Literature DB >> 15117756

A mixture model-based strategy for selecting sets of genes in multiclass response microarray experiments.

Philippe Broët1, Alex Lewin, Sylvia Richardson, Cyril Dalmasso, Henri Magdelenat.   

Abstract

MOTIVATION: Multiclass response (MCR) experiments are those in which there are more than two classes to be compared. In these experiments, though the null hypothesis is simple, there are typically many patterns of gene expression changes across the different classes that led to complex alternatives. In this paper, we propose a new strategy for selecting genes in MCR that is based on a flexible mixture model for the marginal distribution of a modified F-statistic. Using this model, false positive and negative discovery rates can be estimated and combined to produce a rule for selecting a subset of genes. Moreover, the method proposed allows calculation of these rates for any predefined subset of genes.
RESULTS: We illustrate the performance our approach using simulated datasets and a real breast cancer microarray dataset. In this latter study, we investigate predefined subset of genes and point out interesting differences between three distinct biological pathways. AVAILABILITY: http://www.bgx.org.uk/software.html

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Year:  2004        PMID: 15117756     DOI: 10.1093/bioinformatics/bth285

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


  10 in total

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4.  The effects of normalization on the correlation structure of microarray data.

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7.  Bayesian models and meta analysis for multiple tissue gene expression data following corticosteroid administration.

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8.  Kerfdr: a semi-parametric kernel-based approach to local false discovery rate estimation.

Authors:  Mickael Guedj; Stephane Robin; Alain Celisse; Gregory Nuel
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9.  A constrained polynomial regression procedure for estimating the local False Discovery Rate.

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10.  MT-HESS: an efficient Bayesian approach for simultaneous association detection in OMICS datasets, with application to eQTL mapping in multiple tissues.

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  10 in total

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