NClassG+: A classifier for non-classically secreted Gram-positive bacterial proteins Academic Article

abstract

  • Background: Most predictive methods currently available for the identification of protein secretion mechanisms have focused on classically secreted proteins. In fact, only two methods have been reported for predicting non-classically secreted proteins of Gram-positive bacteria. This study describes the implementation of a sequence-based classifier, denoted as NClassG+, for identifying non-classically secreted Gram-positive bacterial proteins.Results: Several feature-based classifiers were trained using different sequence transformation vectors (frequencies, dipeptides, physicochemical factors and PSSM) and Support Vector Machines (SVMs) with Linear, Polynomial and Gaussian kernel functions. Nested k-fold cross-validation (CV) was applied to select the best models, using the inner CV loop to tune the model parameters and the outer CV group to compute the error. The parameters and Kernel functions and the combinations between all possible feature vectors were optimized using grid search.Conclusions: The final model was tested against an independent set not previously seen by the model, obtaining better predictive performance compared to SecretomeP V2.0 and SecretPV2.0 for the identification of non-classically secreted proteins. NClassG+ is freely available on the web at http://www.biolisi.unal.edu.co/web-servers/nclassgpositive/. © 2011 Restrepo-Montoya et al; licensee BioMed Central Ltd.

publication date

  • 2011/1/14

keywords

  • Background
  • Bacteria
  • Bacterial Proteins
  • Classifier
  • Classifiers
  • Cross-validation
  • Dipeptides
  • Feature Vector
  • Fold
  • Gaussian Function
  • Gaussian Kernel
  • Gram-Positive Bacteria
  • Grid
  • Independent Set
  • Kernel Function
  • Model
  • Polynomial
  • Polynomials
  • Protein
  • Proteins
  • Secretion
  • Servers
  • Support Vector Machine
  • Support vector machines
  • Web Server

International Standard Serial Number (ISSN)

  • 1471-2105