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Computational study of protein-ligand unbinding for enzyme engineering

机译:酶工程中蛋白质-配体解键的计算研究

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The computational prediction of unbinding rate constants is presently an emerging topic in drug design. However, the importance of predicting kinetic rates is not restricted to pharmaceutical applications. Many biotechnologically relevant enzymes have their efficiency limited by the binding of the substrates or the release of products. While aiming at improving the ability of our model enzyme haloalkane dehalogenase DhaA to degrade the persistent anthropogenic pollutant 1,2,3-trichloropropane (TCP), the DhaA31 mutant was discovered. This variant had a 32-fold improvement of the catalytic rate towards TCP, but the catalysis became rate-limited by the release of the 2,3-dichloropropan-1-ol (DCP) product from its buried active site. Here we present a computational study to estimate the unbinding rates of the products from DhaA and DhaA31. The metadynamics and adaptive sampling methods were used to predict the relative order of kinetic rates in the different systems, while the absolute values depended significantly on the conditions used (method, force field and water model). Free energy calculations provided the energetic landscape of the unbinding process. A detailed analysis of the structural and energetic bottlenecks allowed the identification of the residues playing a key role during the release of DCP from DhaA31 via the main access tunnel. Some of these hot-spots could also be identified by the fast CaverDock tool for predicting the transport of ligands through tunnels. Targeting those hot-spots by mutagenesis should improve the unbinding rates of the DCP product and the overall catalytic efficiency with TCP. To the best of our knowledge, this is the first time that the methods for predicting ligand unbinding kinetics have been employed for protein engineering.
机译:解除速率常数的计算预测目前是药物设计中的新兴话题。但是,预测动力学速率的重要性并不局限于药物应用。许多生物技术相关的酶的效率受到底物结合或产物释放的限制。旨在提高我们的模型酶卤代烷脱卤酶DhaA降解持久性人为污染物1,2,3-三氯丙烷(TCP)的能力时,发现了DhaA31突变体。该变体对TCP的催化速率提高了32倍,但由于其掩埋的活性位点释放了2,3-二氯丙烷-1-醇(DCP)产物,因此催化速率受到限制。在这里,我们提出了一项计算研究,以评估DhaA和DhaA31产品的解链率。元动力学和自适应采样方法用于预测不同系统中动力学速率的相对顺序,而绝对值则很大程度上取决于所使用的条件(方法,力场和水模型)。自由能的计算提供了解除约束过程的活力。通过对结构和高能瓶颈的详细分析,可以确定残留物在通过主通道从DhaA31释放DCP的过程中起关键作用。快速热点CaverDock工具还可以识别其中一些热点,以预测配体通过通道的转运。通过诱变靶向那些热点应提高DCP产品的解键速率和TCP的总体催化效率。据我们所知,这是第一次将预测配体解结合动力学的方法用于蛋白质工程。

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