Genome-Wide Identification Of Hypoxia-Inducible Factor Binding Sites And Target Genes By A Probabilistic Model Integrating Transcription-Profiling Data And In Silico Binding Site Prediction

NUCLEIC ACIDS RESEARCH(2010)

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摘要
The transcriptional response driven by Hypoxia-inducible factor (HIF) is central to the adaptation to oxygen restriction. Hence, the complete identification of HIF targets is essential for understanding the cellular responses to hypoxia. Herein we describe a computational strategy based on the combination of phylogenetic footprinting and transcription profiling meta-analysis for the identification of HIF-target genes. Comparison of the resulting candidates with published HIF1a genome-wide chromatin immunoprecipitation indicates a high sensitivity (78%) and specificity (97.8%). To validate our strategy, we performed HIF1a chromatin immunoprecipitation on a set of putative targets. Our results confirm the robustness of the computational strategy in predicting HIF-binding sites and reveal several novel HIF targets, including RE1-silencing transcription factor co-repressor (RCOR2). In addition, mapping of described polymorphisms to the predicted HIF-binding sites identified several single-nucleotide polymorphisms (SNPs) that could alter HIF binding. As a proof of principle, we demonstrate that SNP rs17004038, mapping to a functional hypoxia response element in the macrophage migration inhibitory factor (MIF) locus, prevents induction of this gene by hypoxia. Altogether, our results show that the proposed strategy is a powerful tool for the identification of HIF direct targets that expands our knowledge of the cellular adaptation to hypoxia and provides cues on the inter-individual variation in this response.
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关键词
probabilistic model,hypoxia inducible factor,gene expression regulation,meta analysis,binding sites,macrophage migration inhibitory factor,gene expression profiling,chromatin immunoprecipitation,proof of principle,binding site,single nucleotide polymorphism,genomics,cell line,transcription factor,polymorphism
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