Engineering Dehalogenase Enzymes Using Variational Autoencoder-Generated Latent Spaces and Microfluidics.

IF 8.5 Q1 CHEMISTRY, MULTIDISCIPLINARY
JACS Au Pub Date : 2025-02-13 eCollection Date: 2025-02-24 DOI:10.1021/jacsau.4c01101
Pavel Kohout, Michal Vasina, Marika Majerova, Veronika Novakova, Jiri Damborsky, David Bednar, Martin Marek, Zbynek Prokop, Stanislav Mazurenko
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引用次数: 0

Abstract

Enzymes play a crucial role in sustainable industrial applications, with their optimization posing a formidable challenge due to the intricate interplay among residues. Computational methodologies predominantly rely on evolutionary insights of homologous sequences. However, deciphering the evolutionary variability and complex dependencies among residues presents substantial hurdles. Here, we present a new machine-learning method based on variational autoencoders and evolutionary sampling strategy to address those limitations. We customized our method to generate novel sequences of model enzymes, haloalkane dehalogenases. Three design-build-test cycles improved the solubility of variants from 11% to 75%. Thorough experimental validation including the microfluidic device MicroPEX resulted in 20 multiple-point variants. Nine of them, sharing as little as 67% sequence similarity with the template, showed a melting temperature increase of up to 9 °C and an average improvement of 3 °C. The most stable variant demonstrated a 3.5-fold increase in activity compared to the template. High-quality experimental data collected with 20 variants represent a valuable data set for the critical validation of novel protein design approaches. Python scripts, jupyter notebooks, and data sets are available on GitHub (https://github.com/loschmidt/vae-dehalogenases), and interactive calculations will be possible via https://loschmidt.chemi.muni.cz/fireprotasr/.

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来源期刊
CiteScore
9.10
自引率
0.00%
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审稿时长
10 weeks
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