Automatic prediction of catalytic residues by modeling residue structural neighborhood.

BMC Bioinformatics

Information Engineering and Computer Science Department, via Sommarive 14 - I38100 (Povo) Trento, Italy.

Published: March 2010

AI Article Synopsis

  • The study focuses on predicting catalytic residues in enzymes, which is crucial for understanding enzyme function, but poses challenges due to the complexity of residue roles and the imbalance between catalytic and non-catalytic residues.
  • Researchers created a new method that models spherical regions around candidate residues to capture significant structural information, such as physico-chemical properties and atomic density, and combined this with sequence-based and 3D structural features for classification.
  • The results showed that this structure-based method outperformed existing techniques across various datasets, highlighting the importance of the surrounding structural information, particularly the presence of heterogens, for improving prediction accuracy.

Article Abstract

Background: Prediction of catalytic residues is a major step in characterizing the function of enzymes. In its simpler formulation, the problem can be cast into a binary classification task at the residue level, by predicting whether the residue is directly involved in the catalytic process. The task is quite hard also when structural information is available, due to the rather wide range of roles a functional residue can play and to the large imbalance between the number of catalytic and non-catalytic residues.

Results: We developed an effective representation of structural information by modeling spherical regions around candidate residues, and extracting statistics on the properties of their content such as physico-chemical properties, atomic density, flexibility, presence of water molecules. We trained an SVM classifier combining our features with sequence-based information and previously developed 3D features, and compared its performance with the most recent state-of-the-art approaches on different benchmark datasets. We further analyzed the discriminant power of the information provided by the presence of heterogens in the residue neighborhood.

Conclusions: Our structure-based method achieves consistent improvements on all tested datasets over both sequence-based and structure-based state-of-the-art approaches. Structural neighborhood information is shown to be responsible for such results, and predicting the presence of nearby heterogens seems to be a promising direction for further improvements.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC2844391PMC
http://dx.doi.org/10.1186/1471-2105-11-115DOI Listing

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