Title
Prediction of metabolic reactions based on atomic and molecular properties of small-molecule compounds.
Abstract
Our knowledge of the metabolites in cells and their reactions is far from complete as revealed by metabolomic measurements that detect many more small molecules than are documented in metabolic databases. Here, we develop an approach for predicting the reactivity of small-molecule metabolites in enzyme-catalyzed reactions that combines expert knowledge, computational chemistry and machine learning.We classified 4843 reactions documented in the KEGG database, from all six Enzyme Commission classes (EC 1-6), into 80 reaction classes, each of which is marked by a characteristic functional group transformation. Reaction centers and surrounding local structures in substrates and products of these reactions were represented using SMARTS. We found that each of the SMARTS-defined chemical substructures is widely distributed among metabolites, but only a fraction of the functional groups in these substructures are reactive. Using atomic properties of atoms in a putative reaction center and molecular properties as features, we trained support vector machine (SVM) classifiers to discriminate between functional groups that are reactive and non-reactive. Classifier accuracy was assessed by cross-validation analysis. A typical sensitivity [TP/(TP+FN)] or specificity [TN/(TN+FP)] is ≈0.8. Our results suggest that metabolic reactivity of small-molecule compounds can be predicted with reasonable accuracy based on the presence of a potentially reactive functional group and the chemical features of its local environment.The classifiers presented here can be used to predict reactions via a web site (http://cellsignaling.lanl.gov/Reactivity/). The web site is freely available.
Year
DOI
Venue
2011
10.1093/bioinformatics/btr177
Bioinformatics
Keywords
Field
DocType
putative reaction center,molecular property,web site,smarts-defined chemical substructure,reactive functional group,functional group,characteristic functional group transformation,metabolic reaction,enzyme-catalyzed reaction,reaction class,small-molecule compound,reaction center,small-molecule metabolites,artificial intelligence,computational biology,metabolomics,molecular structure,classification,metabolome,enzymes,biocatalysis
Metabolome,Data mining,Enzyme,Molecule,Computer science,Support vector machine,Metabolomics,Small molecule,KEGG,Biocatalysis,Bioinformatics
Journal
Volume
Issue
ISSN
27
11
1367-4811
Citations 
PageRank 
References 
8
0.53
13
Authors
4
Name
Order
Citations
PageRank
Fangping Mu1464.62
Clifford J Unkefer2232.20
Pat J Unkefer3292.38
William S. Hlavacek427724.15