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Article
Analysis of Mass Spectral Serum Profiles for Biomarker Selection
Bioinformatics
  • Habtom W. Ressom
  • Rency S. Varghese
  • Mohamed Abdel-Hamid
  • Sohair Abdel-Latif Eissa
  • Daniel Saha
  • Lenka Goldman
  • Emanuel F. Petricoin
  • Thomas P. Conrads
  • Timothy D. Veenstra, Cedarville University
  • Christopher A. Loffredo
  • et al
Document Type
Article
Publication Date
9-13-2005
DOI
10.1093/bioinformatics/bti670
Abstract

Motivation: Mass spectrometric profiles of peptides and proteins obtained by current technologies are characterized by complex spectra, high dimensionality and substantial noise. These characteristics generate challenges in the discovery of proteins and protein-profiles that distinguish disease states, e.g. cancer patients from healthy individuals. We present low-level methods for the processing of mass spectral data and a machine learning method that combines support vector machines, with particle swarm optimization for biomarker selection.

Results: The proposed method identified mass points that achieved high prediction accuracy in distinguishing liver cancer patients from healthy individuals in SELDI-QqTOF profiles of serum.

Availability: MATLAB scripts to implement the methods described in this paper are available from the HWR's lab website http://lombardi.georgetown.edu/labpage

Contact:hwr@georgetown.edu

Keywords
  • Biomarker,
  • mass spectrometry,
  • peptides,
  • proteins,
  • spectrum,
  • serum
Citation Information
Habtom W. Ressom, Rency S. Varghese, Mohamed Abdel-Hamid, Sohair Abdel-Latif Eissa, et al.. "Analysis of Mass Spectral Serum Profiles for Biomarker Selection" Bioinformatics Vol. 21 Iss. 21 (2005) p. 4039 - 4045
Available at: http://works.bepress.com/timothy-veenstra/234/