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The effect of genetic variation on promoter usage and enhancer activity.


ABSTRACT: The identification of genetic variants affecting gene expression, namely expression quantitative trait loci (eQTLs), has contributed to the understanding of mechanisms underlying human traits and diseases. The majority of these variants map in non-coding regulatory regions of the genome and their identification remains challenging. Here, we use natural genetic variation and CAGE transcriptomes from 154 EBV-transformed lymphoblastoid cell lines, derived from unrelated individuals, to map 5376 and 110 regulatory variants associated with promoter usage (puQTLs) and enhancer activity (eaQTLs), respectively. We characterize five categories of genes associated with puQTLs, distinguishing single from multi-promoter genes. Among multi-promoter genes, we find puQTL effects either specific to a single promoter or to multiple promoters with variable effect orientations. Regulatory variants associated with opposite effects on different mRNA isoforms suggest compensatory mechanisms occurring between alternative promoters. Our analyses identify differential promoter usage and modulation of enhancer activity as molecular mechanisms underlying eQTLs related to regulatory elements.

SUBMITTER: Garieri M 

PROVIDER: S-EPMC5677018 | biostudies-literature | 2017 Nov

REPOSITORIES: biostudies-literature

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The effect of genetic variation on promoter usage and enhancer activity.

Garieri Marco M   Delaneau Olivier O   Santoni Federico F   Fish Richard J RJ   Mull David D   Carninci Piero P   Dermitzakis Emmanouil T ET   Antonarakis Stylianos E SE   Fort Alexandre A  

Nature communications 20171107 1


The identification of genetic variants affecting gene expression, namely expression quantitative trait loci (eQTLs), has contributed to the understanding of mechanisms underlying human traits and diseases. The majority of these variants map in non-coding regulatory regions of the genome and their identification remains challenging. Here, we use natural genetic variation and CAGE transcriptomes from 154 EBV-transformed lymphoblastoid cell lines, derived from unrelated individuals, to map 5376 and  ...[more]

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