Cargando…

Effect of various normalization methods on Applied Biosystems expression array system data

BACKGROUND: DNA microarray technology provides a powerful tool for characterizing gene expression on a genome scale. While the technology has been widely used in discovery-based medical and basic biological research, its direct application in clinical practice and regulatory decision-making has been...

Descripción completa

Detalles Bibliográficos
Autores principales: Barbacioru, Catalin C, Wang, Yulei, Canales, Roger D, Sun, Yongming A, Keys, David N, Chan, Frances, Poulter, Karen A, Samaha, Raymond R
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2006
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1764432/
https://www.ncbi.nlm.nih.gov/pubmed/17173684
http://dx.doi.org/10.1186/1471-2105-7-533
_version_ 1782131612965666816
author Barbacioru, Catalin C
Wang, Yulei
Canales, Roger D
Sun, Yongming A
Keys, David N
Chan, Frances
Poulter, Karen A
Samaha, Raymond R
author_facet Barbacioru, Catalin C
Wang, Yulei
Canales, Roger D
Sun, Yongming A
Keys, David N
Chan, Frances
Poulter, Karen A
Samaha, Raymond R
author_sort Barbacioru, Catalin C
collection PubMed
description BACKGROUND: DNA microarray technology provides a powerful tool for characterizing gene expression on a genome scale. While the technology has been widely used in discovery-based medical and basic biological research, its direct application in clinical practice and regulatory decision-making has been questioned. A few key issues, including the reproducibility, reliability, compatibility and standardization of microarray analysis and results, must be critically addressed before any routine usage of microarrays in clinical laboratory and regulated areas can occur. In this study we investigate some of these issues for the Applied Biosystems Human Genome Survey Microarrays. RESULTS: We analyzed the gene expression profiles of two samples: brain and universal human reference (UHR), a mixture of RNAs from 10 cancer cell lines, using the Applied Biosystems Human Genome Survey Microarrays. Five technical replicates in three different sites were performed on the same total RNA samples according to manufacturer's standard protocols. Five different methods, quantile, median, scale, VSN and cyclic loess were used to normalize AB microarray data within each site. 1,000 genes spanning a wide dynamic range in gene expression levels were selected for real-time PCR validation. Using the TaqMan(® )assays data set as the reference set, the performance of the five normalization methods was evaluated focusing on the following criteria: (1) Sensitivity and reproducibility in detection of expression; (2) Fold change correlation with real-time PCR data; (3) Sensitivity and specificity in detection of differential expression; (4) Reproducibility of differentially expressed gene lists. CONCLUSION: Our results showed a high level of concordance between these normalization methods. This is true, regardless of whether signal, detection, variation, fold change measurements and reproducibility were interrogated. Furthermore, we used TaqMan(® )assays as a reference, to generate TPR and FDR plots for the various normalization methods across the assay range. Little impact is observed on the TP and FP rates in detection of differentially expressed genes. Additionally, little effect was observed by the various normalization methods on the statistical approaches analyzed which indicates a certain robustness of the analysis methods currently in use in the field, particularly when used in conjunction with the Applied Biosystems Gene Expression System.
format Text
id pubmed-1764432
institution National Center for Biotechnology Information
language English
publishDate 2006
publisher BioMed Central
record_format MEDLINE/PubMed
spelling pubmed-17644322007-01-06 Effect of various normalization methods on Applied Biosystems expression array system data Barbacioru, Catalin C Wang, Yulei Canales, Roger D Sun, Yongming A Keys, David N Chan, Frances Poulter, Karen A Samaha, Raymond R BMC Bioinformatics Research Article BACKGROUND: DNA microarray technology provides a powerful tool for characterizing gene expression on a genome scale. While the technology has been widely used in discovery-based medical and basic biological research, its direct application in clinical practice and regulatory decision-making has been questioned. A few key issues, including the reproducibility, reliability, compatibility and standardization of microarray analysis and results, must be critically addressed before any routine usage of microarrays in clinical laboratory and regulated areas can occur. In this study we investigate some of these issues for the Applied Biosystems Human Genome Survey Microarrays. RESULTS: We analyzed the gene expression profiles of two samples: brain and universal human reference (UHR), a mixture of RNAs from 10 cancer cell lines, using the Applied Biosystems Human Genome Survey Microarrays. Five technical replicates in three different sites were performed on the same total RNA samples according to manufacturer's standard protocols. Five different methods, quantile, median, scale, VSN and cyclic loess were used to normalize AB microarray data within each site. 1,000 genes spanning a wide dynamic range in gene expression levels were selected for real-time PCR validation. Using the TaqMan(® )assays data set as the reference set, the performance of the five normalization methods was evaluated focusing on the following criteria: (1) Sensitivity and reproducibility in detection of expression; (2) Fold change correlation with real-time PCR data; (3) Sensitivity and specificity in detection of differential expression; (4) Reproducibility of differentially expressed gene lists. CONCLUSION: Our results showed a high level of concordance between these normalization methods. This is true, regardless of whether signal, detection, variation, fold change measurements and reproducibility were interrogated. Furthermore, we used TaqMan(® )assays as a reference, to generate TPR and FDR plots for the various normalization methods across the assay range. Little impact is observed on the TP and FP rates in detection of differentially expressed genes. Additionally, little effect was observed by the various normalization methods on the statistical approaches analyzed which indicates a certain robustness of the analysis methods currently in use in the field, particularly when used in conjunction with the Applied Biosystems Gene Expression System. BioMed Central 2006-12-15 /pmc/articles/PMC1764432/ /pubmed/17173684 http://dx.doi.org/10.1186/1471-2105-7-533 Text en Copyright © 2006 Barbacioru 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 Article
Barbacioru, Catalin C
Wang, Yulei
Canales, Roger D
Sun, Yongming A
Keys, David N
Chan, Frances
Poulter, Karen A
Samaha, Raymond R
Effect of various normalization methods on Applied Biosystems expression array system data
title Effect of various normalization methods on Applied Biosystems expression array system data
title_full Effect of various normalization methods on Applied Biosystems expression array system data
title_fullStr Effect of various normalization methods on Applied Biosystems expression array system data
title_full_unstemmed Effect of various normalization methods on Applied Biosystems expression array system data
title_short Effect of various normalization methods on Applied Biosystems expression array system data
title_sort effect of various normalization methods on applied biosystems expression array system data
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1764432/
https://www.ncbi.nlm.nih.gov/pubmed/17173684
http://dx.doi.org/10.1186/1471-2105-7-533
work_keys_str_mv AT barbaciorucatalinc effectofvariousnormalizationmethodsonappliedbiosystemsexpressionarraysystemdata
AT wangyulei effectofvariousnormalizationmethodsonappliedbiosystemsexpressionarraysystemdata
AT canalesrogerd effectofvariousnormalizationmethodsonappliedbiosystemsexpressionarraysystemdata
AT sunyongminga effectofvariousnormalizationmethodsonappliedbiosystemsexpressionarraysystemdata
AT keysdavidn effectofvariousnormalizationmethodsonappliedbiosystemsexpressionarraysystemdata
AT chanfrances effectofvariousnormalizationmethodsonappliedbiosystemsexpressionarraysystemdata
AT poulterkarena effectofvariousnormalizationmethodsonappliedbiosystemsexpressionarraysystemdata
AT samaharaymondr effectofvariousnormalizationmethodsonappliedbiosystemsexpressionarraysystemdata