Identification of cell cycle-related regulatory motifs using a kernel canonical correlation analysis

<p>Abstract</p> <p>Background</p> <p>Gene regulation is a key mechanism in higher eukaryotic cellular processes. One of the major challenges in gene regulation studies is to identify regulators affecting the expression of their target genes in specific biological proces...

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Main Authors: Chang Jeong-Ho, Joung Je-Gun, Rhee Je-Keun, Fei Zhangjun, Zhang Byoung-Tak
Format: Article
Language:English
Published: BMC 2009-12-01
Series:BMC Genomics
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spelling doaj-a8c5d4bad3a94642984e8608389078522020-11-25T02:50:24ZengBMCBMC Genomics1471-21642009-12-0110Suppl 3S2910.1186/1471-2164-10-S3-S29Identification of cell cycle-related regulatory motifs using a kernel canonical correlation analysisChang Jeong-HoJoung Je-GunRhee Je-KeunFei ZhangjunZhang Byoung-Tak<p>Abstract</p> <p>Background</p> <p>Gene regulation is a key mechanism in higher eukaryotic cellular processes. One of the major challenges in gene regulation studies is to identify regulators affecting the expression of their target genes in specific biological processes. Despite their importance, regulators involved in diverse biological processes still remain largely unrevealed. In the present study, we propose a kernel-based approach to efficiently identify core regulatory elements involved in specific biological processes using gene expression profiles.</p> <p>Results</p> <p>We developed a framework that can detect correlations between gene expression profiles and the upstream sequences on the basis of the kernel canonical correlation analysis (kernel CCA). Using a yeast cell cycle dataset, we demonstrated that upstream sequence patterns were closely related to gene expression profiles based on the canonical correlation scores obtained by measuring the correlation between them. Our results showed that the cell cycle-specific regulatory motifs could be found successfully based on the motif weights derived through kernel CCA. Furthermore, we identified co-regulatory motif pairs using the same framework.</p> <p>Conclusion</p> <p>Given expression profiles, our method was able to identify regulatory motifs involved in specific biological processes. The method could be applied to the elucidation of the unknown regulatory mechanisms associated with complex gene regulatory processes.</p>
collection DOAJ
language English
format Article
sources DOAJ
author Chang Jeong-Ho
Joung Je-Gun
Rhee Je-Keun
Fei Zhangjun
Zhang Byoung-Tak
spellingShingle Chang Jeong-Ho
Joung Je-Gun
Rhee Je-Keun
Fei Zhangjun
Zhang Byoung-Tak
Identification of cell cycle-related regulatory motifs using a kernel canonical correlation analysis
BMC Genomics
author_facet Chang Jeong-Ho
Joung Je-Gun
Rhee Je-Keun
Fei Zhangjun
Zhang Byoung-Tak
author_sort Chang Jeong-Ho
title Identification of cell cycle-related regulatory motifs using a kernel canonical correlation analysis
title_short Identification of cell cycle-related regulatory motifs using a kernel canonical correlation analysis
title_full Identification of cell cycle-related regulatory motifs using a kernel canonical correlation analysis
title_fullStr Identification of cell cycle-related regulatory motifs using a kernel canonical correlation analysis
title_full_unstemmed Identification of cell cycle-related regulatory motifs using a kernel canonical correlation analysis
title_sort identification of cell cycle-related regulatory motifs using a kernel canonical correlation analysis
publisher BMC
series BMC Genomics
issn 1471-2164
publishDate 2009-12-01
description <p>Abstract</p> <p>Background</p> <p>Gene regulation is a key mechanism in higher eukaryotic cellular processes. One of the major challenges in gene regulation studies is to identify regulators affecting the expression of their target genes in specific biological processes. Despite their importance, regulators involved in diverse biological processes still remain largely unrevealed. In the present study, we propose a kernel-based approach to efficiently identify core regulatory elements involved in specific biological processes using gene expression profiles.</p> <p>Results</p> <p>We developed a framework that can detect correlations between gene expression profiles and the upstream sequences on the basis of the kernel canonical correlation analysis (kernel CCA). Using a yeast cell cycle dataset, we demonstrated that upstream sequence patterns were closely related to gene expression profiles based on the canonical correlation scores obtained by measuring the correlation between them. Our results showed that the cell cycle-specific regulatory motifs could be found successfully based on the motif weights derived through kernel CCA. Furthermore, we identified co-regulatory motif pairs using the same framework.</p> <p>Conclusion</p> <p>Given expression profiles, our method was able to identify regulatory motifs involved in specific biological processes. The method could be applied to the elucidation of the unknown regulatory mechanisms associated with complex gene regulatory processes.</p>
work_keys_str_mv AT changjeongho identificationofcellcyclerelatedregulatorymotifsusingakernelcanonicalcorrelationanalysis
AT joungjegun identificationofcellcyclerelatedregulatorymotifsusingakernelcanonicalcorrelationanalysis
AT rheejekeun identificationofcellcyclerelatedregulatorymotifsusingakernelcanonicalcorrelationanalysis
AT feizhangjun identificationofcellcyclerelatedregulatorymotifsusingakernelcanonicalcorrelationanalysis
AT zhangbyoungtak identificationofcellcyclerelatedregulatorymotifsusingakernelcanonicalcorrelationanalysis
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