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Bioinformatics Advance Access originally published online on November 15, 2005
Bioinformatics 2006 22(2):202-208; doi:10.1093/bioinformatics/bti779
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© The Author 2005. Published by Oxford University Press. All rights reserved. For Permissions, please email: journals.permissions{at}oxfordjournals.org

Classification of microarray data with factor mixture models

Francesca Martella

Dipartimento di Statistica, Probabilità e Statistiche Applicate, Universitá degli Studi di Roma "La Sapienza" P.le A. Moro, 5-00185, Rome, Italy

Motivation: The classification of few tissue samples on a very large number of genes represents a non-standard problem in statistics but a usual one in microarray expression data analysis. In fact, the dimension of the feature space (the number of genes) is typically much greater than the number of tissues. We consider high-density oligonucleotide microarray data, where the expression level is associated to an ‘absolute call’, which represents a qualitative indication of whether or not a transcript is detected within a sample. The ‘absolute call’ is generally not taken in consideration in analyses.

Results: In contrast to frequently used cluster analysis methods to analyze gene expression data, we consider a problem of classification of tissues and of the variables selection. We adopted methodologies formulated by Ghahramani and Hinton and Rocci and Vichi for simultaneous dimensional reduction of genes and classification of tissues; trying to identify genes (denominated ‘markers’) that are able to distinguish between two known different classes of tissue samples. In this respect, we propose a generalization of the approach proposed by McLachlan et al. by advising to estimate the distribution of log LR statistic for testing one versus two component hypothesis in the mixture model for each gene considered individually, using a parametric bootstrap approach. We compare conditional (on ‘absolute call’) and unconditional analyses performed on dataset described in Golub et al. We show that the proposed techniques improve the results of classification of tissue samples with respect to known results on the same benchmark dataset.

Availability: The software of Ghahramani and Hinton is written in Matlab and available in ‘Mixture of Factor Analyzers’ on http://www.gatsby.ucl.ac.uk/~zoubin/software.html while the software of Rocci and Vichi is available upon request from the authors.

Contact: francesca.martella{at}uniroma1.it


Received on February 11, 2005; revised on November 10, 2005; accepted on November 11, 2005

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