Abstract
Protein engineering aimed at increasing temperature tolerance through iterative mutagenesis and highthroughput screening is often labor-intensive. Here, we developed a deep evolution (DeepEvo) strategy to engineer protein high-temperature tolerance by generating and selecting functional sequences using deep learning models. Drawing inspiration from the concept of evolution, we constructed a high-temperature tolerance selector based on a protein language model, acting as selective pressure in the high-dimensional latent spaces of protein sequences to enrich those with high-temperature tolerance. Simultaneously, we developed a variant generator using a generative adversarial network to produce protein sequence variants containing the desired function. Afterward, the iterative process involving the generator and selector was executed to accumulate high-temperature tolerance traits. We experimentally tested this approach on the model protein glyceraldehyde 3-phosphate dehydrogenase, obtaining 8 variants with high-temperature tolerance from just 30 generated sequences, achieving a success rate of over 26%, demonstrating the high efficiency of DeepEvo in engineering protein high-temperature tolerance.
Cite
CITATION STYLE
Chu, H., Tian, Z., Hu, L., Zhang, H., Chang, H., Bai, J., … Jiang, H. (2024). High-Temperature Tolerance Protein Engineering through Deep Evolution. BioDesign Research, 6. https://doi.org/10.34133/bdr.0031
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