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A Computational Method to Propose Mutations in Enzymes Based on Structural Signature Variation (SSV)

With the use of genetic engineering, modified and sometimes more efficient enzymes can be created for different purposes, including industrial applications. However, building modified enzymes depends on several in vitro experiments, which may result in the process being expensive and time-consuming....

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Autores principales: Mariano, Diego César Batista, Santos, Lucianna Helene, Machado, Karina dos Santos, Werhli, Adriano Velasque, de Lima, Leonardo Henrique França, de Melo-Minardi, Raquel Cardoso
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6359350/
https://www.ncbi.nlm.nih.gov/pubmed/30650542
http://dx.doi.org/10.3390/ijms20020333
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author Mariano, Diego César Batista
Santos, Lucianna Helene
Machado, Karina dos Santos
Werhli, Adriano Velasque
de Lima, Leonardo Henrique França
de Melo-Minardi, Raquel Cardoso
author_facet Mariano, Diego César Batista
Santos, Lucianna Helene
Machado, Karina dos Santos
Werhli, Adriano Velasque
de Lima, Leonardo Henrique França
de Melo-Minardi, Raquel Cardoso
author_sort Mariano, Diego César Batista
collection PubMed
description With the use of genetic engineering, modified and sometimes more efficient enzymes can be created for different purposes, including industrial applications. However, building modified enzymes depends on several in vitro experiments, which may result in the process being expensive and time-consuming. Therefore, computational approaches could reduce costs and accelerate the discovery of new technological products. In this study, we present a method, called structural signature variation (SSV), to propose mutations for improving enzymes’ activity. SSV uses the structural signature variation between target enzymes and template enzymes (obtained from the literature) to determine if randomly suggested mutations may provide some benefit for an enzyme, such as improvement of catalytic activity, half-life, and thermostability, or resistance to inhibition. To evaluate SSV, we carried out a case study that suggested mutations in β-glucosidases: Essential enzymes used in biofuel production that suffer inhibition by their product. We collected 27 mutations described in the literature, and manually classified them as beneficial or not. SSV was able to classify the mutations with values of 0.89 and 0.92 for precision and specificity, respectively. Then, we used SSV to propose mutations for Bgl1B, a low-performance β-glucosidase. We detected 15 mutations that could be beneficial. Three of these mutations (H228C, H228T, and H228V) have been related in the literature to the mechanism of glucose tolerance and stimulation in GH1 β-glucosidase. Hence, SSV was capable of detecting promising mutations, already validated by in vitro experiments, that improved the inhibition resistance of a β-glucosidase and, consequently, its catalytic activity. SSV might be useful for the engineering of enzymes used in biofuel production or other industrial applications.
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spelling pubmed-63593502019-02-06 A Computational Method to Propose Mutations in Enzymes Based on Structural Signature Variation (SSV) Mariano, Diego César Batista Santos, Lucianna Helene Machado, Karina dos Santos Werhli, Adriano Velasque de Lima, Leonardo Henrique França de Melo-Minardi, Raquel Cardoso Int J Mol Sci Article With the use of genetic engineering, modified and sometimes more efficient enzymes can be created for different purposes, including industrial applications. However, building modified enzymes depends on several in vitro experiments, which may result in the process being expensive and time-consuming. Therefore, computational approaches could reduce costs and accelerate the discovery of new technological products. In this study, we present a method, called structural signature variation (SSV), to propose mutations for improving enzymes’ activity. SSV uses the structural signature variation between target enzymes and template enzymes (obtained from the literature) to determine if randomly suggested mutations may provide some benefit for an enzyme, such as improvement of catalytic activity, half-life, and thermostability, or resistance to inhibition. To evaluate SSV, we carried out a case study that suggested mutations in β-glucosidases: Essential enzymes used in biofuel production that suffer inhibition by their product. We collected 27 mutations described in the literature, and manually classified them as beneficial or not. SSV was able to classify the mutations with values of 0.89 and 0.92 for precision and specificity, respectively. Then, we used SSV to propose mutations for Bgl1B, a low-performance β-glucosidase. We detected 15 mutations that could be beneficial. Three of these mutations (H228C, H228T, and H228V) have been related in the literature to the mechanism of glucose tolerance and stimulation in GH1 β-glucosidase. Hence, SSV was capable of detecting promising mutations, already validated by in vitro experiments, that improved the inhibition resistance of a β-glucosidase and, consequently, its catalytic activity. SSV might be useful for the engineering of enzymes used in biofuel production or other industrial applications. MDPI 2019-01-15 /pmc/articles/PMC6359350/ /pubmed/30650542 http://dx.doi.org/10.3390/ijms20020333 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Mariano, Diego César Batista
Santos, Lucianna Helene
Machado, Karina dos Santos
Werhli, Adriano Velasque
de Lima, Leonardo Henrique França
de Melo-Minardi, Raquel Cardoso
A Computational Method to Propose Mutations in Enzymes Based on Structural Signature Variation (SSV)
title A Computational Method to Propose Mutations in Enzymes Based on Structural Signature Variation (SSV)
title_full A Computational Method to Propose Mutations in Enzymes Based on Structural Signature Variation (SSV)
title_fullStr A Computational Method to Propose Mutations in Enzymes Based on Structural Signature Variation (SSV)
title_full_unstemmed A Computational Method to Propose Mutations in Enzymes Based on Structural Signature Variation (SSV)
title_short A Computational Method to Propose Mutations in Enzymes Based on Structural Signature Variation (SSV)
title_sort computational method to propose mutations in enzymes based on structural signature variation (ssv)
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6359350/
https://www.ncbi.nlm.nih.gov/pubmed/30650542
http://dx.doi.org/10.3390/ijms20020333
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