A family-based association test to detect gene–gene interactions in the presence of linkage

被引:0
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作者
Lizzy De Lobel
Lutgarde Thijs
Tatiana Kouznetsova
Jan A Staessen
Kristel Van Steen
机构
[1] Ghent University,Department of Applied Mathematics and Computer Science
[2] KU Leuven,Division of Hypertension and Cardiovascular Rehabilitation, Department of Cardiovascular Diseases
[3] Maastricht University,Department of Epidemiology
[4] Systems and Modeling Unit,Department of Electrical Engineering and Computer Science
[5] Montefiore Institute,undefined
[6] University of Liège,undefined
[7] Bioinformatics and Modeling,undefined
[8] GIGA-R,undefined
[9] University of Liège,undefined
来源
关键词
QTDT; epistasis; association; linkage;
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学科分类号
摘要
For many complex diseases, quantitative traits contain more information than dichotomous traits. One of the approaches used to analyse these traits in family-based association studies is the quantitative transmission disequilibrium test (QTDT). The QTDT is a regression-based approach that models simultaneously linkage and association. It splits up the association effect in a between- and a within-family genetic component to adjust and test for population stratification and includes a variance components method to model linkage. We extend this approach to detect gene–gene interactions between two unlinked QTLs by adjusting the definition of the between- and within-family component and the variance components included in the model. We simulate data to investigate the influence of the epistasis model, linkage disequilibrium patterns between the markers and the QTLs, and allele frequencies on the power and type I error rates of the approach. Results show that for some of the investigated settings, power gains are obtained in comparison with FAM-MDR. We conclude that our approach shows promising results for candidate-gene studies where too few markers are available to correct for population stratification using standard methods (for example EIGENSTRAT). The proposed method is applied to real-life data on hypertension from the FLEMENGHO study.
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页码:973 / 980
页数:7
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