TreeQA: Quantitative Genome Wide Association Mapping Using Local Perfect Phylogeny Trees


Feng Pan1, Leonard Mcmillan1, Fernando Pardo-Manuel De Villena2, David Threadgill2, and Wei Wang1


1Department of Computer Science, 2Department of Genetics, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA
Email: {panfeng,mcmillan,weiwang}@cs.unc.edu, {fernando,dwt}@med.unc.edu


Pacific Symposium on Biocomputing 14:415-426(2009)


Abstract

The goal of genome wide association (GWA) mapping in modern genetics is to identify genes or narrow regions in the genome that contribute to genetically complex phenotypes such as morphology or disease. Among the existing methods, tree-based association mapping methods show obvious advantages over single marker-based and haplotype-based methods because they incorporate information about the evolutionary history of the genome into the analysis. However, existing tree-based methods are designed primarily for binary phenotypes derived from case/control studies or fail to scale genome-wide.
In this paper, we introduce TreeQA, a quantitative GWA mapping algorithm. TreeQA utilizes local perfect phylogenies constructed in genomic regions exhibiting no evidence of historical recombination. By efficient algorithm design and implementation, TreeQA can efficiently conduct quantitative genom-wide association analysis and is more effective than the previous methods. We conducted extensive experiments on both simulated datasets and mouse inbred lines to demonstrate the efficiency and effectiveness of TreeQA.


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