9O9W | pdb_00009o9w

Crystal structure of an alpha/beta-hydrolase from Actinoplanes sp. DH11


Experimental Data Snapshot

  • Method: X-RAY DIFFRACTION
  • Resolution: 1.76 Å
  • R-Value Free: 
    0.199 (Depositor), 0.209 (DCC) 
  • R-Value Work: 
    0.161 (Depositor), 0.173 (DCC) 
  • R-Value Observed: 
    0.163 (Depositor) 

Starting Model: experimental
View more details

wwPDB Validation   3D Report Full Report


Ligand Structure Quality Assessment 


This is version 1.0 of the entry. See complete history


Literature

Machine Learning-Guided Identification of PET Hydrolases from Natural Diversity.

Norton-Baker, B.Komp, E.Gado, J.E.Denton, M.C.R.Mathews, I.I.Murphy, N.P.Erickson, E.Storment, O.O.Sarangi, R.Gauthier, N.P.McGeehan, J.E.Beckham, G.T.

(2025) ACS Catal 15: 16070-16083

  • DOI: https://doi.org/10.1021/acscatal.5c03460
  • Primary Citation of Related Structures:  
    9O9W

  • PubMed Abstract: 

    The enzymatic depolymerization of poly-(ethylene terephthalate) (PET) is emerging as a leading chemical recycling technology for waste polyester. As part of this endeavor, new candidate enzymes identified from natural diversity can serve as useful starting points for enzyme evolution and engineering. In this study, we improved upon HMM searches by applying an iterative machine learning strategy to identify 400 putative PET-degrading enzymes (PET hydrolases) from naturally occurring homologs. Using high-throughput (HTP) experimental techniques, we successfully expressed and purified >200 enzyme candidates and assayed them for PET hydrolysis activity as a function of pH, temperature, and substrate crystallinity. From this library, we discovered 91 previously unknown PET hydrolases, 35 of which retain activity at pH 4.5 on crystalline material, which are conditions relevant to developing more efficient commercial processes. Notably, four enzymes showed equal to or higher activity than LCC-ICCG, a benchmark PET hydrolase, at this challenging condition in our screening assay, and 11 of which have pH optima <7. Using these data, we identified regions of PETases statistically correlated to activity at lower pH. We additionally investigated the effect of condition-specific activity data on trained machine learning predictors and found a precision (putative hit rate) improvement of up to 30% compared to a Hidden Markov Model alone. Our findings show that by pointing enzyme discovery toward conditions of interest with multiple rounds of experimental and machine learning, we can discover large sets of active enzymes and explore factors associated with activity at those conditions.


  • Organizational Affiliation
    • Renewable Resources and Enabling Sciences Center, National Renewable Energy Laboratory, Golden, Colorado 80401, United States.

Macromolecules
Find similar proteins by:  (by identity cutoff)  |  3D Structure
Entity ID: 1
MoleculeChains Sequence LengthOrganismDetailsImage
poly(ethylene terephthalate) hydrolase
A, B
269Actinoplanes sp. DH11Mutation(s): 0 
EC: 3.1.1.101
UniProt
Find proteins for A0A2T0JSX8 (Actinoplanes italicus)
Explore A0A2T0JSX8 
Go to UniProtKB:  A0A2T0JSX8
Entity Groups  
Sequence Clusters30% Identity50% Identity70% Identity90% Identity95% Identity100% Identity
UniProt GroupA0A2T0JSX8
Sequence Annotations
Expand
  • Reference Sequence
Experimental Data & Validation

Experimental Data

  • Method: X-RAY DIFFRACTION
  • Resolution: 1.76 Å
  • R-Value Free:  0.199 (Depositor), 0.209 (DCC) 
  • R-Value Work:  0.161 (Depositor), 0.173 (DCC) 
  • R-Value Observed: 0.163 (Depositor) 
Space Group: P 32 2 1
Unit Cell:
Length ( Å )Angle ( ˚ )
a = 87.25α = 90
b = 87.25β = 90
c = 148.87γ = 120
Software Package:
Software NamePurpose
REFMACrefinement
XSCALEdata scaling
XDSdata reduction
MOLREPphasing

Structure Validation

View Full Validation Report



Ligand Structure Quality Assessment 


Entry History & Funding Information

Deposition Data


Funding OrganizationLocationGrant Number
Department of Energy (DOE, United States)United StatesDE-AC02-76SF00515
National Institutes of Health/National Institute of General Medical Sciences (NIH/NIGMS)United StatesP30GM133894
Department of Energy (DOE, United States)United StatesDE-SC0022024
Department of Energy (DOE, United States)United StatesDE-AC36-08GO28308

Revision History  (Full details and data files)

  • Version 1.0: 2025-10-08
    Type: Initial release