9PYL image
Deposition Date 2025-08-07
Release Date 2025-10-29
Last Version Date 2025-12-17
Entry Detail
PDB ID:
9PYL
Keywords:
Title:
Crystal structure of Zn(II)-bound ZETA_2
Biological Source:
Source Organism:
Host Organism:
Method Details:
Experimental Method:
Resolution:
2.07 Å
R-Value Free:
0.29
R-Value Work:
0.24
R-Value Observed:
0.24
Space Group:
P 21 21 21
Macromolecular Entities
Polymer Type:polypeptide(L)
Molecule:ZETA_2
Chain IDs:A, B
Chain Length:126
Number of Molecules:2
Biological Source:synthetic construct
Ligand Molecules
Primary Citation

Abstact

De novo enzyme design seeks to build proteins containing ideal active sites with catalytic residues surrounding and stabilizing the transition state(s) of the target chemical reaction1-7. The generative artificial intelligence method RFdiffusion8,9 solves this problem, but requires specifying both the sequence position and backbone coordinates for each catalytic residue, limiting sampling. Here we introduce RFdiffusion2, which eliminates these requirements, and use it to design zinc metallohydrolases starting from quantum chemistry-derived active site geometries. From an initial set of 96 designs tested experimentally, the most active has a catalytic efficiency (kcat/KM) of 16,000 M-1 s-1, orders of magnitude higher than previously designed metallohydrolases6,7,10,11. A second round of 96 designs yielded 3 additional highly active enzymes, with kcat/KM values of up to 53,000 M-1 s-1 and a catalytic rate constant (kcat) of up to 1.5 s-1. The design models of the four most active designs differ from known structures and from each other, and the crystal structure of the most active design is very close to the design model, demonstrating the accuracy of the design method. The most active enzymes are predicted by PLACER12 and Chai-1 (ref. 13) to have preorganized active sites that effectively position the substrate for nucleophilic attack by a water molecule activated by the bound metal. The ability to generate highly active enzymes directly from the computer, without experimental optimization, should enable a new generation of potent designer catalysts14,15.

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