人工酶远端突变的计算指导工程

IF 3.3 3区 化学 Q2 CHEMISTRY, PHYSICAL Faraday Discussions Pub Date : 2024-04-22 DOI:10.1039/d4fd00069b
Fabrizio Casilli, Miquel Canyelles-Niño, Gerard Roelfes, Lur Alonso-Cotchico
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引用次数: 0

摘要

人工酶是一种宝贵的生物催化剂,能够以天然酶的精度和(对映)选择性进行新的自然转化。虽然人工酶是一种高度工程化的生物催化剂,但其催化率往往无法达到与天然酶类似的水平,从而减缓了其在实际工业过程中的应用。通常情况下,它们的设计只优化了活性位点内部的化学反应,而忽略了蛋白质动力学对催化的作用。在这项工作中,我们展示了如何通过调节长程相互作用网络来进一步提高已设计好的人工酶的催化性能。为此,我们对基于乳球菌多药耐药性调节因子(LmrR)的特制人工酶采用了一种创新算法,该算法可快速检查整个蛋白质序列空间中的蛋白质动力学热点。在最初预测筛选出的 73 个变体中,有两个变体的突变距离超过 11 Å,对新到自然界的腙形成反应显示出更高的催化活性。它们的重组显示周转次数提高了 60%,热稳定性提高了 14 ℃。微秒时间尺度的分子动力学模拟表明,有生产力的酶构象的分布发生了变化,这是由引入的突变引发的一连串相互作用的结果。
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Computation-guided engineering of distal mutations in an artificial enzyme
Artificial enzymes are valuable biocatalysts able to perform new-to-nature transformations with the precision and (enantio-)selectivity of natural enzymes. Although being highly engineered biocatalysts, they often cannot reach catalytic rates akin those of their natural counterparts, slowing down their application in real-world industrial processes. Typically, their designs only optimise the chemistry inside the active site, while overlooking the role of protein dynamics on catalysis. In this work, we show how the catalytic performance of an already engineered artificial enzyme can be further improved by modulating its long-range network of interactions. To this aim, we subjected a specialised artificial enzyme based on the Lactococcal multidrug resistance regulator (LmrR) to an innovative algorithm that quickly inspects the whole protein sequence space for protein dynamics hotspots. From an initial predicted selection of 73 variants, two variants with mutations distant more than 11 Å showed increased catalytic activity towards the new-to-nature hydrazone formation reaction. Their recombination displayed a 60% higher turnover number and 14 ℃ higher thermostability. Microsecond time scale molecular dynamics simulations evidenced a shift in the distribution of productive enzyme conformations, which are the result of a cascade of interactions initiated by the introduced mutations.
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来源期刊
Faraday Discussions
Faraday Discussions 化学-物理化学
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期刊介绍: Discussion summary and research papers from discussion meetings that focus on rapidly developing areas of physical chemistry and its interfaces
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