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Normalization and analysis of DNA microarray data by self-consistency and local regression

BACKGROUND: With the advent of DNA hybridization microarrays comes the remarkable ability, in principle, to simultaneously monitor the expression levels of thousands of genes. The quantiative comparison of two or more microarrays can reveal, for example, the distinct patterns of gene expression that...

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Detalles Bibliográficos
Autores principales: Kepler, Thomas B, Crosby, Lynn, Morgan, Kevin T
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2002
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC126242/
https://www.ncbi.nlm.nih.gov/pubmed/12184811
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author Kepler, Thomas B
Crosby, Lynn
Morgan, Kevin T
author_facet Kepler, Thomas B
Crosby, Lynn
Morgan, Kevin T
author_sort Kepler, Thomas B
collection PubMed
description BACKGROUND: With the advent of DNA hybridization microarrays comes the remarkable ability, in principle, to simultaneously monitor the expression levels of thousands of genes. The quantiative comparison of two or more microarrays can reveal, for example, the distinct patterns of gene expression that define different cellular phenotypes or the genes induced in the cellular response to insult or changing environmental conditions. Normalization of the measured intensities is a prerequisite of such comparisons, and indeed, of any statistical analysis, yet insufficient attention has been paid to its systematic study. The most straightforward normalization techniques in use rest on the implicit assumption of linear response between true expression level and output intensity. We find that these assumptions are not generally met, and that these simple methods can be improved. RESULTS: We have developed a robust semi-parametric normalization technique based on the assumption that the large majority of genes will not have their relative expression levels changed from one treatment group to the next, and on the assumption that departures of the response from linearity are small and slowly varying. We use local regression to estimate the normalized expression levels as well as the expression level-dependent error variance. CONCLUSIONS: We illustrate the use of this technique in a comparison of the expression profiles of cultured rat mesothelioma cells under control and under treatment with potassium bromate, validated using quantitative PCR on a selected set of genes. We tested the method using data simulated under various error models and find that it performs well.
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spelling pubmed-1262422002-09-25 Normalization and analysis of DNA microarray data by self-consistency and local regression Kepler, Thomas B Crosby, Lynn Morgan, Kevin T Genome Biol Research BACKGROUND: With the advent of DNA hybridization microarrays comes the remarkable ability, in principle, to simultaneously monitor the expression levels of thousands of genes. The quantiative comparison of two or more microarrays can reveal, for example, the distinct patterns of gene expression that define different cellular phenotypes or the genes induced in the cellular response to insult or changing environmental conditions. Normalization of the measured intensities is a prerequisite of such comparisons, and indeed, of any statistical analysis, yet insufficient attention has been paid to its systematic study. The most straightforward normalization techniques in use rest on the implicit assumption of linear response between true expression level and output intensity. We find that these assumptions are not generally met, and that these simple methods can be improved. RESULTS: We have developed a robust semi-parametric normalization technique based on the assumption that the large majority of genes will not have their relative expression levels changed from one treatment group to the next, and on the assumption that departures of the response from linearity are small and slowly varying. We use local regression to estimate the normalized expression levels as well as the expression level-dependent error variance. CONCLUSIONS: We illustrate the use of this technique in a comparison of the expression profiles of cultured rat mesothelioma cells under control and under treatment with potassium bromate, validated using quantitative PCR on a selected set of genes. We tested the method using data simulated under various error models and find that it performs well. BioMed Central 2002 2002-06-28 /pmc/articles/PMC126242/ /pubmed/12184811 Text en Copyright © 2002 Kepler et al., licensee BioMed Central Ltd
spellingShingle Research
Kepler, Thomas B
Crosby, Lynn
Morgan, Kevin T
Normalization and analysis of DNA microarray data by self-consistency and local regression
title Normalization and analysis of DNA microarray data by self-consistency and local regression
title_full Normalization and analysis of DNA microarray data by self-consistency and local regression
title_fullStr Normalization and analysis of DNA microarray data by self-consistency and local regression
title_full_unstemmed Normalization and analysis of DNA microarray data by self-consistency and local regression
title_short Normalization and analysis of DNA microarray data by self-consistency and local regression
title_sort normalization and analysis of dna microarray data by self-consistency and local regression
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC126242/
https://www.ncbi.nlm.nih.gov/pubmed/12184811
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