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Predicting the viability of beta-lactamase: How folding and binding free energies correlate with beta-lactamase fitness

One of the long-standing holy grails of molecular evolution has been the ability to predict an organism’s fitness directly from its genotype. With such predictive abilities in hand, researchers would be able to more accurately forecast how organisms will evolve and how proteins with novel functions...

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Autores principales: Yang, Jordan, Naik, Nandita, Patel, Jagdish Suresh, Wylie, Christopher S., Gu, Wenze, Huang, Jessie, Ytreberg, F. Marty, Naik, Mandar T., Weinreich, Daniel M., Rubenstein, Brenda M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7259980/
https://www.ncbi.nlm.nih.gov/pubmed/32470971
http://dx.doi.org/10.1371/journal.pone.0233509
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author Yang, Jordan
Naik, Nandita
Patel, Jagdish Suresh
Wylie, Christopher S.
Gu, Wenze
Huang, Jessie
Ytreberg, F. Marty
Naik, Mandar T.
Weinreich, Daniel M.
Rubenstein, Brenda M.
author_facet Yang, Jordan
Naik, Nandita
Patel, Jagdish Suresh
Wylie, Christopher S.
Gu, Wenze
Huang, Jessie
Ytreberg, F. Marty
Naik, Mandar T.
Weinreich, Daniel M.
Rubenstein, Brenda M.
author_sort Yang, Jordan
collection PubMed
description One of the long-standing holy grails of molecular evolution has been the ability to predict an organism’s fitness directly from its genotype. With such predictive abilities in hand, researchers would be able to more accurately forecast how organisms will evolve and how proteins with novel functions could be engineered, leading to revolutionary advances in medicine and biotechnology. In this work, we assemble the largest reported set of experimental TEM-1 β-lactamase folding free energies and use this data in conjunction with previously acquired fitness data and computational free energy predictions to determine how much of the fitness of β-lactamase can be directly predicted by thermodynamic folding and binding free energies. We focus upon β-lactamase because of its long history as a model enzyme and its central role in antibiotic resistance. Based upon a set of 21 β-lactamase single and double mutants expressly designed to influence protein folding, we first demonstrate that modeling software designed to compute folding free energies such as FoldX and PyRosetta can meaningfully, although not perfectly, predict the experimental folding free energies of single mutants. Interestingly, while these techniques also yield sensible double mutant free energies, we show that they do so for the wrong physical reasons. We then go on to assess how well both experimental and computational folding free energies explain single mutant fitness. We find that folding free energies account for, at most, 24% of the variance in β-lactamase fitness values according to linear models and, somewhat surprisingly, complementing folding free energies with computationally-predicted binding free energies of residues near the active site only increases the folding-only figure by a few percent. This strongly suggests that the majority of β-lactamase’s fitness is controlled by factors other than free energies. Overall, our results shed a bright light on to what extent the community is justified in using thermodynamic measures to infer protein fitness as well as how applicable modern computational techniques for predicting free energies will be to the large data sets of multiply-mutated proteins forthcoming.
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spelling pubmed-72599802020-06-09 Predicting the viability of beta-lactamase: How folding and binding free energies correlate with beta-lactamase fitness Yang, Jordan Naik, Nandita Patel, Jagdish Suresh Wylie, Christopher S. Gu, Wenze Huang, Jessie Ytreberg, F. Marty Naik, Mandar T. Weinreich, Daniel M. Rubenstein, Brenda M. PLoS One Research Article One of the long-standing holy grails of molecular evolution has been the ability to predict an organism’s fitness directly from its genotype. With such predictive abilities in hand, researchers would be able to more accurately forecast how organisms will evolve and how proteins with novel functions could be engineered, leading to revolutionary advances in medicine and biotechnology. In this work, we assemble the largest reported set of experimental TEM-1 β-lactamase folding free energies and use this data in conjunction with previously acquired fitness data and computational free energy predictions to determine how much of the fitness of β-lactamase can be directly predicted by thermodynamic folding and binding free energies. We focus upon β-lactamase because of its long history as a model enzyme and its central role in antibiotic resistance. Based upon a set of 21 β-lactamase single and double mutants expressly designed to influence protein folding, we first demonstrate that modeling software designed to compute folding free energies such as FoldX and PyRosetta can meaningfully, although not perfectly, predict the experimental folding free energies of single mutants. Interestingly, while these techniques also yield sensible double mutant free energies, we show that they do so for the wrong physical reasons. We then go on to assess how well both experimental and computational folding free energies explain single mutant fitness. We find that folding free energies account for, at most, 24% of the variance in β-lactamase fitness values according to linear models and, somewhat surprisingly, complementing folding free energies with computationally-predicted binding free energies of residues near the active site only increases the folding-only figure by a few percent. This strongly suggests that the majority of β-lactamase’s fitness is controlled by factors other than free energies. Overall, our results shed a bright light on to what extent the community is justified in using thermodynamic measures to infer protein fitness as well as how applicable modern computational techniques for predicting free energies will be to the large data sets of multiply-mutated proteins forthcoming. Public Library of Science 2020-05-29 /pmc/articles/PMC7259980/ /pubmed/32470971 http://dx.doi.org/10.1371/journal.pone.0233509 Text en © 2020 Yang et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Yang, Jordan
Naik, Nandita
Patel, Jagdish Suresh
Wylie, Christopher S.
Gu, Wenze
Huang, Jessie
Ytreberg, F. Marty
Naik, Mandar T.
Weinreich, Daniel M.
Rubenstein, Brenda M.
Predicting the viability of beta-lactamase: How folding and binding free energies correlate with beta-lactamase fitness
title Predicting the viability of beta-lactamase: How folding and binding free energies correlate with beta-lactamase fitness
title_full Predicting the viability of beta-lactamase: How folding and binding free energies correlate with beta-lactamase fitness
title_fullStr Predicting the viability of beta-lactamase: How folding and binding free energies correlate with beta-lactamase fitness
title_full_unstemmed Predicting the viability of beta-lactamase: How folding and binding free energies correlate with beta-lactamase fitness
title_short Predicting the viability of beta-lactamase: How folding and binding free energies correlate with beta-lactamase fitness
title_sort predicting the viability of beta-lactamase: how folding and binding free energies correlate with beta-lactamase fitness
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7259980/
https://www.ncbi.nlm.nih.gov/pubmed/32470971
http://dx.doi.org/10.1371/journal.pone.0233509
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