6533b858fe1ef96bd12b660d
RESEARCH PRODUCT
Peptide classification using optimal and information theoretic syntactic modeling
B.j. OommenEser AygünZehra Cataltepesubject
VDP::Mathematics and natural science: 400::Information and communication science: 420::Algorithms and computability theory: 4220206 medical engineeringSequence alignment02 engineering and technologySyntactic pattern recognitionInformation theorySubstitution matrix03 medical and health sciencesArtificial IntelligenceVDP::Medical disciplines: 700::Basic medical dental and veterinary science disciplines: 710::Medical molecular biology: 711030304 developmental biologyMathematicsProbability measure0303 health sciencesbusiness.industryPattern recognitionSimilitudeSupport vector machineSignal ProcessingComputer Vision and Pattern RecognitionArtificial intelligencebusinessClassifier (UML)Algorithm020602 bioinformaticsSoftwaredescription
Accepted version of an article published in the journal: Pattern Recognition. Published version available on Sciverse: http://dx.doi.org/10.1016/j.patcog.2010.05.022 We consider the problem of classifying peptides using the information residing in their syntactic representations. This problem, which has been studied for more than a decade, has typically been investigated using distance-based metrics that involve the edit operations required in the peptide comparisons. In this paper, we shall demonstrate that the Optimal and Information Theoretic (OIT) model of Oommen and Kashyap [22] applicable for syntactic pattern recognition can be used to tackle peptide classification problem. We advocate that one can model the differences between compared strings as a mutation model consisting of random substitutions, insertions and deletions obeying the OIT model. Thus, in this paper, we show that the probability measure obtained from the OIT model can be perceived as a sequence similarity metric, using which a support vector machine (SVM)-based peptide classifier can be devised. The classifier, which we have built has been tested for eight different substitution matrices and for two different data sets, namely, the HIV-1 Protease cleavage sites and the T-cell epitopes. The results show that the OIT model performs significantly better than the one which uses a Needleman-Wunsch sequence alignment score, it is less sensitive to the substitution matrix than the other methods compared, and that when combined with a SVM, is among the best peptide classification methods available
year | journal | country | edition | language |
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2010-11-01 |