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GARFIELD classifies disease-relevant genomic features through integration of functional annotations with association signals.


ABSTRACT: Loci discovered by genome-wide association studies predominantly map outside protein-coding genes. The interpretation of the functional consequences of non-coding variants can be greatly enhanced by catalogs of regulatory genomic regions in cell lines and primary tissues. However, robust and readily applicable methods are still lacking by which to systematically evaluate the contribution of these regions to genetic variation implicated in diseases or quantitative traits. Here we propose a novel approach that leverages genome-wide association studies' findings with regulatory or functional annotations to classify features relevant to a phenotype of interest. Within our framework, we account for major sources of confounding not offered by current methods. We further assess enrichment of genome-wide association studies for 19 traits within Encyclopedia of DNA Elements- and Roadmap-derived regulatory regions. We characterize unique enrichment patterns for traits and annotations driving novel biological insights. The method is implemented in standalone software and an R package, to facilitate its application by the research community.

SUBMITTER: Iotchkova V 

PROVIDER: S-EPMC6908448 | biostudies-literature | 2019 Feb

REPOSITORIES: biostudies-literature

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GARFIELD classifies disease-relevant genomic features through integration of functional annotations with association signals.

Iotchkova Valentina V   Ritchie Graham R S GRS   Geihs Matthias M   Morganella Sandro S   Min Josine L JL   Walter Klaudia K   Timpson Nicholas John NJ   Dunham Ian I   Birney Ewan E   Soranzo Nicole N  

Nature genetics 20190128 2


Loci discovered by genome-wide association studies predominantly map outside protein-coding genes. The interpretation of the functional consequences of non-coding variants can be greatly enhanced by catalogs of regulatory genomic regions in cell lines and primary tissues. However, robust and readily applicable methods are still lacking by which to systematically evaluate the contribution of these regions to genetic variation implicated in diseases or quantitative traits. Here we propose a novel  ...[more]

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