Transcription factor binding profiles reveal cyclic expression of human protein-coding genes and non-coding RNAs.

Cell cycle is a complex and highly supervised process that must proceed with regulatory precision to achieve successful cellular division. Despite the wide application, microarray time course experiments have several limitations in identifying cell cycle genes. We thus propose a computational model...

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Main Authors: Chao Cheng, Matthew Ung, Gavin D Grant, Michael L Whitfield
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC3708869?pdf=render
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spelling doaj-b51780ab27814e5795a6570970c47d0d2020-11-25T00:46:05ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582013-01-0197e100313210.1371/journal.pcbi.1003132Transcription factor binding profiles reveal cyclic expression of human protein-coding genes and non-coding RNAs.Chao ChengMatthew UngGavin D GrantMichael L WhitfieldCell cycle is a complex and highly supervised process that must proceed with regulatory precision to achieve successful cellular division. Despite the wide application, microarray time course experiments have several limitations in identifying cell cycle genes. We thus propose a computational model to predict human cell cycle genes based on transcription factor (TF) binding and regulatory motif information in their promoters. We utilize ENCODE ChIP-seq data and motif information as predictors to discriminate cell cycle against non-cell cycle genes. Our results show that both the trans- TF features and the cis- motif features are predictive of cell cycle genes, and a combination of the two types of features can further improve prediction accuracy. We apply our model to a complete list of GENCODE promoters to predict novel cell cycle driving promoters for both protein-coding genes and non-coding RNAs such as lincRNAs. We find that a similar percentage of lincRNAs are cell cycle regulated as protein-coding genes, suggesting the importance of non-coding RNAs in cell cycle division. The model we propose here provides not only a practical tool for identifying novel cell cycle genes with high accuracy, but also new insights on cell cycle regulation by TFs and cis-regulatory elements.http://europepmc.org/articles/PMC3708869?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Chao Cheng
Matthew Ung
Gavin D Grant
Michael L Whitfield
spellingShingle Chao Cheng
Matthew Ung
Gavin D Grant
Michael L Whitfield
Transcription factor binding profiles reveal cyclic expression of human protein-coding genes and non-coding RNAs.
PLoS Computational Biology
author_facet Chao Cheng
Matthew Ung
Gavin D Grant
Michael L Whitfield
author_sort Chao Cheng
title Transcription factor binding profiles reveal cyclic expression of human protein-coding genes and non-coding RNAs.
title_short Transcription factor binding profiles reveal cyclic expression of human protein-coding genes and non-coding RNAs.
title_full Transcription factor binding profiles reveal cyclic expression of human protein-coding genes and non-coding RNAs.
title_fullStr Transcription factor binding profiles reveal cyclic expression of human protein-coding genes and non-coding RNAs.
title_full_unstemmed Transcription factor binding profiles reveal cyclic expression of human protein-coding genes and non-coding RNAs.
title_sort transcription factor binding profiles reveal cyclic expression of human protein-coding genes and non-coding rnas.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2013-01-01
description Cell cycle is a complex and highly supervised process that must proceed with regulatory precision to achieve successful cellular division. Despite the wide application, microarray time course experiments have several limitations in identifying cell cycle genes. We thus propose a computational model to predict human cell cycle genes based on transcription factor (TF) binding and regulatory motif information in their promoters. We utilize ENCODE ChIP-seq data and motif information as predictors to discriminate cell cycle against non-cell cycle genes. Our results show that both the trans- TF features and the cis- motif features are predictive of cell cycle genes, and a combination of the two types of features can further improve prediction accuracy. We apply our model to a complete list of GENCODE promoters to predict novel cell cycle driving promoters for both protein-coding genes and non-coding RNAs such as lincRNAs. We find that a similar percentage of lincRNAs are cell cycle regulated as protein-coding genes, suggesting the importance of non-coding RNAs in cell cycle division. The model we propose here provides not only a practical tool for identifying novel cell cycle genes with high accuracy, but also new insights on cell cycle regulation by TFs and cis-regulatory elements.
url http://europepmc.org/articles/PMC3708869?pdf=render
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AT michaellwhitfield transcriptionfactorbindingprofilesrevealcyclicexpressionofhumanproteincodinggenesandnoncodingrnas
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