| Literature DB >> 28250937 |
Abstract
Can in silico engineering speed up the delivery of biocatalysts for the burgeoning bioeconomy? In this issue, Kamerlin and coworkers introduce CADEE [Amrein et al. (2017), IUCrJ, 4, 50-64] - a framework for Computer-Aided Directed Evolution of Enzymes - that promises to lessen the burden on 'wet lab' enzymologists when optimizing biocatalysts using laboratory-based directed evolution methods.Entities:
Keywords: CADEE; computational directed evolution; computational enzyme design; distributed computing; empirical valence bond; triosephosphate isomerase
Year: 2016 PMID: 28250937 PMCID: PMC5331461 DOI: 10.1107/S2052252516019692
Source DB: PubMed Journal: IUCrJ ISSN: 2052-2525 Impact factor: 4.769
Figure 1CADEE and Design, Build, Test, Learn iterative cycles. CADEE and other predictive computational tools in the enzyme engineering ‘dry lab’ lessens burden on resources and experimental effort in the design, build, test and learn cycles of the ’wet lab’.