Title
From sequence to enzyme mechanism using multi-label machine learning.
Abstract
In this work we predict enzyme function at the level of chemical mechanism, providing a finer granularity of annotation than traditional Enzyme Commission (EC) classes. Hence we can predict not only whether a putative enzyme in a newly sequenced organism has the potential to perform a certain reaction, but how the reaction is performed, using which cofactors and with susceptibility to which drugs or inhibitors, details with important consequences for drug and enzyme design. Work that predicts enzyme catalytic activity based on 3D protein structure features limits the prediction of mechanism to proteins already having either a solved structure or a close relative suitable for homology modelling.In this study, we evaluate whether sequence identity, InterPro or Catalytic Site Atlas sequence signatures provide enough information for bulk prediction of enzyme mechanism. By splitting MACiE (Mechanism, Annotation and Classification in Enzymes database) mechanism labels to a finer granularity, which includes the role of the protein chain in the overall enzyme complex, the method can predict at 96% accuracy (and 96% micro-averaged precision, 99.9% macro-averaged recall) the MACiE mechanism definitions of 248 proteins available in the MACiE, EzCatDb (Database of Enzyme Catalytic Mechanisms) and SFLD (Structure Function Linkage Database) databases using an off-the-shelf K-Nearest Neighbours multi-label algorithm.We find that InterPro signatures are critical for accurate prediction of enzyme mechanism. We also find that incorporating Catalytic Site Atlas attributes does not seem to provide additional accuracy. The software code (ml2db), data and results are available online at http://sourceforge.net/projects/ml2db/ and as supplementary files.
Year
DOI
Venue
2014
10.1186/1471-2105-15-150
BMC Bioinformatics
Keywords
Field
DocType
bioinformatics,catalysis,algorithms,protein conformation,artificial intelligence,enzymes,microarrays
Data mining,Enzyme Commission number,Enzyme,Annotation,Computer science,Enzyme Commission,Granularity,Bioinformatics,Genetics,DNA microarray,InterPro,Protein structure
Journal
Volume
Issue
ISSN
15
1
1471-2105
Citations 
PageRank 
References 
5
0.36
35
Authors
2
Name
Order
Citations
PageRank
Luna De Ferrari1211.61
John B O Mitchell238432.48