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Journal of Computational Biology
Set Association Analysis of SNP Case-Control and Microarray Data
To cite this article:
Jurg Ott, Josephine Hoh.
Journal of Computational Biology.
June 2003,
10(3-4): 569-574.
doi:10.1089/10665270360688192.
Jurg Ott Rockefeller University, 1230 York Avenue, New York, NY 10021 Josephine Hoh Rockefeller University, 1230 York Avenue, New York, NY 10021 Common heritable diseases ("complex traits") are assumed to be due to multiple underlying susceptibility genes. While genetic mapping methods for Mendelian disorders have been very successful, the search for genes underlying complex traits has been difficult and often disappointing. One of the reasons may be that most current gene-mapping approaches are still based on conventional methodology of testing one or a few SNPs at a time. Here, we demonstrate a simple strategy that allows for the joint analysis of multiple disease-associated SNPs in different genomic regions. Our set-association method combines information over SNPs by forming sums of relevant single-marker statistics. As previously hypothesized, we show here that this approach successfully addresses the "curse of dimensionality" problem— too many variables should be estimated with a comparatively small number of observations. We also report results of simulation studies showing that our method furnishes unbiased and accurate significance levels. Power calculations demonstrate good power even in the presence of large numbers of nondisease associated SNPs. We extended our method to microarray expression data, where expression levels for large numbers of genes should be compared between two tissue types. In applications to such data, our approach turned out to be highly efficient.  This paper was cited by:Genetic and Clinical Predictors of Sexual Dysfunction in Citalopram-Treated Depressed Patients Roy H Perlis, Gonzalo Laje, Jordan W Smoller, Maurizio Fava, A John Rush, Francis J McMahon Neuropsychopharmacology. Jul 2009, Vol. 34, No. 7: 1819-1828 CrossRef Genetic polymorphisms in 85 DNA repair genes and bladder cancer risk S. Michiels, A. Laplanche, T. Boulet, P. Dessen, B. Guillonneau, A. Mejean, F. Desgrandchamps, M. Lathrop, A. Sarasin, S. Benhamou Carcinogenesis. Jun 2009, Vol. 30, No. 5: 763-768 CrossRef Pharmacogenetic Analysis of Genes Implicated in Rodent Models of Antidepressant Response: Association of TREK1 and Treatment Resistance in the STAR*D Study Roy H Perlis, Priya Moorjani, Jesen Fagerness, Shaun Purcell, Madhukar H Trivedi, Maurizio Fava, A John Rush, Jordan W Smoller Neuropsychopharmacology. Dec 2008, Vol. 33, No. 12: 2810-2819 CrossRef A Prediction Model for Complex Diseases using Set Association & Artificial Neural Network Hyun-Joo Choi, Seung-Hyun Kim, Kyu-Bum Wee The KIPS Transactions:PartB. Sep 2008, Vol. 15B, No. 4: 323-330 CrossRef Variants in DNA double-strand break repair and DNA damage-response genes and susceptibility to lung and head and neck cancers Patrick Danoy, Stefan Michiels, Philippe Dessen, Cécile Pignat, Thomas Boulet, Marion Monet, Christine Bouchardy, Mark Lathrop, Alain Sarasin, Simone Benhamou International Journal of Cancer. Aug 2008, Vol. 123, No. 2: 457-463 CrossRef Confronting complexity in late-onset Alzheimer disease: application of two-stage analysis approach addressing heterogeneity and epistasis Tricia A. Thornton-Wells, Jason H. Moore, Eden R. Martin, Margaret A. Pericak-Vance, Jonathan L. Haines Genetic Epidemiology. May 2008, Vol. 32, No. 3: 187-203 CrossRef Nutrigenomic approaches for obesity research R. M. Elliott, I. T. Johnson Obesity Reviews. Apr 2007, Vol. 8, No. s1: 77-81 CrossRef Traversing the conceptual divide between biological and statistical epistasis: systems biology and a more modern synthesis Jason H. Moore, Scott M. Williams BioEssays. Jul 2005, Vol. 27, No. 6: 637-646 CrossRef Computational analysis of gene-gene interactions using multifactor dimensionality reduction Jason H Moore Expert Review of Molecular Diagnostics. 2004, Vol. 4, No. 6: 795 CrossRef
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