Skip to main content
Journal cover image

Functional annotation signatures of disease susceptibility loci improve SNP association analysis

Publication ,  Journal Article
Iversen, ES; Lipton, G; Clyde, MA; Monteiro, ANA
Published in: BMC Genomics
2014

Background: Genetic association studies are conducted to discover genetic loci that contribute to an inherited trait, identify the variants behind these associations and ascertain their functional role in determining the phenotype. To date, functional annotations of the genetic variants have rarely played more than an indirect role in assessing evidence for association. Here, we demonstrate how these data can be systematically integrated into an association study's analysis plan.Results: We developed a Bayesian statistical model for the prior probability of phenotype-genotype association that incorporates data from past association studies and publicly available functional annotation data regarding the susceptibility variants under study. The model takes the form of a binary regression of association status on a set of annotation variables whose coefficients were estimated through an analysis of associated SNPs in the GWAS Catalog (GC). The functional predictors examined included measures that have been demonstrated to correlate with the association status of SNPs in the GC and some whose utility in this regard is speculative: summaries of the UCSC Human Genome Browser ENCODE super-track data, dbSNP function class, sequence conservation summaries, proximity to genomic variants in the Database of Genomic Variants and known regulatory elements in the Open Regulatory Annotation database, PolyPhen-2 probabilities and RegulomeDB categories. Because we expected that only a fraction of the annotations would contribute to predicting association, we employed a penalized likelihood method to reduce the impact of non-informative predictors and evaluated the model's ability to predict GC SNPs not used to construct the model. We show that the functional data alone are predictive of a SNP's presence in the GC. Further, using data from a genome-wide study of ovarian cancer, we demonstrate that their use as prior data when testing for association is practical at the genome-wide scale and improves power to detect associations.Conclusions: We show how diverse functional annotations can be efficiently combined to create 'functional signatures' that predict the a priori odds of a variant's association to a trait and how these signatures can be integrated into a standard genome-wide-scale association analysis, resulting in improved power to detect truly associated variants. © 2014 Iversen et al.; licensee BioMed Central Ltd.

Duke Scholars

Published In

BMC Genomics

DOI

ISSN

1471-2164

Publication Date

2014

Volume

15

Issue

1

Related Subject Headings

  • Bioinformatics
  • 11 Medical and Health Sciences
  • 08 Information and Computing Sciences
  • 06 Biological Sciences
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Iversen, E. S., Lipton, G., Clyde, M. A., & Monteiro, A. N. A. (2014). Functional annotation signatures of disease susceptibility loci improve SNP association analysis. BMC Genomics, 15(1). https://doi.org/10.1186/1471-2164-15-398
Iversen, E. S., G. Lipton, M. A. Clyde, and A. N. A. Monteiro. “Functional annotation signatures of disease susceptibility loci improve SNP association analysis.” BMC Genomics 15, no. 1 (2014). https://doi.org/10.1186/1471-2164-15-398.
Iversen ES, Lipton G, Clyde MA, Monteiro ANA. Functional annotation signatures of disease susceptibility loci improve SNP association analysis. BMC Genomics. 2014;15(1).
Iversen, E. S., et al. “Functional annotation signatures of disease susceptibility loci improve SNP association analysis.” BMC Genomics, vol. 15, no. 1, 2014. Scival, doi:10.1186/1471-2164-15-398.
Iversen ES, Lipton G, Clyde MA, Monteiro ANA. Functional annotation signatures of disease susceptibility loci improve SNP association analysis. BMC Genomics. 2014;15(1).
Journal cover image

Published In

BMC Genomics

DOI

ISSN

1471-2164

Publication Date

2014

Volume

15

Issue

1

Related Subject Headings

  • Bioinformatics
  • 11 Medical and Health Sciences
  • 08 Information and Computing Sciences
  • 06 Biological Sciences