4J9A image
Deposition Date 2013-02-15
Release Date 2013-06-26
Last Version Date 2024-02-28
Entry Detail
PDB ID:
4J9A
Title:
Engineered Digoxigenin binder DIG10.3
Biological Source:
Source Organism:
Host Organism:
Method Details:
Experimental Method:
Resolution:
3.20 Å
R-Value Free:
0.31
R-Value Work:
0.26
R-Value Observed:
0.26
Space Group:
C 1 2 1
Macromolecular Entities
Structures with similar UniProt ID
Protein Blast
Polymer Type:polypeptide(L)
Molecule:Engineered Digoxigenin binder protein DIG10.3
Gene (Uniprot):PA3332
Chain IDs:A, B, C, D, E, F, G, H, I
Chain Length:137
Number of Molecules:9
Biological Source:Pseudomonas aeruginosa
Ligand Molecules
Primary Citation
Computational design of ligand-binding proteins with high affinity and selectivity.
Nature 501 212 216 (2013)
PMID: 24005320 DOI: 10.1038/nature12443

Abstact

The ability to design proteins with high affinity and selectivity for any given small molecule is a rigorous test of our understanding of the physiochemical principles that govern molecular recognition. Attempts to rationally design ligand-binding proteins have met with little success, however, and the computational design of protein-small-molecule interfaces remains an unsolved problem. Current approaches for designing ligand-binding proteins for medical and biotechnological uses rely on raising antibodies against a target antigen in immunized animals and/or performing laboratory-directed evolution of proteins with an existing low affinity for the desired ligand, neither of which allows complete control over the interactions involved in binding. Here we describe a general computational method for designing pre-organized and shape complementary small-molecule-binding sites, and use it to generate protein binders to the steroid digoxigenin (DIG). Of seventeen experimentally characterized designs, two bind DIG; the model of the higher affinity binder has the most energetically favourable and pre-organized interface in the design set. A comprehensive binding-fitness landscape of this design, generated by library selections and deep sequencing, was used to optimize its binding affinity to a picomolar level, and X-ray co-crystal structures of two variants show atomic-level agreement with the corresponding computational models. The optimized binder is selective for DIG over the related steroids digitoxigenin, progesterone and β-oestradiol, and this steroid binding preference can be reprogrammed by manipulation of explicitly designed hydrogen-bonding interactions. The computational design method presented here should enable the development of a new generation of biosensors, therapeutics and diagnostics.

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