Linkage analysis methods that incorporate etiological heterogeneity of complex diseases are likely to demonstrate greater power than traditional linkage analysis methods. Several such methods use covariates to discriminate between linked and unlinked pedigrees with respect to a certain disease locus. Here we apply several such methods including two mixture models, ordered subset analysis, and a conditional logistic model to genome scan data on the DSM-IV alcohol dependence phenotype on the Collaborative Studies on Genetics of Alcoholism families, and compare the results to traditional nonparametric linkage analysis. In general, there was little agreement among the various covariate-based linkage statistics. Linkage signals with empirical p-values less than 0.001 were detected on chromosomes 3,4,7, 10, and 12, with the highest peak occurring at the GABRBI gene using the ecb21 covariate.
CITATION STYLE
Reck, B. H., Mukhopadhyay, N., Tsai, H. J., & Weeks, D. E. (2005). Analysis of alcohol dependence phenotype in the COGA families using covariates to detect linkage. BMC Genetics, 6(SUPPL.1). https://doi.org/10.1186/1471-2156-6-S1-S143
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