Interactive visualization of clusters in microarray data: an efficient tool for improved metabolic analysis of E. coli

<p>Abstract</p> <p>Background</p> <p>Interpretation of comprehensive DNA microarray data sets is a challenging task for biologists and process engineers where scientific assistance of statistics and bioinformatics is essential. Interdisciplinary cooperation and concerte...

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Main Authors: Pötschacher Florentina, Striedner Gerald, Scharl Theresa, Leisch Friedrich, Bayer Karl
Format: Article
Language:English
Published: BMC 2009-07-01
Series:Microbial Cell Factories
Online Access:http://www.microbialcellfactories.com/content/8/1/37
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spelling doaj-bd575fbbfae243639220f820360cf8662020-11-24T21:27:07ZengBMCMicrobial Cell Factories1475-28592009-07-01813710.1186/1475-2859-8-37Interactive visualization of clusters in microarray data: an efficient tool for improved metabolic analysis of E. coliPötschacher FlorentinaStriedner GeraldScharl TheresaLeisch FriedrichBayer Karl<p>Abstract</p> <p>Background</p> <p>Interpretation of comprehensive DNA microarray data sets is a challenging task for biologists and process engineers where scientific assistance of statistics and bioinformatics is essential. Interdisciplinary cooperation and concerted development of software-tools for simplified and accelerated data analysis and interpretation is the key to overcome the bottleneck in data-analysis workflows. This approach is exemplified by <monospace>gcExplorer</monospace> an interactive visualization toolbox based on cluster analysis. Clustering is an important tool in gene expression data analysis to find groups of co-expressed genes which can finally suggest functional pathways and interactions between genes. The visualization of gene clusters gives practitioners an understanding of the cluster structure of their data and makes it easier to interpret the cluster results.</p> <p>Results</p> <p>In this study the interactive visualization toolbox <monospace>gcExplorer</monospace> is applied to the interpretation of <it>E. coli </it>microarray data. The data sets derive from two fedbatch experiments conducted in order to investigate the impact of different induction strategies on the host metabolism and product yield. The software enables direct graphical comparison of these two experiments. The identification of potentially interesting gene candidates or functional groups is substantially accelerated and eased.</p> <p>Conclusion</p> <p>It was shown that <monospace>gcExplorer</monospace> is a very helpful tool to gain a general overview of microarray experiments. Interesting gene expression patterns can easily be found, compared among different experiments and combined with information about gene function from publicly available databases.</p> http://www.microbialcellfactories.com/content/8/1/37
collection DOAJ
language English
format Article
sources DOAJ
author Pötschacher Florentina
Striedner Gerald
Scharl Theresa
Leisch Friedrich
Bayer Karl
spellingShingle Pötschacher Florentina
Striedner Gerald
Scharl Theresa
Leisch Friedrich
Bayer Karl
Interactive visualization of clusters in microarray data: an efficient tool for improved metabolic analysis of E. coli
Microbial Cell Factories
author_facet Pötschacher Florentina
Striedner Gerald
Scharl Theresa
Leisch Friedrich
Bayer Karl
author_sort Pötschacher Florentina
title Interactive visualization of clusters in microarray data: an efficient tool for improved metabolic analysis of E. coli
title_short Interactive visualization of clusters in microarray data: an efficient tool for improved metabolic analysis of E. coli
title_full Interactive visualization of clusters in microarray data: an efficient tool for improved metabolic analysis of E. coli
title_fullStr Interactive visualization of clusters in microarray data: an efficient tool for improved metabolic analysis of E. coli
title_full_unstemmed Interactive visualization of clusters in microarray data: an efficient tool for improved metabolic analysis of E. coli
title_sort interactive visualization of clusters in microarray data: an efficient tool for improved metabolic analysis of e. coli
publisher BMC
series Microbial Cell Factories
issn 1475-2859
publishDate 2009-07-01
description <p>Abstract</p> <p>Background</p> <p>Interpretation of comprehensive DNA microarray data sets is a challenging task for biologists and process engineers where scientific assistance of statistics and bioinformatics is essential. Interdisciplinary cooperation and concerted development of software-tools for simplified and accelerated data analysis and interpretation is the key to overcome the bottleneck in data-analysis workflows. This approach is exemplified by <monospace>gcExplorer</monospace> an interactive visualization toolbox based on cluster analysis. Clustering is an important tool in gene expression data analysis to find groups of co-expressed genes which can finally suggest functional pathways and interactions between genes. The visualization of gene clusters gives practitioners an understanding of the cluster structure of their data and makes it easier to interpret the cluster results.</p> <p>Results</p> <p>In this study the interactive visualization toolbox <monospace>gcExplorer</monospace> is applied to the interpretation of <it>E. coli </it>microarray data. The data sets derive from two fedbatch experiments conducted in order to investigate the impact of different induction strategies on the host metabolism and product yield. The software enables direct graphical comparison of these two experiments. The identification of potentially interesting gene candidates or functional groups is substantially accelerated and eased.</p> <p>Conclusion</p> <p>It was shown that <monospace>gcExplorer</monospace> is a very helpful tool to gain a general overview of microarray experiments. Interesting gene expression patterns can easily be found, compared among different experiments and combined with information about gene function from publicly available databases.</p>
url http://www.microbialcellfactories.com/content/8/1/37
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