membrane-spanning homo-oligomers with <2.5Å root-mean-square deviation within the top-predicted five models (available online: http://tmhop.weizmann.ac.il). Furthermore, in two sequence-design benchmarks, the energy function improves discrimination of stabilizing point mutations and recapitulates natural membrane-protein sequences of known structure, thereby recommending this new energy function for membrane-protein modelling and design. |
url |
https://doi.org/10.1371/journal.pcbi.1007318 |
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