Literature DB >> 36198791

NMR-guided directed evolution.

Eleonora G Margheritis1, Katsuya Takahashi1, Alona Kulesha2, Sagar Bhattacharya2, Areetha D'Souza2, Inhye Kim2, Jennifer H Yoon2, Jeremy R H Tame1, Alexander N Volkov3,4, Olga V Makhlynets5, Ivan V Korendovych6.   

Abstract

Directed evolution is a powerful tool for improving existing properties and imparting completely new functionalities to proteins1-4. Nonetheless, its potential in even small proteins is inherently limited by the astronomical number of possible amino acid sequences. Sampling the complete sequence space of a 100-residue protein would require testing of 20100 combinations, which is beyond any existing experimental approach. In practice, selective modification of relatively few residues is sufficient for efficient improvement, functional enhancement and repurposing of existing proteins5. Moreover, computational methods have been developed to predict the locations and, in certain cases, identities of potentially productive mutations6-9. Importantly, all current approaches for prediction of hot spots and productive mutations rely heavily on structural information and/or bioinformatics, which is not always available for proteins of interest. Moreover, they offer a limited ability to identify beneficial mutations far from the active site, even though such changes may markedly improve the catalytic properties of an enzyme10. Machine learning methods have recently showed promise in predicting productive mutations11, but they frequently require large, high-quality training datasets, which are difficult to obtain in directed evolution experiments. Here we show that mutagenic hot spots in enzymes can be identified using NMR spectroscopy. In a proof-of-concept study, we converted myoglobin, a non-enzymatic oxygen storage protein, into a highly efficient Kemp eliminase using only three mutations. The observed levels of catalytic efficiency exceed those of proteins designed using current approaches and are similar with those of natural enzymes for the reactions that they are evolved to catalyse. Given the simplicity of this experimental approach, which requires no a priori structural or bioinformatic knowledge, we expect it to be widely applicable and to enable the full potential of directed enzyme evolution.
© 2022. The Author(s), under exclusive licence to Springer Nature Limited.

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Year:  2022        PMID: 36198791     DOI: 10.1038/s41586-022-05278-9

Source DB:  PubMed          Journal:  Nature        ISSN: 0028-0836            Impact factor:   69.504


  40 in total

1.  Directed Evolution of an Enantioselective Enzyme through Combinatorial Multiple-Cassette Mutagenesis.

Authors:  Manfred T. Reetz; Stephanie Wilensek; Dongxing Zha; Karl-Erich Jaeger
Journal:  Angew Chem Int Ed Engl       Date:  2001-10-01       Impact factor: 15.336

Review 2.  Laboratory evolution of stereoselective enzymes: a prolific source of catalysts for asymmetric reactions.

Authors:  Manfred T Reetz
Journal:  Angew Chem Int Ed Engl       Date:  2011-01-03       Impact factor: 15.336

Review 3.  Engineering the third wave of biocatalysis.

Authors:  U T Bornscheuer; G W Huisman; R J Kazlauskas; S Lutz; J C Moore; K Robins
Journal:  Nature       Date:  2012-05-09       Impact factor: 49.962

Review 4.  Improving and repurposing biocatalysts via directed evolution.

Authors:  Carl A Denard; Hengqian Ren; Huimin Zhao
Journal:  Curr Opin Chem Biol       Date:  2015-01-08       Impact factor: 8.822

Review 5.  Computational design of enzymes for biotechnological applications.

Authors:  Joan Planas-Iglesias; Sérgio M Marques; Gaspar P Pinto; Milos Musil; Jan Stourac; Jiri Damborsky; David Bednar
Journal:  Biotechnol Adv       Date:  2021-01-26       Impact factor: 14.227

Review 6.  Computational tools for enzyme improvement: why everyone can - and should - use them.

Authors:  Maximilian Ccjc Ebert; Joelle N Pelletier
Journal:  Curr Opin Chem Biol       Date:  2017-02-21       Impact factor: 8.822

Review 7.  Structure- and sequence-analysis inspired engineering of proteins for enhanced thermostability.

Authors:  Hein J Wijma; Robert J Floor; Dick B Janssen
Journal:  Curr Opin Struct Biol       Date:  2013-05-15       Impact factor: 6.809

8.  Machine learning-assisted directed protein evolution with combinatorial libraries.

Authors:  Zachary Wu; S B Jennifer Kan; Russell D Lewis; Bruce J Wittmann; Frances H Arnold
Journal:  Proc Natl Acad Sci U S A       Date:  2019-04-12       Impact factor: 11.205

Review 9.  Computer-Aided Protein Directed Evolution: a Review of Web Servers, Databases and other Computational Tools for Protein Engineering.

Authors:  Rajni Verma; Ulrich Schwaneberg; Danilo Roccatano
Journal:  Comput Struct Biotechnol J       Date:  2012-10-22       Impact factor: 7.271

10.  Pervasive cooperative mutational effects on multiple catalytic enzyme traits emerge via long-range conformational dynamics.

Authors:  Carlos G Acevedo-Rocha; Aitao Li; Lorenzo D'Amore; Sabrina Hoebenreich; Joaquin Sanchis; Paul Lubrano; Matteo P Ferla; Marc Garcia-Borràs; Sílvia Osuna; Manfred T Reetz
Journal:  Nat Commun       Date:  2021-03-12       Impact factor: 14.919

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