King Brianne R, Sumida Kiera H, Caruso Jessica L, Baker David, Zalatan Jesse G
Department of Chemistry, University of Washington, Seattle, Washington 98195, United States.
Department of Chemistry and Institute for Protein Design, University of Washington, Seattle, Washington 98195, United States.
bioRxiv. 2024 Jul 25:2024.04.18.590141. doi: 10.1101/2024.04.18.590141.
Directed evolution has emerged as a powerful tool for engineering new biocatalysts. However, introducing new catalytic residues can be destabilizing, and it is generally beneficial to start with a stable enzyme parent. Here we show that the deep learning-based tool ProteinMPNN can be used to redesign Fe(II)/αKG superfamily enzymes for greater stability, solubility, and expression while retaining both native activity and industrially-relevant non-native functions. For the Fe(II)/αKG enzyme tP4H, we performed site-saturation mutagenesis with both the wild-type and stabilized design variant and screened for activity increases in a non-native C-H hydroxylation reaction. We observed substantially larger increases in non-native activity for variants obtained from the stabilized scaffold compared to those from the wild-type enzyme. ProteinMPNN is user-friendly and widely-accessible, and straightforward structural criteria were sufficient to obtain stabilized, catalytically-functional variants of the Fe(II)/αKG enzymes tP4H and GriE. Our work suggests that stabilization by computational sequence redesign could be routinely implemented as a first step in directed evolution campaigns for novel biocatalysts.
定向进化已成为工程化新型生物催化剂的强大工具。然而,引入新的催化残基可能会使酶不稳定,因此通常从稳定的酶亲本开始是有益的。在这里,我们表明基于深度学习的工具ProteinMPNN可用于重新设计Fe(II)/αKG超家族酶,以提高其稳定性、溶解性和表达水平,同时保留天然活性和与工业相关的非天然功能。对于Fe(II)/αKG酶tP4H,我们对野生型和稳定设计变体都进行了位点饱和诱变,并筛选了非天然C-H羟基化反应中活性的增加情况。我们观察到,与野生型酶相比,从稳定支架获得的变体在非天然活性方面的增加幅度要大得多。ProteinMPNN用户友好且广泛可用,简单的结构标准足以获得Fe(II)/αKG酶tP4H和GriE的稳定、具有催化功能的变体。我们的工作表明,通过计算序列重新设计进行稳定化可以作为新型生物催化剂定向进化活动的第一步常规实施。