Literature DB >> 29877597

Rational design of thiolase substrate specificity for metabolic engineering applications.

Brian M Bonk1,2, Yekaterina Tarasova3, Michael A Hicks4, Bruce Tidor1,2,5, Kristala L J Prather3,4.   

Abstract

Metabolic engineering efforts require enzymes that are both highly active and specific toward the synthesis of a desired output product to be commercially feasible. The 3-hydroxyacid (3HA) pathway, also known as the reverse β-oxidation or coenzyme-A-dependent chain-elongation pathway, can allow for the synthesis of dozens of useful compounds of various chain lengths and functionalities. However, this pathway suffers from byproduct formation, which lowers the yields of the desired longer chain products, as well as increases downstream separation costs. The thiolase enzyme catalyzes the first reaction in this pathway, and its substrate specificity at each of its two catalytic steps sets the chain length and composition of the chemical scaffold upon which the other downstream enzymes act. However, there have been few attempts reported in the literature to rationally engineer thiolase substrate specificity. In this study, we present a model-guided, rational design study of ordered substrate binding applied to two biosynthetic thiolases, with the goal of increasing the ratio of C6/C4 products formed by the 3HA pathway, 3-hydroxy-hexanoic acid and 3-hydroxybutyric acid. We identify thiolase mutants that result in nearly 10-fold increases in C6/C4 selectivity. Our findings can extend to other pathways that employ the thiolase for chain elongation, as well as expand our knowledge of sequence-structure-function relationship for this important class of enzymes.
© 2018 Wiley Periodicals, Inc.

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Keywords:  metabolic engineering; protein engineering; thiolase

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Year:  2018        PMID: 29877597      PMCID: PMC6131064          DOI: 10.1002/bit.26737

Source DB:  PubMed          Journal:  Biotechnol Bioeng        ISSN: 0006-3592            Impact factor:   4.530


  28 in total

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10.  Comparative analysis of the substrate specificity of trans- versus cis-acyltransferases of assembly line polyketide synthases.

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