Exploring the challenges of computational enzyme design by rebuilding the active site of a dehalogenase
Jazyk angličtina Země Spojené státy americké Médium print-electronic
Typ dokumentu časopisecké články, Research Support, N.I.H., Extramural, práce podpořená grantem
Grantová podpora
R01 GM024492
NIGMS NIH HHS - United States
R35 GM122472
NIGMS NIH HHS - United States
PubMed
30587585
PubMed Central
PMC6329970
DOI
10.1073/pnas.1804979115
PII: 1804979115
Knihovny.cz E-zdroje
- Klíčová slova
- EVB, dehalogenase, enzyme design, nucleophilic substitution, transient kinetics,
- MeSH
- chemické modely * MeSH
- ethylendichloridy chemie MeSH
- hydrolasy chemie MeSH
- katalytická doména MeSH
- molekulární modely * MeSH
- počítačová simulace * MeSH
- substrátová specifita MeSH
- Publikační typ
- časopisecké články MeSH
- práce podpořená grantem MeSH
- Research Support, N.I.H., Extramural MeSH
- Názvy látek
- ethylendichloridy MeSH
- ethylene dichloride MeSH Prohlížeč
- haloalkane dehalogenase MeSH Prohlížeč
- hydrolasy MeSH
Rational enzyme design presents a major challenge that has not been overcome by computational approaches. One of the key challenges is the difficulty in assessing the magnitude of the maximum possible catalytic activity. In an attempt to overcome this challenge, we introduce a strategy that takes an active enzyme (assuming that its activity is close to the maximum possible activity), design mutations that reduce the catalytic activity, and then try to restore that catalysis by mutating other residues. Here we take as a test case the enzyme haloalkane dehalogenase (DhlA), with a 1,2-dichloroethane substrate. We start by demonstrating our ability to reproduce the results of single mutations. Next, we design mutations that reduce the enzyme activity and finally design double mutations that are aimed at restoring the activity. Using the computational predictions as a guide, we conduct an experimental study that confirms our prediction in one case and leads to inconclusive results in another case with 1,2-dichloroethane as substrate. Interestingly, one of our predicted double mutants catalyzes dehalogenation of 1,2-dibromoethane more efficiently than the wild-type enzyme.
Department of Chemistry University of Southern California Los Angeles CA 90089
Department of Chemistry University of Southern California Los Angeles CA 90089;
International Clinical Research Center St Anne's University Hospital 656 91 Brno Czech Republic
Research Centre for Toxic Compounds in the Environment Masaryk University 625 00 Brno Czech Republic
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Frushicheva MP, Cao J, Chu ZT, Warshel A. Exploring challenges in rational enzyme design by simulating the catalysis in artificial kemp eliminase. Proc Natl Acad Sci USA. 2010;107:16869–16874. PubMed PMC
Frushicheva MP, Cao J, Warshel A. Challenges and advances in validating enzyme design proposals: The case of kemp eliminase catalysis. Biochemistry. 2011;50:3849–3858. PubMed PMC
Kries H, Blomberg R, Hilvert D. De novo enzymes by computational design. Curr Opin Chem Biol. 2013;17:221–228. PubMed
Siegel JB, et al. Computational design of an enzyme catalyst for a stereoselective bimolecular Diels-Alder reaction. Science. 2010;329:309–313. PubMed PMC
Röthlisberger D, et al. Kemp elimination catalysts by computational enzyme design. Nature. 2008;453:190–195. PubMed
Kiss G, Çelebi-Ölçüm N, Moretti R, Baker D, Houk KN. Computational enzyme design. Angew Chem Int Ed Engl. 2013;52:5700–5725. PubMed
Frushicheva MP, et al. Computer aided enzyme design and catalytic concepts. Curr Opin Chem Biol. 2014;21:56–62. PubMed PMC
