We recently reported that one may be able to predict with high accuracy the chemical mechanism of an enzyme by employing a simple pattern recognition approach: a k Nearest Neighbour rule with k=1 (k1NN) and 321 InterPro sequence signatures as enzyme features. The nearest-neighbour rule is known to be highly sensitive to errors in the training data, in particular when the available training dataset is small. This was the case in our previous study, in which our dataset comprised 248 enzymes annotated against 71 enzymatic mechanism labels from MACiE. In the current study, we have carefully re-analysed our dataset and prediction results to “explain” why a high variance k1NN rule exhibited such remarkable classification performance. We find tha...
Background: A number of studies have used protein interaction data alone for protein function predic...
Identification of catalytic residues can help unveil interesting attributes of enzyme function for v...
International audienceUsing a previously developed automated method for enzyme annotation, we report...
Background: In this work we predict enzyme function at the level of chemical mechanism, providing a ...
First, we identify InterPro sequence signatures representing evolutionary relatedness and, second, s...
We identify, firstly, InterPro sequence signatures representing evolutionary relatedness and, second...
In this work we use InterPro protein signatures to predict enzymatic function.We evaluate the method...
W’e describe a novel approach for predicting the func-tion of a protein from its amino-acid sequence...
We present an enzyme protein function identification algorithm, Catalytic Site Identification (CatSI...
Background: We investigate the relationships between the EC (Enzyme Commission) class, the associate...
Motivation: The enzyme nomenclature system, commonly known as the enzyme commission (EC) number, pla...
Background: Structural genomics projects such as the Protein Structure Initiative (PSI) yield many n...
Summary. Protein function prediction, i.e. classification of protein sequences according to their bi...
The number of protein structures in the PDB database has been increasing more than 15-fold since 199...
Background The central element of each enzyme is the catalytic site, which commonly catalyzes a sing...
Background: A number of studies have used protein interaction data alone for protein function predic...
Identification of catalytic residues can help unveil interesting attributes of enzyme function for v...
International audienceUsing a previously developed automated method for enzyme annotation, we report...
Background: In this work we predict enzyme function at the level of chemical mechanism, providing a ...
First, we identify InterPro sequence signatures representing evolutionary relatedness and, second, s...
We identify, firstly, InterPro sequence signatures representing evolutionary relatedness and, second...
In this work we use InterPro protein signatures to predict enzymatic function.We evaluate the method...
W’e describe a novel approach for predicting the func-tion of a protein from its amino-acid sequence...
We present an enzyme protein function identification algorithm, Catalytic Site Identification (CatSI...
Background: We investigate the relationships between the EC (Enzyme Commission) class, the associate...
Motivation: The enzyme nomenclature system, commonly known as the enzyme commission (EC) number, pla...
Background: Structural genomics projects such as the Protein Structure Initiative (PSI) yield many n...
Summary. Protein function prediction, i.e. classification of protein sequences according to their bi...
The number of protein structures in the PDB database has been increasing more than 15-fold since 199...
Background The central element of each enzyme is the catalytic site, which commonly catalyzes a sing...
Background: A number of studies have used protein interaction data alone for protein function predic...
Identification of catalytic residues can help unveil interesting attributes of enzyme function for v...
International audienceUsing a previously developed automated method for enzyme annotation, we report...