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Article Dans Une Revue Journal de la Société Française de Statistique Année : 2010

Peaks detection and alignment for mass spectrometry data

Résumé

The goal of this paper is to review existing methods for protein mass spectrometry data analysis, and to present a new methodology for automatic extraction of significant peaks (biomarkers). For the pre-processing step required for data from MALDI-TOF or SELDI-TOF spectra, we use a purely nonparametric approach that combines stationary invariant wavelet transform for noise removal and penalized spline quantile regression for baseline correction. We further present a multi-scale spectra alignment technique that is based on identification of statistically significant peaks from a set of spectra. This method allows one to find common peaks in a set of spectra that can subsequently be mapped to individual proteins. This may serve as useful biomarkers in medical applications, or as individual features for further multidimensional statistical analysis. MALDI-TOF spectra obtained from serum samples are used throughout the paper to illustrate the methodology.
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Dates et versions

hal-00629178 , version 1 (05-10-2011)

Identifiants

  • HAL Id : hal-00629178 , version 1

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Anestis Antoniadis, Jérémie Bigot, Sophie Lambert-Lacroix. Peaks detection and alignment for mass spectrometry data. Journal de la Société Française de Statistique, 2010, 151 (1), pp.17-37. ⟨hal-00629178⟩
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