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Dosage Transmission Disequilibrium Test (dTDT) for Linkage and Association Detection
Author(s) -
Zhehao Zhang,
Jen-Chyong Wang,
William Howells,
Pinpin Lin,
Arpana Agrawal,
Howard J. Edenberg,
Jay A. Tischfield,
Marc A. Schuckit,
Laura J. Bierut,
Alison Goate,
John P. Rice
Publication year - 2013
Publication title -
plos one
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.99
H-Index - 332
ISSN - 1932-6203
DOI - 10.1371/journal.pone.0063526
Subject(s) - linkage disequilibrium , transmission disequilibrium test , genetics , single nucleotide polymorphism , linkage (software) , microsatellite , genotyping , genetic association , biology , genome wide association study , tag snp , snp genotyping , snp , genetic linkage , computational biology , allele , genotype , gene
Both linkage and association studies have been successfully applied to identify disease susceptibility genes with genetic markers such as microsatellites and Single Nucleotide Polymorphisms (SNPs). As one of the traditional family-based studies, the Transmission/Disequilibrium Test (TDT) measures the over-transmission of an allele in a trio from its heterozygous parents to the affected offspring and can be potentially useful to identify genetic determinants for complex disorders. However, there is reduced information when complete trio information is unavailable. In this study, we developed a novel approach to “infer” the transmission of SNPs by combining both the linkage and association data, which uses microsatellite markers from families informative for linkage together with SNP markers from the offspring who are genotyped for both linkage and a Genome-Wide Association Study (GWAS). We generalized the traditional TDT to process these inferred dosage probabilities, which we name as the dosage-TDT (dTDT). For evaluation purpose, we developed a simulation procedure to assess its operating characteristics. We applied the dTDT to the simulated data and documented the power of the dTDT under a number of different realistic scenarios. Finally, we applied our methods to a family study of alcohol dependence (COGA) and performed individual genotyping on complete families for the top signals. One SNP (rs4903712 on chromosome 14) remained significant after correcting for multiple testing Methods developed in this study can be adapted to other platforms and will have widespread applicability in genomic research when case-control GWAS data are collected in families with existing linkage data.

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