Open Access
Open access
Advanced Science

Replicating PET Hydrolytic Activity by Positioning Active Sites with Smaller Synthetic Protein Scaffolds

Yujing Ding 1, 2
Shanshan Zhang 1, 2
Xian Kong 3
Henry Hess 4
Yifei Zhang 1, 2
1
 
State Key Laboratory of Chemical Resources Engineering Beijing University of Chemical Technology Beijing 100029 P. R. China
3
 
South China Advanced Institute for Soft Matter Science and Technology Guangdong Provincial Key Laboratory of Functional and Intelligent Hybrid Materials and Devices School of Emergent Soft Matter South China University of Technology Guangzhou 510640 P. R. China
4
 
Department of Biomedical Engineering Columbia University 351L Engineering Terrace, 1210 Amsterdam Avenue New York NY 10027 USA
Publication typeJournal Article
Publication date2025-03-16
Journal: Advanced Science
scimago Q1
SJR3.914
CiteScore18.9
Impact factor14.3
ISSN21983844
Abstract

Evolutionary constraints significantly limit the diversity of naturally occurring enzymes, thereby reducing the sequence repertoire available for enzyme discovery and engineering. Recent breakthroughs in protein structure prediction and de novo design, powered by artificial intelligence, now enable to create enzymes with desired functions without solely relying on traditional genome mining. Here, a computational strategy is demonstrated for creating new‐to‐nature polyethylene terephthalate hydrolases (PET hydrolases) by leveraging the known catalytic mechanisms and implementing multiple deep learning algorithms and molecular computations. This strategy includes the extraction of functional motifs from a template enzyme (here leaf‐branch compost cutinase, LCC, is used), regeneration of new protein sequences, computational screening, experimental validation, and sequence refinement. PET hydrolytic activity is successfully replicated with designer enzymes that are at least 30% shorter in sequence length than LCC. Among them, RsPETase1 stands out due to its robust expressibility. It exhibits comparable catalytic efficiency (kcat/Km) to LCC and considerable thermostability with a melting temperature of 56 °C, despite sharing only 34% sequence similarity with LCC. This work suggests that enzyme diversity can be expanded by recapitulating functional motifs with computationally built protein scaffolds, thus generating opportunities to acquire highly active and robust enzymes that do not exist in nature.

Found 

Are you a researcher?

Create a profile to get free access to personal recommendations for colleagues and new articles.
Share
Cite this
GOST | RIS | BibTex
Found error?