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Adaptively inferring human transcriptional subnetworks

Although the human genome has been sequenced, progress in understanding gene regulation in humans has been particularly slow. Many computational approaches developed for lower eukaryotes to identify cis-regulatory elements and their associated target genes often do not generalize to mammals, largely...

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Detalles Bibliográficos
Autores principales: Das, Debopriya, Nahlé, Zaher, Zhang, Michael Q
Formato: Texto
Lenguaje:English
Publicado: 2006
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1681499/
https://www.ncbi.nlm.nih.gov/pubmed/16760900
http://dx.doi.org/10.1038/msb4100067
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author Das, Debopriya
Nahlé, Zaher
Zhang, Michael Q
author_facet Das, Debopriya
Nahlé, Zaher
Zhang, Michael Q
author_sort Das, Debopriya
collection PubMed
description Although the human genome has been sequenced, progress in understanding gene regulation in humans has been particularly slow. Many computational approaches developed for lower eukaryotes to identify cis-regulatory elements and their associated target genes often do not generalize to mammals, largely due to the degenerate and interactive nature of such elements. Motivated by the switch-like behavior of transcriptional responses, we present a systematic approach that allows adaptive determination of active transcriptional subnetworks (cis-motif combinations, the direct target genes and physiological processes regulated by the corresponding transcription factors) from microarray data in mammals, with accuracy similar to that achieved in lower eukaryotes. Our analysis uncovered several new subnetworks active in human liver and in cell-cycle regulation, with similar functional characteristics as the known ones. We present biochemical evidence for our predictions, and show that the recently discovered G2/M-specific E2F pathway is wider than previously thought; in particular, E2F directly activates certain mitotic genes involved in hepatocellular carcinomas. Additionally, we demonstrate that this method can predict subnetworks in a condition-specific manner, as well as regulatory crosstalk across multiple tissues. Our approach allows systematic understanding of how phenotypic complexity is regulated at the transcription level in mammals and offers marked advantage in systems where little or no prior knowledge of transcriptional regulation is available.
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spelling pubmed-16814992007-01-25 Adaptively inferring human transcriptional subnetworks Das, Debopriya Nahlé, Zaher Zhang, Michael Q Mol Syst Biol Article Although the human genome has been sequenced, progress in understanding gene regulation in humans has been particularly slow. Many computational approaches developed for lower eukaryotes to identify cis-regulatory elements and their associated target genes often do not generalize to mammals, largely due to the degenerate and interactive nature of such elements. Motivated by the switch-like behavior of transcriptional responses, we present a systematic approach that allows adaptive determination of active transcriptional subnetworks (cis-motif combinations, the direct target genes and physiological processes regulated by the corresponding transcription factors) from microarray data in mammals, with accuracy similar to that achieved in lower eukaryotes. Our analysis uncovered several new subnetworks active in human liver and in cell-cycle regulation, with similar functional characteristics as the known ones. We present biochemical evidence for our predictions, and show that the recently discovered G2/M-specific E2F pathway is wider than previously thought; in particular, E2F directly activates certain mitotic genes involved in hepatocellular carcinomas. Additionally, we demonstrate that this method can predict subnetworks in a condition-specific manner, as well as regulatory crosstalk across multiple tissues. Our approach allows systematic understanding of how phenotypic complexity is regulated at the transcription level in mammals and offers marked advantage in systems where little or no prior knowledge of transcriptional regulation is available. 2006-06-06 /pmc/articles/PMC1681499/ /pubmed/16760900 http://dx.doi.org/10.1038/msb4100067 Text en Copyright © 2006, EMBO and Nature Publishing Group
spellingShingle Article
Das, Debopriya
Nahlé, Zaher
Zhang, Michael Q
Adaptively inferring human transcriptional subnetworks
title Adaptively inferring human transcriptional subnetworks
title_full Adaptively inferring human transcriptional subnetworks
title_fullStr Adaptively inferring human transcriptional subnetworks
title_full_unstemmed Adaptively inferring human transcriptional subnetworks
title_short Adaptively inferring human transcriptional subnetworks
title_sort adaptively inferring human transcriptional subnetworks
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1681499/
https://www.ncbi.nlm.nih.gov/pubmed/16760900
http://dx.doi.org/10.1038/msb4100067
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