Disease gene characterization through large-scale co-expression analysis.

In the post genome era, a major goal of biology is the identification of specific roles for individual genes. We report a new genomic tool for gene characterization, the UCLA Gene Expression Tool (UGET).Celsius, the largest co-normalized microarray dataset of Affymetrix based gene expression, was us...

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Main Authors: Allen Day, Jun Dong, Vincent A Funari, Bret Harry, Samuel P Strom, Dan H Cohn, Stanley F Nelson
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2009-12-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC2797297?pdf=render
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spelling doaj-9b9e380565a34ae885484ffdfa97d6e12020-11-25T00:19:15ZengPublic Library of Science (PLoS)PLoS ONE1932-62032009-12-01412e849110.1371/journal.pone.0008491Disease gene characterization through large-scale co-expression analysis.Allen DayJun DongVincent A FunariBret HarrySamuel P StromDan H CohnStanley F NelsonIn the post genome era, a major goal of biology is the identification of specific roles for individual genes. We report a new genomic tool for gene characterization, the UCLA Gene Expression Tool (UGET).Celsius, the largest co-normalized microarray dataset of Affymetrix based gene expression, was used to calculate the correlation between all possible gene pairs on all platforms, and generate stored indexes in a web searchable format. The size of Celsius makes UGET a powerful gene characterization tool. Using a small seed list of known cartilage-selective genes, UGET extended the list of known genes by identifying 32 new highly cartilage-selective genes. Of these, 7 of 10 tested were validated by qPCR including the novel cartilage-specific genes SDK2 and FLJ41170. In addition, we retrospectively tested UGET and other gene expression based prioritization tools to identify disease-causing genes within known linkage intervals. We first demonstrated this utility with UGET using genetically heterogeneous disorders such as Joubert syndrome, microcephaly, neuropsychiatric disorders and type 2 limb girdle muscular dystrophy (LGMD2) and then compared UGET to other gene expression based prioritization programs which use small but discrete and well annotated datasets. Finally, we observed a significantly higher gene correlation shared between genes in disease networks associated with similar complex or Mendelian disorders.UGET is an invaluable resource for a geneticist that permits the rapid inclusion of expression criteria from one to hundreds of genes in genomic intervals linked to disease. By using thousands of arrays UGET annotates and prioritizes genes better than other tools especially with rare tissue disorders or complex multi-tissue biological processes. This information can be critical in prioritization of candidate genes for sequence analysis.http://europepmc.org/articles/PMC2797297?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Allen Day
Jun Dong
Vincent A Funari
Bret Harry
Samuel P Strom
Dan H Cohn
Stanley F Nelson
spellingShingle Allen Day
Jun Dong
Vincent A Funari
Bret Harry
Samuel P Strom
Dan H Cohn
Stanley F Nelson
Disease gene characterization through large-scale co-expression analysis.
PLoS ONE
author_facet Allen Day
Jun Dong
Vincent A Funari
Bret Harry
Samuel P Strom
Dan H Cohn
Stanley F Nelson
author_sort Allen Day
title Disease gene characterization through large-scale co-expression analysis.
title_short Disease gene characterization through large-scale co-expression analysis.
title_full Disease gene characterization through large-scale co-expression analysis.
title_fullStr Disease gene characterization through large-scale co-expression analysis.
title_full_unstemmed Disease gene characterization through large-scale co-expression analysis.
title_sort disease gene characterization through large-scale co-expression analysis.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2009-12-01
description In the post genome era, a major goal of biology is the identification of specific roles for individual genes. We report a new genomic tool for gene characterization, the UCLA Gene Expression Tool (UGET).Celsius, the largest co-normalized microarray dataset of Affymetrix based gene expression, was used to calculate the correlation between all possible gene pairs on all platforms, and generate stored indexes in a web searchable format. The size of Celsius makes UGET a powerful gene characterization tool. Using a small seed list of known cartilage-selective genes, UGET extended the list of known genes by identifying 32 new highly cartilage-selective genes. Of these, 7 of 10 tested were validated by qPCR including the novel cartilage-specific genes SDK2 and FLJ41170. In addition, we retrospectively tested UGET and other gene expression based prioritization tools to identify disease-causing genes within known linkage intervals. We first demonstrated this utility with UGET using genetically heterogeneous disorders such as Joubert syndrome, microcephaly, neuropsychiatric disorders and type 2 limb girdle muscular dystrophy (LGMD2) and then compared UGET to other gene expression based prioritization programs which use small but discrete and well annotated datasets. Finally, we observed a significantly higher gene correlation shared between genes in disease networks associated with similar complex or Mendelian disorders.UGET is an invaluable resource for a geneticist that permits the rapid inclusion of expression criteria from one to hundreds of genes in genomic intervals linked to disease. By using thousands of arrays UGET annotates and prioritizes genes better than other tools especially with rare tissue disorders or complex multi-tissue biological processes. This information can be critical in prioritization of candidate genes for sequence analysis.
url http://europepmc.org/articles/PMC2797297?pdf=render
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