Roca M, Vardi-Kilshtain A, Warshel A. Toward accurate screening in computer-aided enzyme design. Biochemistry. 2009;48:3046–3056. PubMed PMC
Khersonsky O, et al. Bridging the gaps in design methodologies by evolutionary optimization of the stability and proficiency of designed Kemp eliminase KE59. Proc Natl Acad Sci USA. 2012;109:10358–10363. PubMed PMC
Jindal G, Ramachandran B, Bora RP, Warshel A. Exploring the development of ground-state destabilization and transition-state stabilization in two directed evolution paths of kemp eliminases. ACS Catal. 2017;7:3301–3305. PubMed PMC
Janssen DB. Evolving haloalkane dehalogenases. Curr Opin Chem Biol. 2004;8:150–159. PubMed
Verschueren KH, Seljée F, Rozeboom HJ, Kalk KH, Dijkstra BW. Crystallographic analysis of the catalytic mechanism of haloalkane dehalogenase. Nature. 1993;363:693–698. PubMed
Schanstra JP, Ridder A, Kingma J, Janssen DB. Influence of mutations of Val226 on the catalytic rate of haloalkane dehalogenase. Protein Eng. 1997;10:53–61. PubMed
Schanstra JP, et al. Kinetic characterization and X-ray structure of a mutant of haloalkane dehalogenase with higher catalytic activity and modified substrate range. Biochemistry. 1996;35:13186–13195. PubMed
Warshel A, Sharma PK, Kato M, Parson WW. Modeling electrostatic effects in proteins. Biochim Biophys Acta. 2006;1764:1647–1676. PubMed
Nagata Y, et al. Purification and characterization of a haloalkane dehalogenase of a new substrate class from a gamma-hexachlorocyclohexane-degrading bacterium, Sphingomonas paucimobilis UT26. Appl Environ Microbiol. 1997;63:3707–3710. PubMed PMC
Kulakova AN, Larkin MJ, Kulakov LA. The plasmid-located haloalkane dehalogenase gene from Rhodococcus rhodochrous NCIMB 13064. Microbiology. 1997;143:109–115. PubMed
Damborský J, Koča J. Analysis of the reaction mechanism and substrate specificity of haloalkane dehalogenases by sequential and structural comparisons. Protein Eng. 1999;12:989–998. PubMed
Kmunícek J, et al. Comparative binding energy analysis of the substrate specificity of haloalkane dehalogenase from Xanthobacter autotrophicus GJ10. Biochemistry. 2001;40:8905–8917. PubMed
Kellogg EH, Leaver-Fay A, Baker D. Role of conformational sampling in computing mutation-induced changes in protein structure and stability. Proteins. 2011;79:830–838. PubMed PMC
Warshel A, Weiss RM. An empirical valence bond approach for comparing reactions in solutions and in enzymes. J Am Chem Soc. 1980;102:6218–6226.
Kamerlin SC, Warshel A. The empirical valence bond model: Theory and applications. Wiley Interdiscip Rev Comput Mol Sci. 2011;1:30–45.
Kamerlin SC, Warshel A. The EVB as a quantitative tool for formulating simulations and analyzing biological and chemical reactions. Faraday Discuss. 2010;145:71–106. PubMed PMC
Frisch MJ, et al. 2009. Gaussian 09 Rev. D.01 (Gaussian, Wallingford, CT)
King G, Warshel A. Investigation of the free energy functions for electron transfer reactions. J Chem Phys. 1990;93:8682–8692.
Lee FS, Warshel A. A local reaction field method for fast evaluation of long‐range electrostatic interactions in molecular simulations. J Chem Phys. 1992;97:3100–3107.
Schanstra JP, Kingma J, Janssen DB. Specificity and kinetics of haloalkane dehalogenase. J Biol Chem. 1996;271:14747–14753. PubMed
Shurki A, Štrajbl M, Villà J, Warshel A. How much do enzymes really gain by restraining their reacting fragments? J Am Chem Soc. 2002;124:4097–4107. PubMed
Kennes C, et al. Replacement of tryptophan residues in haloalkane dehalogenase reduces halide binding and catalytic activity. Eur J Biochem. 1995;228:403–407. PubMed
Krooshof GH, et al. Kinetic analysis and X-ray structure of haloalkane dehalogenase with a modified halide-binding site. Biochemistry. 1998;37:15013–15023. PubMed