Literature DB >> 17540679

Statistical assessment of functional categories of genes deregulated in pathological conditions by using microarray data.

R Maglietta1, A Piepoli, D Catalano, F Licciulli, M Carella, S Liuni, G Pesole, F Perri, N Ancona.   

Abstract

MOTIVATION: A major challenge in current biomedical research is the identification of cellular processes deregulated in a given pathology through the analysis of gene expression profiles. To this end, predefined lists of genes, coding specific functions, are compared with a list of genes ordered according to their values of differential expression measured by suitable univariate statistics.
RESULTS: We propose a statistically well-founded method for measuring the relevance of predefined lists of genes and for assessing their statistical significance starting from their raw expression levels as recorded on the microarray. We use prediction accuracy as a measure of relevance of the list. The rationale is that a functional category, coded through a list of genes, is perturbed in a given pathology if it is possible to correctly predict the occurrence of the disease in new subjects on the basis of the expression levels of the genes belonging to the list only. The accuracy is estimated with multiple random validation strategy and its statistical significance is assessed against a couple of null hypothesis, by using two independent permutation tests. The utility of the proposed methodology is illustrated by analyzing the relevance of Gene Ontology terms belonging to biological process category in colon and prostate cancer, by using three different microarray data sets and by comparing it with current approaches. AVAILABILITY: Source code for the algorithms is available from author upon request. SUPPLEMENTARY INFORMATION: Colon cancer data set and a complete description of experimental results are available at: ftp://bioftp:76bioftpxxx@marx.ba.issia.cnr.it/supp-info.htm.

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Year:  2007        PMID: 17540679     DOI: 10.1093/bioinformatics/btm289

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


  13 in total

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4.  A predictive framework for integrating disparate genomic data types using sample-specific gene set enrichment analysis and multi-task learning.

Authors:  Brian D Bennett; Qing Xiong; Sayan Mukherjee; Terrence S Furey
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5.  Genome-wide Pathway Analysis Using Gene Expression Data of Colonic Mucosa in Patients with Inflammatory Bowel Disease.

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6.  Comparative study of gene set enrichment methods.

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10.  Biological and functional analysis of statistically significant pathways deregulated in colon cancer by using gene expression profiles.

Authors:  Angela Distaso; Luca Abatangelo; Rosalia Maglietta; Teresa Maria Creanza; Ada Piepoli; Massimo Carella; Annarita D'Addabbo; Nicola Ancona
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