GAGE: generally applicable gene set enrichment for pathway analysis

<p>Abstract</p> <p>Background</p> <p>Gene set analysis (GSA) is a widely used strategy for gene expression data analysis based on pathway knowledge. GSA focuses on sets of related genes and has established major advantages over individual gene analyses, including greate...

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Main Authors: Shedden Kerby, Friedman Michael S, Luo Weijun, Hankenson Kurt D, Woolf Peter J
Format: Article
Language:English
Published: BMC 2009-05-01
Series:BMC Bioinformatics
Online Access:http://www.biomedcentral.com/1471-2105/10/161
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spelling doaj-70693835e8c24f0299e49797e7b34ac22020-11-25T01:37:58ZengBMCBMC Bioinformatics1471-21052009-05-0110116110.1186/1471-2105-10-161GAGE: generally applicable gene set enrichment for pathway analysisShedden KerbyFriedman Michael SLuo WeijunHankenson Kurt DWoolf Peter J<p>Abstract</p> <p>Background</p> <p>Gene set analysis (GSA) is a widely used strategy for gene expression data analysis based on pathway knowledge. GSA focuses on sets of related genes and has established major advantages over individual gene analyses, including greater robustness, sensitivity and biological relevance. However, previous GSA methods have limited usage as they cannot handle datasets of different sample sizes or experimental designs.</p> <p>Results</p> <p>To address these limitations, we present a new GSA method called Generally Applicable Gene-set Enrichment (GAGE). We successfully apply GAGE to multiple microarray datasets with different sample sizes, experimental designs and profiling techniques. GAGE shows significantly better results when compared to two other commonly used GSA methods of GSEA and PAGE. We demonstrate this improvement in the following three aspects: (1) consistency across repeated studies/experiments; (2) sensitivity and specificity; (3) biological relevance of the regulatory mechanisms inferred.</p> <p>GAGE reveals novel and relevant regulatory mechanisms from both published and previously unpublished microarray studies. From two published lung cancer data sets, GAGE derived a more cohesive and predictive mechanistic scheme underlying lung cancer progress and metastasis. For a previously unpublished BMP6 study, GAGE predicted novel regulatory mechanisms for BMP6 induced osteoblast differentiation, including the canonical BMP-TGF beta signaling, JAK-STAT signaling, Wnt signaling, and estrogen signaling pathways–all of which are supported by the experimental literature.</p> <p>Conclusion</p> <p>GAGE is generally applicable to gene expression datasets with different sample sizes and experimental designs. GAGE consistently outperformed two most frequently used GSA methods and inferred statistically and biologically more relevant regulatory pathways. The GAGE method is implemented in R in the "gage" package, available under the GNU GPL from <url>http://sysbio.engin.umich.edu/~luow/downloads.php</url>.</p> http://www.biomedcentral.com/1471-2105/10/161
collection DOAJ
language English
format Article
sources DOAJ
author Shedden Kerby
Friedman Michael S
Luo Weijun
Hankenson Kurt D
Woolf Peter J
spellingShingle Shedden Kerby
Friedman Michael S
Luo Weijun
Hankenson Kurt D
Woolf Peter J
GAGE: generally applicable gene set enrichment for pathway analysis
BMC Bioinformatics
author_facet Shedden Kerby
Friedman Michael S
Luo Weijun
Hankenson Kurt D
Woolf Peter J
author_sort Shedden Kerby
title GAGE: generally applicable gene set enrichment for pathway analysis
title_short GAGE: generally applicable gene set enrichment for pathway analysis
title_full GAGE: generally applicable gene set enrichment for pathway analysis
title_fullStr GAGE: generally applicable gene set enrichment for pathway analysis
title_full_unstemmed GAGE: generally applicable gene set enrichment for pathway analysis
title_sort gage: generally applicable gene set enrichment for pathway analysis
publisher BMC
series BMC Bioinformatics
issn 1471-2105
publishDate 2009-05-01
description <p>Abstract</p> <p>Background</p> <p>Gene set analysis (GSA) is a widely used strategy for gene expression data analysis based on pathway knowledge. GSA focuses on sets of related genes and has established major advantages over individual gene analyses, including greater robustness, sensitivity and biological relevance. However, previous GSA methods have limited usage as they cannot handle datasets of different sample sizes or experimental designs.</p> <p>Results</p> <p>To address these limitations, we present a new GSA method called Generally Applicable Gene-set Enrichment (GAGE). We successfully apply GAGE to multiple microarray datasets with different sample sizes, experimental designs and profiling techniques. GAGE shows significantly better results when compared to two other commonly used GSA methods of GSEA and PAGE. We demonstrate this improvement in the following three aspects: (1) consistency across repeated studies/experiments; (2) sensitivity and specificity; (3) biological relevance of the regulatory mechanisms inferred.</p> <p>GAGE reveals novel and relevant regulatory mechanisms from both published and previously unpublished microarray studies. From two published lung cancer data sets, GAGE derived a more cohesive and predictive mechanistic scheme underlying lung cancer progress and metastasis. For a previously unpublished BMP6 study, GAGE predicted novel regulatory mechanisms for BMP6 induced osteoblast differentiation, including the canonical BMP-TGF beta signaling, JAK-STAT signaling, Wnt signaling, and estrogen signaling pathways–all of which are supported by the experimental literature.</p> <p>Conclusion</p> <p>GAGE is generally applicable to gene expression datasets with different sample sizes and experimental designs. GAGE consistently outperformed two most frequently used GSA methods and inferred statistically and biologically more relevant regulatory pathways. The GAGE method is implemented in R in the "gage" package, available under the GNU GPL from <url>http://sysbio.engin.umich.edu/~luow/downloads.php</url>.</p>
url http://www.biomedcentral.com/1471-2105/10/161
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