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Analysis of host response to bacterial infection using error model based gene expression microarray experiments

A key step in the analysis of microarray data is the selection of genes that are differentially expressed. Ideally, such experiments should be properly replicated in order to infer both technical and biological variability, and the data should be subjected to rigorous hypothesis tests to identify th...

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Autores principales: Stekel, Dov J., Sarti, Donatella, Trevino, Victor, Zhang, Lihong, Salmon, Mike, Buckley, Chris D., Stevens, Mark, Pallen, Mark J., Penn, Charles, Falciani, Francesco
Formato: Texto
Lenguaje:English
Publicado: Oxford University Press 2005
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1072804/
https://www.ncbi.nlm.nih.gov/pubmed/15800204
http://dx.doi.org/10.1093/nar/gni050
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author Stekel, Dov J.
Sarti, Donatella
Trevino, Victor
Zhang, Lihong
Salmon, Mike
Buckley, Chris D.
Stevens, Mark
Pallen, Mark J.
Penn, Charles
Falciani, Francesco
author_facet Stekel, Dov J.
Sarti, Donatella
Trevino, Victor
Zhang, Lihong
Salmon, Mike
Buckley, Chris D.
Stevens, Mark
Pallen, Mark J.
Penn, Charles
Falciani, Francesco
author_sort Stekel, Dov J.
collection PubMed
description A key step in the analysis of microarray data is the selection of genes that are differentially expressed. Ideally, such experiments should be properly replicated in order to infer both technical and biological variability, and the data should be subjected to rigorous hypothesis tests to identify the differentially expressed genes. However, in microarray experiments involving the analysis of very large numbers of biological samples, replication is not always practical. Therefore, there is a need for a method to select differentially expressed genes in a rational way from insufficiently replicated data. In this paper, we describe a simple method that uses bootstrapping to generate an error model from a replicated pilot study that can be used to identify differentially expressed genes in subsequent large-scale studies on the same platform, but in which there may be no replicated arrays. The method builds a stratified error model that includes array-to-array variability, feature-to-feature variability and the dependence of error on signal intensity. We apply this model to the characterization of the host response in a model of bacterial infection of human intestinal epithelial cells. We demonstrate the effectiveness of error model based microarray experiments and propose this as a general strategy for a microarray-based screening of large collections of biological samples.
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spelling pubmed-10728042005-03-31 Analysis of host response to bacterial infection using error model based gene expression microarray experiments Stekel, Dov J. Sarti, Donatella Trevino, Victor Zhang, Lihong Salmon, Mike Buckley, Chris D. Stevens, Mark Pallen, Mark J. Penn, Charles Falciani, Francesco Nucleic Acids Res Methods Online A key step in the analysis of microarray data is the selection of genes that are differentially expressed. Ideally, such experiments should be properly replicated in order to infer both technical and biological variability, and the data should be subjected to rigorous hypothesis tests to identify the differentially expressed genes. However, in microarray experiments involving the analysis of very large numbers of biological samples, replication is not always practical. Therefore, there is a need for a method to select differentially expressed genes in a rational way from insufficiently replicated data. In this paper, we describe a simple method that uses bootstrapping to generate an error model from a replicated pilot study that can be used to identify differentially expressed genes in subsequent large-scale studies on the same platform, but in which there may be no replicated arrays. The method builds a stratified error model that includes array-to-array variability, feature-to-feature variability and the dependence of error on signal intensity. We apply this model to the characterization of the host response in a model of bacterial infection of human intestinal epithelial cells. We demonstrate the effectiveness of error model based microarray experiments and propose this as a general strategy for a microarray-based screening of large collections of biological samples. Oxford University Press 2005 2005-03-30 /pmc/articles/PMC1072804/ /pubmed/15800204 http://dx.doi.org/10.1093/nar/gni050 Text en © The Author 2005. Published by Oxford University Press. All rights reserved
spellingShingle Methods Online
Stekel, Dov J.
Sarti, Donatella
Trevino, Victor
Zhang, Lihong
Salmon, Mike
Buckley, Chris D.
Stevens, Mark
Pallen, Mark J.
Penn, Charles
Falciani, Francesco
Analysis of host response to bacterial infection using error model based gene expression microarray experiments
title Analysis of host response to bacterial infection using error model based gene expression microarray experiments
title_full Analysis of host response to bacterial infection using error model based gene expression microarray experiments
title_fullStr Analysis of host response to bacterial infection using error model based gene expression microarray experiments
title_full_unstemmed Analysis of host response to bacterial infection using error model based gene expression microarray experiments
title_short Analysis of host response to bacterial infection using error model based gene expression microarray experiments
title_sort analysis of host response to bacterial infection using error model based gene expression microarray experiments
topic Methods Online
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1072804/
https://www.ncbi.nlm.nih.gov/pubmed/15800204
http://dx.doi.org/10.1093/nar/gni050
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