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Cross platform microarray analysis for robust identification of differentially expressed genes

BACKGROUND: Microarrays have been widely used for the analysis of gene expression and several commercial platforms are available. The combined use of multiple platforms can overcome the inherent biases of each approach, and may represent an alternative that is complementary to RT-PCR for identificat...

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Autores principales: Bosotti, Roberta, Locatelli, Giuseppe, Healy, Sandra, Scacheri, Emanuela, Sartori, Luca, Mercurio, Ciro, Calogero, Raffaele, Isacchi, Antonella
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2007
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1885857/
https://www.ncbi.nlm.nih.gov/pubmed/17430572
http://dx.doi.org/10.1186/1471-2105-8-S1-S5
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author Bosotti, Roberta
Locatelli, Giuseppe
Healy, Sandra
Scacheri, Emanuela
Sartori, Luca
Mercurio, Ciro
Calogero, Raffaele
Isacchi, Antonella
author_facet Bosotti, Roberta
Locatelli, Giuseppe
Healy, Sandra
Scacheri, Emanuela
Sartori, Luca
Mercurio, Ciro
Calogero, Raffaele
Isacchi, Antonella
author_sort Bosotti, Roberta
collection PubMed
description BACKGROUND: Microarrays have been widely used for the analysis of gene expression and several commercial platforms are available. The combined use of multiple platforms can overcome the inherent biases of each approach, and may represent an alternative that is complementary to RT-PCR for identification of the more robust changes in gene expression profiles. In this paper, we combined statistical and functional analysis for the cross platform validation of two oligonucleotide-based technologies, Affymetrix (AFFX) and Applied Biosystems (ABI), and for the identification of differentially expressed genes. RESULTS: In this study, we analysed differentially expressed genes after treatment of an ovarian carcinoma cell line with a cell cycle inhibitor. Treated versus control RNA was analysed for expression of 16425 genes represented on both platforms. We assessed reproducibility between replicates for each platform using CAT plots, and we found it high for both, with better scores for AFFX. We then applied integrative correlation analysis to assess reproducibility of gene expression patterns across studies, bypassing the need for normalizing expression measurements across platforms. We identified 930 genes as differentially expressed on AFFX and 908 on ABI, with ~80% common to both platforms. Despite the different absolute values, the range of intensities of the differentially expressed genes detected by each platform was similar. ABI showed a slightly higher dynamic range in FC values, which might be associated with its detection system. 62/66 genes identified as differentially expressed by Microarray were confirmed by RT-PCR. CONCLUSION: In this study we present a cross-platform validation of two oligonucleotide-based technologies, AFFX and ABI. We found good reproducibility between replicates, and showed that both platforms can be used to select differentially expressed genes with substantial agreement. Pathway analysis of the affected functions identified themes well in agreement with those expected for a cell cycle inhibitor, suggesting that this procedure is appropriate to facilitate the identification of biologically relevant signatures associated with compound treatment. The high rate of confirmation found for both common and platform-specific genes suggests that the combination of platforms may overcome biases related to probe design and technical features, thereby accelerating the identification of trustworthy differentially expressed genes.
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spelling pubmed-18858572007-06-05 Cross platform microarray analysis for robust identification of differentially expressed genes Bosotti, Roberta Locatelli, Giuseppe Healy, Sandra Scacheri, Emanuela Sartori, Luca Mercurio, Ciro Calogero, Raffaele Isacchi, Antonella BMC Bioinformatics Research BACKGROUND: Microarrays have been widely used for the analysis of gene expression and several commercial platforms are available. The combined use of multiple platforms can overcome the inherent biases of each approach, and may represent an alternative that is complementary to RT-PCR for identification of the more robust changes in gene expression profiles. In this paper, we combined statistical and functional analysis for the cross platform validation of two oligonucleotide-based technologies, Affymetrix (AFFX) and Applied Biosystems (ABI), and for the identification of differentially expressed genes. RESULTS: In this study, we analysed differentially expressed genes after treatment of an ovarian carcinoma cell line with a cell cycle inhibitor. Treated versus control RNA was analysed for expression of 16425 genes represented on both platforms. We assessed reproducibility between replicates for each platform using CAT plots, and we found it high for both, with better scores for AFFX. We then applied integrative correlation analysis to assess reproducibility of gene expression patterns across studies, bypassing the need for normalizing expression measurements across platforms. We identified 930 genes as differentially expressed on AFFX and 908 on ABI, with ~80% common to both platforms. Despite the different absolute values, the range of intensities of the differentially expressed genes detected by each platform was similar. ABI showed a slightly higher dynamic range in FC values, which might be associated with its detection system. 62/66 genes identified as differentially expressed by Microarray were confirmed by RT-PCR. CONCLUSION: In this study we present a cross-platform validation of two oligonucleotide-based technologies, AFFX and ABI. We found good reproducibility between replicates, and showed that both platforms can be used to select differentially expressed genes with substantial agreement. Pathway analysis of the affected functions identified themes well in agreement with those expected for a cell cycle inhibitor, suggesting that this procedure is appropriate to facilitate the identification of biologically relevant signatures associated with compound treatment. The high rate of confirmation found for both common and platform-specific genes suggests that the combination of platforms may overcome biases related to probe design and technical features, thereby accelerating the identification of trustworthy differentially expressed genes. BioMed Central 2007-03-08 /pmc/articles/PMC1885857/ /pubmed/17430572 http://dx.doi.org/10.1186/1471-2105-8-S1-S5 Text en Copyright © 2007 Bosotti et al; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an open access article distributed under the terms of the Creative Commons Attribution License ( (http://creativecommons.org/licenses/by/2.0) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research
Bosotti, Roberta
Locatelli, Giuseppe
Healy, Sandra
Scacheri, Emanuela
Sartori, Luca
Mercurio, Ciro
Calogero, Raffaele
Isacchi, Antonella
Cross platform microarray analysis for robust identification of differentially expressed genes
title Cross platform microarray analysis for robust identification of differentially expressed genes
title_full Cross platform microarray analysis for robust identification of differentially expressed genes
title_fullStr Cross platform microarray analysis for robust identification of differentially expressed genes
title_full_unstemmed Cross platform microarray analysis for robust identification of differentially expressed genes
title_short Cross platform microarray analysis for robust identification of differentially expressed genes
title_sort cross platform microarray analysis for robust identification of differentially expressed genes
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1885857/
https://www.ncbi.nlm.nih.gov/pubmed/17430572
http://dx.doi.org/10.1186/1471-2105-8-S1-S5
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