Logo
Search for

Volume 99, Issue 2, Pages 147-153 (August 2010)


View previous. 3 of 8 View next.

An intensity-region driven multi-classifier scheme for improving the classification accuracy of proteomic MS-spectra

Panagiotis BougioukosaCorresponding Author Informationemail address, Dimitris Glotsosb, Dionisis Cavourasb, Antonis Daskalakisa, Ioannis Kalatzisb, Spiros Kostopoulosa, George Nikiforidisa, Anastasios Bezerianosa

Received 1 August 2008; received in revised form 26 October 2009; accepted 4 November 2009.

Abstract 

In this study, a pattern recognition system is presented for improving the classification accuracy of MS-spectra by means of gathering information from different MS-spectra intensity regions using a majority vote ensemble combination. The method starts by automatically breaking down all MS-spectra into common intensity regions. Subsequently, the most informative features (m/z values), which might constitute potential significant biomarkers, are extracted from each common intensity region over all the MS-spectra and, finally, normal from ovarian cancer MS-spectra are discriminated using a multi-classifier scheme, with members the Support Vector Machine, the Probabilistic Neural Network and the k-Nearest Neighbour classifiers. Clinical material was obtained from the publicly available ovarian proteomic dataset (8-7-02). To ensure robust and reliable estimates, the proposed pattern recognition system was evaluated using an external cross-validation process. The average overall performance of the system in discriminating normal from cancer ovarian MS-spectra was 97.18% with 98.52% mean sensitivity and 94.84% mean specificity values.

a Department of Medical Physics, School of Medicine, University of Patras, GR-26504 Patras, Rio, Greece

b Medical Signal and Image Processing Lab, Department of Medical Instruments Technology, Technological Educational Institute of Athens, Greece

Corresponding Author InformationCorresponding author. Tel.: +30 2610 996114.

PII: S0169-2607(09)00293-4

doi:10.1016/j.cmpb.2009.11.003


View previous. 3 of 8 View next.