Journal of Applied Mathematics (Jan 2012)

Selecting Negative Samples for PPI Prediction Using Hierarchical Clustering Methodology

  • J. M. Urquiza,
  • I. Rojas,
  • H. Pomares,
  • J. Herrera,
  • J. P. Florido,
  • O. Valenzuela

DOI
https://doi.org/10.1155/2012/897289
Journal volume & issue
Vol. 2012

Abstract

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Protein-protein interactions (PPIs) play a crucial role in cellular processes. In the present work, a new approach is proposed to construct a PPI predictor training a support vector machine model through a mutual information filter-wrapper parallel feature selection algorithm and an iterative and hierarchical clustering to select a relevance negative training set. By means of a selected suboptimum set of features, the constructed support vector machine model is able to classify PPIs with high accuracy in any positive and negative datasets.