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2SPG

TYPE III ANTIFREEZE PROTEIN ISOFORM HPLC 12 T15S

Summary for 2SPG
Entry DOI10.2210/pdb2spg/pdb
DescriptorPROTEIN (ANTIFREEZE PROTEIN TYPE III) (2 entities in total)
Functional Keywordsantifreeze protein, mutant, ice binding protein, thermal hysteresis protein
Biological sourceMacrozoarces americanus (ocean pout)
Total number of polymer chains1
Total formula weight6965.21
Authors
Graether, S.P.,Deluca, C.I.,Baardsnes, J.,Hill, G.A.,Davies, P.L.,Jia, Z. (deposition date: 1999-01-21, release date: 1999-04-28, Last modification date: 2023-08-30)
Primary citationGraether, S.P.,DeLuca, C.I.,Baardsnes, J.,Hill, G.A.,Davies, P.L.,Jia, Z.
Quantitative and qualitative analysis of type III antifreeze protein structure and function.
J.Biol.Chem., 274:11842-11847, 1999
Cited by
PubMed Abstract: Some cold water marine fishes avoid cellular damage because of freezing by expressing antifreeze proteins (AFPs) that bind to ice and inhibit its growth; one such protein is the globular type III AFP from eel pout. Despite several studies, the mechanism of ice binding remains unclear because of the difficulty in modeling the AFP-ice interaction. To further explore the mechanism, we have determined the x-ray crystallographic structure of 10 type III AFP mutants and combined that information with 7 previously determined structures to mainly analyze specific AFP-ice interactions such as hydrogen bonds. Quantitative assessment of binding was performed using a neural network with properties of the structure as input and predicted antifreeze activity as output. Using the cross-validation method, a correlation coefficient of 0.60 was obtained between measured and predicted activity, indicating successful learning and good predictive power. A large loss in the predictive power of the neural network occurred after properties related to the hydrophobic surface were left out, suggesting that van der Waal's interactions make a significant contribution to ice binding. By combining the analysis of the neural network with antifreeze activity and x-ray crystallographic structures of the mutants, we extend the existing ice-binding model to a two-step process: 1) probing of the surface for the correct ice-binding plane by hydrogen-bonding side chains and 2) attractive van der Waal's interactions between the other residues of the ice-binding surface and the ice, which increases the strength of the protein-ice interaction.
PubMed: 10207002
DOI: 10.1074/jbc.274.17.11842
PDB entries with the same primary citation
Experimental method
X-RAY DIFFRACTION (1.75 Å)
Structure validation

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