静电势作为计算机辅助酶工程中的反应性评分函数。

Aitor Vega, Antoni Planas, Xevi Biarnés
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引用次数: 0

摘要

酶的高催化效率部分是由于它们具有静电稳定化学反应过渡态的能力。在计算机辅助酶设计中测量这种静电贡献的高通量协议是有限的。我们在这里提出了一个易于计算的度量,它捕获了酶的静电互补性和底物在过渡态的电荷分布。我们在糖苷水解酶的代表性数据集中证明了这种互补性,糖苷水解酶是一大家族的酶,负责水解寡糖、多糖和糖缀合物中的糖苷键。我们已经在BindScan中实现了这个度量,BindScan是一种基于计算机的突变分析协议,用于辅助蛋白质工程。我们用这个指标证明了BindScan对两种机制不同的糖苷水解酶的预测能力:Spodoptera frugiperda β-葡萄糖苷酶(Sfβgly,通过亲核蛋白催化作用)和两歧双歧杆菌乳酸- n -生物糖苷酶(BbLnbB,通过底物辅助催化作用)。该指标以51个Sfβgly突变为实验基准,以77%的分类效率正确预测突变后kcat/KM的敏感序列位置,并以更高的转糖基化率(高达32%)识别出BbLnbB的变体。基于静电电位和配体亲和力计算,我们提出了一种合理的策略来设计具有更高转糖基化效率的糖苷水解酶变体,用于合成增值糖缀合物。新的反应性度量可能有助于扩大可用的计算协议的范围,以协助酶工程活动旨在优化机械相关性质。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Electrostatic potential as a reactivity scoring function in computer-assisted enzyme engineering.

The high catalytic efficiency of enzymes is attained, in part, by their capacity to stabilize electrostatically the transition state of the chemical reaction. High-throughput protocols for measuring this electrostatic contribution in computer-assisted enzyme design are limited. We present here an easy-to-compute metric that captures the electrostatic complementarity of the enzyme to the charge distribution of the substrate at the transition state. We demonstrate such a complementarity for a representative dataset of glycoside hydrolases, a large family of enzymes responsible for the hydrolytic cleavage of glycosidic bonds in oligosaccharides, polysaccharides, and glycoconjugates. We have implemented this metric in BindScan, a computer-based mutational analysis protocol to assist protein engineering. We demonstrate the predictive power of BindScan with this metric for two mechanistically distinct glycoside hydrolases: Spodoptera frugiperda β-glucosidase (Sfβgly, operates via protein nucleophile catalysis) and Bifidobacterium bifidum lacto-N-biosidase (BbLnbB, operates via substrate-assisted catalysis). The metric correctly predicts sequence positions sensible to the modulation of kcat/KM upon mutation from an experimental benchmark of 51 mutants of Sfβgly with 77% classification efficiency and identifies variants of BbLnbB with improved transglycosylation yields (up to 32%). Based on electrostatic potential and ligand affinity calculations, as implemented in BindScan, we propose a rational strategy to design glycoside hydrolase variants with improved transglycosylation efficiency for the synthesis of added-value glycoconjugates. The new reactivity metric may contribute to expanding the range of computational protocols available to assist enzyme engineering campaigns aimed at optimizing mechanistically relevant properties.

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