Fast Gene Ontology based clustering for microarray experiments

<p>Abstract</p> <p>Background</p> <p>Analysis of a microarray experiment often results in a list of hundreds of disease-associated genes. In order to suggest common biological processes and functions for these genes, Gene Ontology annotations with statistical testing ar...

Full description

Bibliographic Details
Main Authors: Ovaska Kristian, Laakso Marko, Hautaniemi Sampsa
Format: Article
Language:English
Published: BMC 2008-11-01
Series:BioData Mining
Online Access:http://www.biodatamining.org/content/1/1/11
id doaj-5089c58630e94e5ebcde2f420d1f599f
record_format Article
spelling doaj-5089c58630e94e5ebcde2f420d1f599f2020-11-24T21:25:12ZengBMCBioData Mining1756-03812008-11-01111110.1186/1756-0381-1-11Fast Gene Ontology based clustering for microarray experimentsOvaska KristianLaakso MarkoHautaniemi Sampsa<p>Abstract</p> <p>Background</p> <p>Analysis of a microarray experiment often results in a list of hundreds of disease-associated genes. In order to suggest common biological processes and functions for these genes, Gene Ontology annotations with statistical testing are widely used. However, these analyses can produce a very large number of significantly altered biological processes. Thus, it is often challenging to interpret GO results and identify novel testable biological hypotheses.</p> <p>Results</p> <p>We present fast software for advanced gene annotation using semantic similarity for Gene Ontology terms combined with clustering and heat map visualisation. The methodology allows rapid identification of genes sharing the same Gene Ontology cluster.</p> <p>Conclusion</p> <p>Our R based semantic similarity open-source package has a speed advantage of over 2000-fold compared to existing implementations. From the resulting hierarchical clustering dendrogram genes sharing a GO term can be identified, and their differences in the gene expression patterns can be seen from the heat map. These methods facilitate advanced annotation of genes resulting from data analysis.</p> http://www.biodatamining.org/content/1/1/11
collection DOAJ
language English
format Article
sources DOAJ
author Ovaska Kristian
Laakso Marko
Hautaniemi Sampsa
spellingShingle Ovaska Kristian
Laakso Marko
Hautaniemi Sampsa
Fast Gene Ontology based clustering for microarray experiments
BioData Mining
author_facet Ovaska Kristian
Laakso Marko
Hautaniemi Sampsa
author_sort Ovaska Kristian
title Fast Gene Ontology based clustering for microarray experiments
title_short Fast Gene Ontology based clustering for microarray experiments
title_full Fast Gene Ontology based clustering for microarray experiments
title_fullStr Fast Gene Ontology based clustering for microarray experiments
title_full_unstemmed Fast Gene Ontology based clustering for microarray experiments
title_sort fast gene ontology based clustering for microarray experiments
publisher BMC
series BioData Mining
issn 1756-0381
publishDate 2008-11-01
description <p>Abstract</p> <p>Background</p> <p>Analysis of a microarray experiment often results in a list of hundreds of disease-associated genes. In order to suggest common biological processes and functions for these genes, Gene Ontology annotations with statistical testing are widely used. However, these analyses can produce a very large number of significantly altered biological processes. Thus, it is often challenging to interpret GO results and identify novel testable biological hypotheses.</p> <p>Results</p> <p>We present fast software for advanced gene annotation using semantic similarity for Gene Ontology terms combined with clustering and heat map visualisation. The methodology allows rapid identification of genes sharing the same Gene Ontology cluster.</p> <p>Conclusion</p> <p>Our R based semantic similarity open-source package has a speed advantage of over 2000-fold compared to existing implementations. From the resulting hierarchical clustering dendrogram genes sharing a GO term can be identified, and their differences in the gene expression patterns can be seen from the heat map. These methods facilitate advanced annotation of genes resulting from data analysis.</p>
url http://www.biodatamining.org/content/1/1/11
work_keys_str_mv AT ovaskakristian fastgeneontologybasedclusteringformicroarrayexperiments
AT laaksomarko fastgeneontologybasedclusteringformicroarrayexperiments
AT hautaniemisampsa fastgeneontologybasedclusteringformicroarrayexperiments
_version_ 1725984095753732096