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Engineering of Substrate Tunnel of P450 CYP116B3 though Machine Learning.

Authors :
Liu, Yiheng
Li, Zhongyu
Cao, Chenqi
Zhang, Xianzhi
Meng, Shuaiqi
Davari, Mehdi D.
Xu, Haijun
Ji, Yu
Schwaneberg, Ulrich
Liu, Luo
Source :
Catalysts (2073-4344). Aug2023, Vol. 13 Issue 8, p1228. 13p.
Publication Year :
2023

Abstract

The combinatorial complexity of the protein sequence space presents a significant challenge for recombination experiments targeting beneficial positions. To overcome these difficulties, a machine learning (ML) approach was employed, which was trained on a limited literature dataset and combined with iterative generation and experimental data implementation. The PyPEF method was utilized to identify existing variants and predict recombinant variants targeting the substrate channel of P450 CYP116B3. Through molecular dynamics simulations, eight multiple-substituted improved variants were successfully validated. Specifically, the RMSF of variant A86T/T91H/M108S/A109M/T111P was decreased from 3.06 Å (wild type) to 1.07 Å. Additionally, the average RMSF of the variant A86T/T91P/M108V/A109M/T111P decreased to 1.41 Å, compared to the wild type's 1.53 Å. Of particular significance was the prediction that the variant A86T/T91H/M108G/A109M/T111P exhibited an activity approximately 15 times higher than that of the wild type. Furthermore, during the selection of the regression model, PLS and MLP regressions were compared. The effect of data size and data relevance on the two regression approaches has been summarized. The aforementioned conclusions provide evidence for the feasibility of the strategy that combines ML with experimental approaches. This integrated strategy proves effective in exploring potential variations within the protein sequence space. Furthermore, this method facilitates a deeper understanding of the substrate channel in P450 CYP116B3. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
20734344
Volume :
13
Issue :
8
Database :
Academic Search Index
Journal :
Catalysts (2073-4344)
Publication Type :
Academic Journal
Accession number :
170737395
Full Text :
https://doi.org/10.3390/catal13081228