Literature DB >> 16196498

Proteomic cancer classification with mass spectrometry data.

Jagath C Rajapakse1, Kai-Bo Duan, Wee Kiang Yeo.   

Abstract

The ultimate goal of cancer proteomics is to adapt proteomic technologies for routine use in clinical laboratories for the purpose of diagnostic and prognostic classification of disease states, as well as in evaluating drug toxicity and efficacy. Analysis of tumor-specific proteomic profiles may also allow better understanding of tumor development and the identification of novel targets for cancer therapy. The biological variability among patient samples as well as the huge dynamic range of biomarker concentrations are currently the main challenges facing efforts to deduce diagnostic patterns that are unique to specific disease states. While several strategies exist to address this problem, we focus here on cancer classification using mass spectrometry (MS) for proteomic profiling and biomarker identification. Recent advances in MS technology are starting to enable high-throughput profiling of the protein content of complex samples. For cancer classification, the protein samples from cancer patients and noncancer patients or from different cancer stages are analyzed through MS instruments and the MS patterns are used to build a diagnostic classifier. To illustrate the importance of feature selection in cancer classification, we present a method based on support vector machine-recursive feature elimination (SVM-RFE), demonstrated on two cancer datasets from ovarian and lung cancer.

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Year:  2005        PMID: 16196498     DOI: 10.2165/00129785-200505050-00001

Source DB:  PubMed          Journal:  Am J Pharmacogenomics        ISSN: 1175-2203


  5 in total

Review 1.  Classification algorithms for phenotype prediction in genomics and proteomics.

Authors:  Habtom W Ressom; Rency S Varghese; Zhen Zhang; Jianhua Xuan; Robert Clarke
Journal:  Front Biosci       Date:  2008-01-01

Review 2.  Proteomic analysis in cancer research: potential application in clinical use.

Authors:  Jesús García-Foncillas; Eva Bandrés; Ruth Zárate; Natalia Remírez
Journal:  Clin Transl Oncol       Date:  2006-04       Impact factor: 3.405

3.  Identification of urinary modified nucleosides and ribosylated metabolites in humans via combined ESI-FTICR MS and ESI-IT MS analysis.

Authors:  Dino Bullinger; Richard Fux; Graeme Nicholson; Stefan Plontke; Claus Belka; Stefan Laufer; Christoph H Gleiter; Bernd Kammerer
Journal:  J Am Soc Mass Spectrom       Date:  2008-06-28       Impact factor: 3.109

Review 4.  Contribution of oncoproteomics to cancer biomarker discovery.

Authors:  William C S Cho
Journal:  Mol Cancer       Date:  2007-04-02       Impact factor: 27.401

5.  Ovarian cancer detection from metabolomic liquid chromatography/mass spectrometry data by support vector machines.

Authors:  Wei Guan; Manshui Zhou; Christina Y Hampton; Benedict B Benigno; L Deette Walker; Alexander Gray; John F McDonald; Facundo M Fernández
Journal:  BMC Bioinformatics       Date:  2009-08-22       Impact factor: 3.169

  5 in total

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