VTT Technical Research Centre of Finland Ltd, P.O. Box 1000, FI-02044 VTT, Espoo, Finland.
Department of Computer Science, Aalto University, Espoo, Finland.
Appl Microbiol Biotechnol. 2020 Dec;104(24):10515-10529. doi: 10.1007/s00253-020-10960-x. Epub 2020 Nov 4.
In this work, deoxyribose-5-phosphate aldolase (Ec DERA, EC 4.1.2.4) from Escherichia coli was chosen as the protein engineering target for improving the substrate preference towards smaller, non-phosphorylated aldehyde donor substrates, in particular towards acetaldehyde. The initial broad set of mutations was directed to 24 amino acid positions in the active site or in the close vicinity, based on the 3D complex structure of the E. coli DERA wild-type aldolase. The specific activity of the DERA variants containing one to three amino acid mutations was characterised using three different substrates. A novel machine learning (ML) model utilising Gaussian processes and feature learning was applied for the 3rd mutagenesis round to predict new beneficial mutant combinations. This led to the most clear-cut (two- to threefold) improvement in acetaldehyde (C2) addition capability with the concomitant abolishment of the activity towards the natural donor molecule glyceraldehyde-3-phosphate (C3P) as well as the non-phosphorylated equivalent (C3). The Ec DERA variants were also tested on aldol reaction utilising formaldehyde (C1) as the donor. Ec DERA wild-type was shown to be able to carry out this reaction, and furthermore, some of the improved variants on acetaldehyde addition reaction turned out to have also improved activity on formaldehyde. KEY POINTS: • DERA aldolases are promiscuous enzymes. • Synthetic utility of DERA aldolase was improved by protein engineering approaches. • Machine learning methods aid the protein engineering of DERA.
在这项工作中,选择来自大肠杆菌的脱氧核糖-5-磷酸醛缩酶(Ec DERA,EC 4.1.2.4)作为蛋白质工程的目标,以提高对较小的、非磷酸化的醛供体底物的底物偏好性,特别是对乙醛的偏好性。最初的广泛突变集针对活性位点或其附近的 24 个氨基酸位置,这是基于大肠杆菌 DERA 野生型醛缩酶的 3D 复合物结构。使用三种不同的底物来表征含有一个到三个氨基酸突变的 DERA 变体的比活性。应用一种新的机器学习(ML)模型,利用高斯过程和特征学习,进行了第 3 轮诱变,以预测新的有益突变组合。这导致了乙醛(C2)加成能力的最明显(两到三倍)提高,同时消除了对天然供体分子甘油醛-3-磷酸(C3P)以及非磷酸化等价物(C3)的活性。Ec DERA 变体还在利用甲醛(C1)作为供体的醛醇反应中进行了测试。Ec DERA 野生型被证明能够进行此反应,此外,一些在乙醛加成反应中得到改进的变体在甲醛反应中也表现出了更好的活性。关键点:• DERA 醛缩酶是混杂酶。• 通过蛋白质工程方法提高了 DERA 醛缩酶的合成实用性。• 机器学习方法辅助了 DERA 的蛋白质工程。