Computers in Biology and Medicine
Volume 39, Issue 5 , Pages 460-473, May 2009

Classification of peptide mass fingerprint data by novel no-regret boosting method

  • Anna Gambin

      Affiliations

    • Institute of Informatics, Warsaw University, Banacha 2, 02-097 Warsaw, Poland
    • Corresponding Author InformationCorresponding author. Tel.: +48225544577.
  • ,
  • Ewa Szczurek

      Affiliations

    • Institute of Informatics, Warsaw University, Banacha 2, 02-097 Warsaw, Poland
    • Max Planck Institute for Molecular Genetics, Ihnestrasse 73, 14195 Berlin, Germany
  • ,
  • Janusz Dutkowski

      Affiliations

    • Institute of Informatics, Warsaw University, Banacha 2, 02-097 Warsaw, Poland
  • ,
  • Magda Bakun

      Affiliations

    • Institute of Biochemistry and Biophysics PAS, Pawińskiego 5A, 02-106 Warsaw, Poland
  • ,
  • Michał Dadlez

      Affiliations

    • Institute of Biochemistry and Biophysics PAS, Pawińskiego 5A, 02-106 Warsaw, Poland
    • Biology Department, Warsaw University, Miecznikowa 1, 02-096 Warsaw, Poland

Received 12 February 2007; accepted 5 March 2009.

Abstract 

We have developed an integrated tool for statistical analysis of large-scale LC-MS profiles of complex protein mixtures comprising a set of procedures for data processing, selection of biomarkers used in early diagnostic and classification of patients based on their peptide mass fingerprints.

Here, a novel boosting technique is proposed, which is embedded in our framework for MS data analysis. Our boosting scheme is based on Hannan-consistent game playing strategies. We analyze boosting from a game-theoretic perspective and define a new class of boosting algorithms called H-boosting methods.

In the experimental part of this work we apply the new classifier together with classical and state-of-the-art algorithms to classify ovarian cancer and cystic fibrosis patients based on peptide mass spectra.

The methods developed here provide automatic, general, and efficient means for processing of large scale LC-MS datasets. Good classification results suggest that our approach is able to uncover valuable information to support medical diagnosis.

Keywords: Mass spectrometry, Peptidomics, FTICR, LC-MS, Boosting, Classifier, Cystic fibrosis, Ovarian cancer

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PII: S0010-4825(09)00052-3

doi:10.1016/j.compbiomed.2009.03.006

Computers in Biology and Medicine
Volume 39, Issue 5 , Pages 460-473, May 2009