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Fast Identification of Biological Pathways Associated with a Quantitative Trait Using Group Lasso with Overlaps

Author

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  • Silver Matt

    (Imperial College London)

  • Montana Giovanni

    (Imperial College London)

  • Alzheimer's Disease Neuroimaging Initiative

Abstract

Where causal SNPs (single nucleotide polymorphisms) tend to accumulate within biological pathways, the incorporation of prior pathways information into a statistical model is expected to increase the power to detect true associations in a genetic association study. Most existing pathways-based methods rely on marginal SNP statistics and do not fully exploit the dependence patterns among SNPs within pathways.We use a sparse regression model, with SNPs grouped into pathways, to identify causal pathways associated with a quantitative trait. Notable features of our "pathways group lasso with adaptive weights" (P-GLAW) algorithm include the incorporation of all pathways in a single regression model, an adaptive pathway weighting procedure that accounts for factors biasing pathway selection, and the use of a bootstrap sampling procedure for the ranking of important pathways. P-GLAW takes account of the presence of overlapping pathways and uses a novel combination of techniques to optimise model estimation, making it fast to run, even on whole genome datasets.In a comparison study with an alternative pathways method based on univariate SNP statistics, our method demonstrates high sensitivity and specificity for the detection of important pathways, showing the greatest relative gains in performance where marginal SNP effect sizes are small.

Suggested Citation

  • Silver Matt & Montana Giovanni & Alzheimer's Disease Neuroimaging Initiative, 2012. "Fast Identification of Biological Pathways Associated with a Quantitative Trait Using Group Lasso with Overlaps," Statistical Applications in Genetics and Molecular Biology, De Gruyter, vol. 11(1), pages 1-43, January.
  • Handle: RePEc:bpj:sagmbi:v:11:y:2012:i:1:n:7
    DOI: 10.2202/1544-6115.1755
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    References listed on IDEAS

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    1. Timothy G Lesnick & Spiridon Papapetropoulos & Deborah C Mash & Jarlath Ffrench-Mullen & Lina Shehadeh & Mariza de Andrade & John R Henley & Walter A Rocca & J Eric Ahlskog & Demetrius M Maraganore, 2007. "A Genomic Pathway Approach to a Complex Disease: Axon Guidance and Parkinson Disease," PLOS Genetics, Public Library of Science, vol. 3(6), pages 1-12, June.
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    4. Hariklia Eleftherohorinou & Victoria Wright & Clive Hoggart & Anna-Liisa Hartikainen & Marjo-Riitta Jarvelin & David Balding & Lachlan Coin & Michael Levin, 2009. "Pathway Analysis of GWAS Provides New Insights into Genetic Susceptibility to 3 Inflammatory Diseases," PLOS ONE, Public Library of Science, vol. 4(11), pages 1-11, November.
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    1. Binder Harald & Müller Tina & Schwender Holger & Golka Klaus & Steffens Michael & Hengstler Jan G. & Ickstadt Katja & Schumacher Martin, 2012. "Cluster-Localized Sparse Logistic Regression for SNP Data," Statistical Applications in Genetics and Molecular Biology, De Gruyter, vol. 11(4), pages 1-31, August.

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