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Prediction of distal residue participation in enzyme catalysis
Author(s) -
Brodkin Heather R.,
DeLateur Nicholas A.,
Somarowthu Srinivas,
Mills Caitlyn L.,
Novak Walter R.,
Beuning Penny J.,
Ringe Dagmar,
Ondrechen Mary Jo
Publication year - 2015
Publication title -
protein science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.353
H-Index - 175
eISSN - 1469-896X
pISSN - 0961-8368
DOI - 10.1002/pro.2648
Subject(s) - pseudomonas putida , ketosteroid , isomerase , chemistry , active site , residue (chemistry) , enzyme , glucose 6 phosphate isomerase , enzyme kinetics , alkaline phosphatase , stereochemistry , biochemistry
A scoring method for the prediction of catalytically important residues in enzyme structures is presented and used to examine the participation of distal residues in enzyme catalysis. Scores are based on the Partial Order Optimum Likelihood (POOL) machine learning method, using computed electrostatic properties, surface geometric features, and information obtained from the phylogenetic tree as input features. Predictions of distal residue participation in catalysis are compared with experimental kinetics data from the literature on variants of the featured enzymes; some additional kinetics measurements are reported for variants of Pseudomonas putida nitrile hydratase (ppNH) and for E scherichia coli alkaline phosphatase (AP). The multilayer active sites of P . putida nitrile hydratase and of human phosphoglucose isomerase are predicted by the POOL log ZP scores, as is the single‐layer active site of P . putida ketosteroid isomerase. The log ZP score cutoff utilized here results in over‐prediction of distal residue involvement in E. coli alkaline phosphatase. While fewer experimental data points are available for P . putida mandelate racemase and for human carbonic anhydrase II, the POOL log ZP scores properly predict the previously reported participation of distal residues.