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Computational design of thermostabilizing point mutations for G protein-coupled receptors.


ABSTRACT: Engineering of GPCR constructs with improved thermostability is a key for successful structural and biochemical studies of this transmembrane protein family, targeted by 40% of all therapeutic drugs. Here we introduce a comprehensive computational approach to effective prediction of stabilizing mutations in GPCRs, named CompoMug, which employs sequence-based analysis, structural information, and a derived machine learning predictor. Tested experimentally on the serotonin 5-HT2C receptor target, CompoMug predictions resulted in 10 new stabilizing mutations, with an apparent thermostability gain ~8.8°C for the best single mutation and ~13°C for a triple mutant. Binding of antagonists confers further stabilization for the triple mutant receptor, with total gains of ~21°C as compared to wild type apo 5-HT2C. The predicted mutations enabled crystallization and structure determination for the 5-HT2C receptor complexes in inactive and active-like states. While CompoMug already shows high 25% hit rate and utility in GPCR structural studies, further improvements are expected with accumulation of structural and mutation data.

SUBMITTER: Popov P 

PROVIDER: S-EPMC6013254 | biostudies-literature | 2018 Jun

REPOSITORIES: biostudies-literature

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Computational design of thermostabilizing point mutations for G protein-coupled receptors.

Popov Petr P   Peng Yao Y   Shen Ling L   Stevens Raymond C RC   Cherezov Vadim V   Liu Zhi-Jie ZJ   Katritch Vsevolod V  

eLife 20180621


Engineering of GPCR constructs with improved thermostability is a key for successful structural and biochemical studies of this transmembrane protein family, targeted by 40% of all therapeutic drugs. Here we introduce a comprehensive computational approach to effective prediction of stabilizing mutations in GPCRs, named CompoMug, which employs sequence-based analysis, structural information, and a derived machine learning predictor. Tested experimentally on the serotonin 5-HT<sub>2C</sub> recept  ...[more]

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