Application of Directed Evolution and Machine Learning to Enhance the Diastereoselectivity of Ketoreductase for Dihydrotetrabenazine Synthesis

JACS Au Pub Date : 2024-06-26 DOI:10.1021/jacsau.4c00284
Chenming Huang, Li Zhang, Tong Tang, Haijiao Wang, Yingqian Jiang, Hanwen Ren, Yitian Zhang, Jiali Fang, Wenhe Zhang, Xian Jia, Song You, Bin Qin
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Abstract

Biocatalysis is an effective approach for producing chiral drug intermediates that are often difficult to synthesize using traditional chemical methods. A time-efficient strategy is required to accelerate the directed evolution process to achieve the desired enzyme function. In this research, we evaluated machine learning-assisted directed evolution as a potential approach for enzyme engineering, using a moderately diastereoselective ketoreductase library as a model system. Machine learning-assisted directed evolution and traditional directed evolution methods were compared for reducing (±)-tetrabenazine to dihydrotetrabenazine via kinetic resolution facilitated by BsSDR10, a short-chain dehydrogenase/reductase from Bacillus subtilis. Both methods successfully identified variants with significantly improved diastereoselectivity for each isomer of dihydrotetrabenazine. Furthermore, the preparation of (2S,3S,11bS)-dihydrotetrabenazine has been successfully scaled up, with an isolated yield of 40.7% and a diastereoselectivity of 91.3%.

Abstract Image

应用定向进化和机器学习提高酮还原酶合成二氢四苯并嗪的非对映选择性
生物催化是生产手性药物中间体的有效方法,而这些中间体通常难以用传统化学方法合成。需要一种省时高效的策略来加速定向进化过程,以实现所需的酶功能。在这项研究中,我们以中度非对映选择性酮还原酶库为模型系统,评估了机器学习辅助定向进化作为酶工程的一种潜在方法。我们比较了机器学习辅助定向进化法和传统的定向进化法,通过枯草芽孢杆菌的短链脱氢酶/还原酶BsSDR10的动力学解析,将(±)-四苄肼还原成二氢四苄肼。这两种方法都成功鉴定出了非对映选择性显著提高的二氢四苄肼各异构体变体。此外,(2S,3S,11bS)-二氢四苯嗪的制备方法已成功放大,分离收率为 40.7%,非对映选择性为 91.3%。
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