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Generation of Cry11 Variants of Bacillus thuringiensis by Heuristic Computational Modeling

Directed evolution methods mimic in vitro Darwinian evolution, inducing random mutations and selective pressure in genes to obtain proteins with enhanced characteristics. These techniques are developed using trial-and-error testing at an experimental level with a high degree of uncertainty. Therefor...

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Autores principales: Pinzón-Reyes, Efraín Hernando, Sierra-Bueno, Daniel Alfonso, Suarez-Barrera, Miguel Orlando, Rueda-Forero, Nohora Juliana, Abaunza-Villamizar, Sebastián, Rondón-Villareal, Paola
Formato: Online Artículo Texto
Lenguaje:English
Publicado: SAGE Publications 2020
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Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7385851/
https://www.ncbi.nlm.nih.gov/pubmed/32782424
http://dx.doi.org/10.1177/1176934320924681
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author Pinzón-Reyes, Efraín Hernando
Sierra-Bueno, Daniel Alfonso
Suarez-Barrera, Miguel Orlando
Rueda-Forero, Nohora Juliana
Abaunza-Villamizar, Sebastián
Rondón-Villareal, Paola
author_facet Pinzón-Reyes, Efraín Hernando
Sierra-Bueno, Daniel Alfonso
Suarez-Barrera, Miguel Orlando
Rueda-Forero, Nohora Juliana
Abaunza-Villamizar, Sebastián
Rondón-Villareal, Paola
author_sort Pinzón-Reyes, Efraín Hernando
collection PubMed
description Directed evolution methods mimic in vitro Darwinian evolution, inducing random mutations and selective pressure in genes to obtain proteins with enhanced characteristics. These techniques are developed using trial-and-error testing at an experimental level with a high degree of uncertainty. Therefore, in silico modeling of directed evolution is required to support experimental assays. Several in silico approaches have reproduced directed evolution, using statistical, thermodynamic, and kinetic models in an attempt to recreate experimental conditions. Likewise, optimization techniques using heuristic models have been used to understand and find the best scenarios of directed evolution. Our study uses an in silico model named HeurIstics DirecteD EvolutioN, which is based on a genetic algorithm designed to generate chimeric libraries from 2 parental genes, cry11Aa and cry11Ba, of Bacillus thuringiensis. These genes encode crystal-shaped δ-endotoxins with 3 conserved domains. Cry11 toxins are of biotechnological interest because they have shown to be effective as biopesticides for disease-spreading vectors. With our heuristic model, we considered experimental parameters such as DNA fragmentation length, number of generations or simulation cycles, and mutation rate, to get characteristics of Cry11 chimeric libraries such as percentage of population identity, truncation of variants obtained from the presence of internal stop codons, percentage of thermodynamic diversity, and stability of variants. Our study allowed us to focus on experimental conditions that may be useful for the design of in vitro and in silico experiments of directed evolution with Cry toxins of 3 conserved domains. Furthermore, we obtained in silico libraries of Cry11 variants, in which structural characteristics of wild Cry families were observed in a review of a sample of in silico sequences. We consider that future studies could use our in silico libraries and heuristic computational models, as the one suggested here, to support in vitro experiments of directed evolution.
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spelling pubmed-73858512020-08-10 Generation of Cry11 Variants of Bacillus thuringiensis by Heuristic Computational Modeling Pinzón-Reyes, Efraín Hernando Sierra-Bueno, Daniel Alfonso Suarez-Barrera, Miguel Orlando Rueda-Forero, Nohora Juliana Abaunza-Villamizar, Sebastián Rondón-Villareal, Paola Evol Bioinform Online Original Research Directed evolution methods mimic in vitro Darwinian evolution, inducing random mutations and selective pressure in genes to obtain proteins with enhanced characteristics. These techniques are developed using trial-and-error testing at an experimental level with a high degree of uncertainty. Therefore, in silico modeling of directed evolution is required to support experimental assays. Several in silico approaches have reproduced directed evolution, using statistical, thermodynamic, and kinetic models in an attempt to recreate experimental conditions. Likewise, optimization techniques using heuristic models have been used to understand and find the best scenarios of directed evolution. Our study uses an in silico model named HeurIstics DirecteD EvolutioN, which is based on a genetic algorithm designed to generate chimeric libraries from 2 parental genes, cry11Aa and cry11Ba, of Bacillus thuringiensis. These genes encode crystal-shaped δ-endotoxins with 3 conserved domains. Cry11 toxins are of biotechnological interest because they have shown to be effective as biopesticides for disease-spreading vectors. With our heuristic model, we considered experimental parameters such as DNA fragmentation length, number of generations or simulation cycles, and mutation rate, to get characteristics of Cry11 chimeric libraries such as percentage of population identity, truncation of variants obtained from the presence of internal stop codons, percentage of thermodynamic diversity, and stability of variants. Our study allowed us to focus on experimental conditions that may be useful for the design of in vitro and in silico experiments of directed evolution with Cry toxins of 3 conserved domains. Furthermore, we obtained in silico libraries of Cry11 variants, in which structural characteristics of wild Cry families were observed in a review of a sample of in silico sequences. We consider that future studies could use our in silico libraries and heuristic computational models, as the one suggested here, to support in vitro experiments of directed evolution. SAGE Publications 2020-07-27 /pmc/articles/PMC7385851/ /pubmed/32782424 http://dx.doi.org/10.1177/1176934320924681 Text en © The Author(s) 2020 https://creativecommons.org/licenses/by-nc/4.0/ This article is distributed under the terms of the Creative Commons Attribution-NonCommercial 4.0 License (https://creativecommons.org/licenses/by-nc/4.0/) which permits non-commercial use, reproduction and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access page (https://us.sagepub.com/en-us/nam/open-access-at-sage).
spellingShingle Original Research
Pinzón-Reyes, Efraín Hernando
Sierra-Bueno, Daniel Alfonso
Suarez-Barrera, Miguel Orlando
Rueda-Forero, Nohora Juliana
Abaunza-Villamizar, Sebastián
Rondón-Villareal, Paola
Generation of Cry11 Variants of Bacillus thuringiensis by Heuristic Computational Modeling
title Generation of Cry11 Variants of Bacillus thuringiensis by Heuristic Computational Modeling
title_full Generation of Cry11 Variants of Bacillus thuringiensis by Heuristic Computational Modeling
title_fullStr Generation of Cry11 Variants of Bacillus thuringiensis by Heuristic Computational Modeling
title_full_unstemmed Generation of Cry11 Variants of Bacillus thuringiensis by Heuristic Computational Modeling
title_short Generation of Cry11 Variants of Bacillus thuringiensis by Heuristic Computational Modeling
title_sort generation of cry11 variants of bacillus thuringiensis by heuristic computational modeling
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7385851/
https://www.ncbi.nlm.nih.gov/pubmed/32782424
http://dx.doi.org/10.1177/1176934320924681
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