volume 25 issue 24 publication number e202400495

Machine learning guided rational design of a non‐heme iron‐based lysine dioxygenase improves its total turnover number

Publication typeJournal Article
Publication date2024-12-05
scimago Q1
wos Q3
SJR0.844
CiteScore5.2
Impact factor2.8
ISSN14394227, 14397633
Abstract

Highly selective C−H functionalization remains an ongoing challenge in organic synthetic methodologies. Biocatalysts are robust tools for achieving these difficult chemical transformations. Biocatalyst engineering has often required directed evolution or structure‐based rational design campaigns to improve their activities. In recent years, machine learning has been integrated into these workflows to improve the discovery of beneficial enzyme variants. In this work, we combine a structure‐based self‐supervised machine learning framework, MutComputeX, with classical molecular dynamics simulations to down select mutations for rational design of a non‐heme iron‐dependent lysine dioxygenase, LDO. This approach consistently resulted in functional LDO mutants and circumvents the need for extensive study of mutational activity before‐hand. Our rationally designed single mutants purified with up to 2‐fold higher expression yields than WT and displayed higher total turnover numbers (TTN). Combining five such single mutations into a pentamutant variant, LPNYI LDO, leads to a 40 % improvement in the TTN (218±3) as compared to WT LDO (TTN=160±2). Overall, this work offers a low‐barrier approach for those seeking to synergize machine learning algorithms with pre‐existing protein engineering strategies.

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Hunter Wilson R. et al. Machine learning guided rational design of a non‐heme iron‐based lysine dioxygenase improves its total turnover number // ChemBioChem. 2024. Vol. 25. No. 24. e202400495
GOST all authors (up to 50) Copy
Hunter Wilson R., Diaz D. J., Damodaran A. R., Bhagi Damodaran A. Machine learning guided rational design of a non‐heme iron‐based lysine dioxygenase improves its total turnover number // ChemBioChem. 2024. Vol. 25. No. 24. e202400495
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TY - JOUR
DO - 10.1002/cbic.202400495
UR - https://chemistry-europe.onlinelibrary.wiley.com/doi/10.1002/cbic.202400495
TI - Machine learning guided rational design of a non‐heme iron‐based lysine dioxygenase improves its total turnover number
T2 - ChemBioChem
AU - Hunter Wilson, R.
AU - Diaz, Daniel J
AU - Damodaran, Anoop R
AU - Bhagi Damodaran, Ambika
PY - 2024
DA - 2024/12/05
PB - Wiley
IS - 24
VL - 25
PMID - 39370399
SN - 1439-4227
SN - 1439-7633
ER -
BibTex
Cite this
BibTex (up to 50 authors) Copy
@article{2024_Hunter Wilson,
author = {R. Hunter Wilson and Daniel J Diaz and Anoop R Damodaran and Ambika Bhagi Damodaran},
title = {Machine learning guided rational design of a non‐heme iron‐based lysine dioxygenase improves its total turnover number},
journal = {ChemBioChem},
year = {2024},
volume = {25},
publisher = {Wiley},
month = {dec},
url = {https://chemistry-europe.onlinelibrary.wiley.com/doi/10.1002/cbic.202400495},
number = {24},
pages = {e202400495},
doi = {10.1002/cbic.202400495}
}