Methanol tolerance upgrading of Proteus mirabilis lipase by machine learning-assisted directed evolution

Rui Ma, Yingnan Li, Meng Zhang, Fei Xu

Systems Microbiology and Biomanufacturing ›› 2023, Vol. 3 ›› Issue (3) : 427-439.

Systems Microbiology and Biomanufacturing ›› 2023, Vol. 3 ›› Issue (3) : 427-439. DOI: 10.1007/s43393-023-00179-y
Original Article

Methanol tolerance upgrading of Proteus mirabilis lipase by machine learning-assisted directed evolution

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Abstract

For many crucial industrial applications, enzyme-catalyzed processes take place in harsh organic solvent environments. However, it remains a challenging problem to improve enzyme stability in organic solvents. This study utilized the MLDE (machine learning-assisted directed evolution) protocol to improve the methanol tolerance of Proteus mirabilis lipase (PML). The machine learning (ML) models were trained based on 266 combinatorial mutants. Using top 3 in 22 regression models based on evaluation of tenfold cross-validation, the fitness landscape of the 8000 full-space combinatorial mutants was predicted. All mutants in the restricted library showed higher methanol tolerance, among which the methanol tolerance of G202N/K208G/G266S (NGS) was up to 13-fold compared with the wild-type. Molecular dynamics (MD) simulation showed that reconstructing of critical hydrogen bond network in the mutant region of NGS provides a more stable local structure. This compact structure may improve the methanol tolerance by preventing organic solvent molecules into the activity site and resisting structural destruction. This work provides a successful case of evolution guided by ML for higher organic solvent tolerance of enzyme, and may also be a reference for broad enzyme modifications.

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Rui Ma, Yingnan Li, Meng Zhang, Fei Xu. Methanol tolerance upgrading of Proteus mirabilis lipase by machine learning-assisted directed evolution. Systems Microbiology and Biomanufacturing, 2023, 3(3): 427‒439 https://doi.org/10.1007/s43393-023-00179-y
Funding
National Natural Science Foundation of China,(No. 22078129); Fundamental Research Funds for the Central Universities,(No. JUSRP121014)

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