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Machine-Learning-Guided Engineering of an NADH-Dependent 7β-Hydroxysteroid Dehydrogenase for Economic Synthesis of Ursodeoxycholic Acid.

Mu-Qiang WangZhi-Neng YouBing-Yi YangZi-Wei XiaQi ChenJiang PanChun-Xiu LiJian-He Xu
Published in: Journal of agricultural and food chemistry (2023)
Enzymatic synthesis of ursodeoxycholic acid (UDCA) catalyzed by an NADH-dependent 7β-hydroxysteroid dehydrogenase (7β-HSDH) is more economic compared with an NADPH-dependent 7β-HSDH when considering the much higher cost of NADP + /NADPH than that of NAD + /NADH. However, the poor catalytic performance of NADH-dependent 7β-HSDH significantly limits its practical applications. Herein, machine-learning-guided protein engineering was performed on an NADH-dependent Rt 7β-HSDH M0 from Ruminococcus torques . We combined random forest, Gaussian Naïve Bayes classifier, and Gaussian process regression with limited experimental data, resulting in the best variant Rt 7β-HSDH M3 (R40I/R41K/F94Y/S196A/Y253F) with improvements in specific activity and half-life (40 °C) by 4.1-fold and 8.3-fold, respectively. The preparative biotransformation using a "two stage in one pot" sequential process coupled with Rt 7β-HSDH M3 exhibited a space-time yield (STY) of 192 g L -1 d -1 , which is so far the highest productivity for the biosynthesis of UDCA from chenodeoxycholic acid (CDCA) with NAD + as a cofactor. More importantly, the cost of raw materials for the enzymatic production of UDCA employing Rt 7β-HSDH M3 decreased by 22% in contrast to that of Rt 7β-HSDH M0 , indicating the tremendous potential of the variant Rt 7β-HSDH M3 for more efficient and economic production of UDCA.
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