Title :
Joint Bayesian hierarchical inversion-classification and application in proteomics
Author :
Szacherski, Pascal ; Giovannelli, Jean-François ; Grangeat, Pierre
Author_Institution :
CEA-LETI, Grenoble, France
Abstract :
In this paper, we combine inverse problem and classification for LC-MS data in a joint Bayesian context, given a set of biomarkers and the statistical characteristics of the biological classes. The data acquisition is modelled in a hierarchical way, including random decomposition of proteins into peptides and peptides into ions associated to peaks on the LC-MS measurement. A Bayesian global inversion, based on the hierarchical model for the direct problem, enables to take into account the biological and technological variabilities from those random processes and to estimate the parameters efficiently. We describe the statistical theoretical framework including the hierarchical direct model, the prior and posterior distributions and the estimators for the involved parameters. We resort to the MCMC algorithm and give preliminary results on a simulated data set.
Keywords :
Bayes methods; Markov processes; Monte Carlo methods; bioinformatics; chromatography; inverse problems; mass spectroscopic chemical analysis; pattern classification; proteomics; Bayesian global inversion; LC-MS data classification; MCMC algorithm; biological classes; biomarkers; data acquisition; hierarchical direct model; inverse problem; joint Bayesian hierarchical inversion classification; liquid chromatography-mass spectroscopy; proteomics; random protein decomposition; statistical characteristics; Biological system modeling; Estimation; Joints; Peptides; Proteins; Proteomics; Bayesian inversion; LC-MS; classification; hierarchical model; inverse problems; optimal estimation; proteomics; quantification;
Conference_Titel :
Statistical Signal Processing Workshop (SSP), 2011 IEEE
Conference_Location :
Nice
Print_ISBN :
978-1-4577-0569-4
DOI :
10.1109/SSP.2011.5967636