BMC Bioinformatics (Aug 2007)

Efficacy of different protein descriptors in predicting protein functional families

  • Li Ze,
  • Chen Yu,
  • Lin Hong,
  • Ong Serene AK,
  • Cao Zhiwei

DOI
https://doi.org/10.1186/1471-2105-8-300
Journal volume & issue
Vol. 8, no. 1
p. 300

Abstract

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Abstract Background Sequence-derived structural and physicochemical descriptors have frequently been used in machine learning prediction of protein functional families, thus there is a need to comparatively evaluate the effectiveness of these descriptor-sets by using the same method and parameter optimization algorithm, and to examine whether the combined use of these descriptor-sets help to improve predictive performance. Six individual descriptor-sets and four combination-sets were evaluated in support vector machines (SVM) prediction of six protein functional families. Results The performance of these descriptor-sets were ranked by Matthews correlation coefficient (MCC), and categorized into two groups based on their performance. While there is no overwhelmingly favourable choice of descriptor-sets, certain trends were found. The combination-sets tend to give slightly but consistently higher MCC values and thus overall best performance such that three out of four combination-sets show slightly better performance compared to one out of six individual descriptor-sets. Conclusion Our study suggests that currently used descriptor-sets are generally useful for classifying proteins and the prediction performance may be enhanced by exploring combinations of descriptors.