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利用数据科学深入了解非天然生物催化反应的机制并进行选择性预测。

Using Data Science for Mechanistic Insights and Selectivity Predictions in a Non-Natural Biocatalytic Reaction.

机构信息

Department of Chemistry, University of Utah, 315 South 1400 East, Salt Lake City, Utah 84112, United States.

Department of Chemistry and Chemical Biology, Cornell University, 122 Baker Laboratory, Ithaca, New York 14853, United States.

出版信息

J Am Chem Soc. 2023 Aug 16;145(32):17656-17664. doi: 10.1021/jacs.3c03639. Epub 2023 Aug 2.

Abstract

The study of non-natural biocatalytic transformations relies heavily on empirical methods, such as directed evolution, for identifying improved variants. Although exceptionally effective, this approach provides limited insight into the molecular mechanisms behind the transformations and necessitates multiple protein engineering campaigns for new reactants. To address this limitation, we disclose a strategy to explore the biocatalytic reaction space and garner insight into the molecular mechanisms driving enzymatic transformations. Specifically, we explored the selectivity of an "ene"-reductase, GluER-T36A, to create a data-driven toolset that explores reaction space and rationalizes the observed and predicted selectivities of substrate/mutant combinations. The resultant statistical models related structural features of the enzyme and substrate to selectivity and were used to effectively predict selectivity in reactions with out-of-sample substrates and mutants. Our approach provided a deeper understanding of enantioinduction by GluER-T36A and holds the potential to enhance the virtual screening of enzyme mutants.

摘要

非天然生物催化转化的研究严重依赖于经验方法,例如定向进化,以鉴定改进的变体。尽管这种方法非常有效,但它提供的关于转化背后的分子机制的见解有限,并且需要针对新的反应物进行多次蛋白质工程研究。为了解决这个限制,我们披露了一种探索生物催化反应空间并深入了解驱动酶转化的分子机制的策略。具体来说,我们探索了“ene”-还原酶 GluER-T36A 的选择性,以创建一个数据驱动的工具集,探索反应空间,并合理化观察到的和预测的底物/突变体组合的选择性。所得的统计模型将酶和底物的结构特征与选择性相关联,并用于有效地预测具有样本外底物和突变体的反应中的选择性。我们的方法深入了解了 GluER-T36A 的对映选择性诱导作用,并有可能增强酶突变体的虚拟筛选。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/be9c/10602048/179fd2d10f10/nihms-1937464-f0002.jpg

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