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Gene analysis for longitudinal family data using random-effects models.


ABSTRACT: We have extended our recently developed 2-step approach for gene-based analysis to the family design and to the analysis of rare variants. The goal of this approach is to study the joint effect of multiple single-nucleotide polymorphisms that belong to a gene. First, the information in a gene is summarized by 2 variables, namely the empirical Bayes estimate capturing common variation and the number of rare variants. By using random effects for the common variants, our approach acknowledges the within-gene correlations. In the second step, the 2 summaries were included as covariates in linear mixed models. To test the null hypothesis of no association, a multivariate Wald test was applied. We analyzed the simulated data sets to assess the performance of the method. Then we applied the method to the real data set and identified a significant association between FRMD4B and diastolic blood pressure (p-value = 8.3 × 10(-12)).

SUBMITTER: Houwing-Duistermaat JJ 

PROVIDER: S-EPMC4143685 | biostudies-literature | 2014

REPOSITORIES: biostudies-literature

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Gene analysis for longitudinal family data using random-effects models.

Houwing-Duistermaat Jeanine J JJ   Helmer Quinta Q   Balliu Bruna B   van den Akker Erik E   Tsonaka Roula R   Uh Hae-Won HW  

BMC proceedings 20140617 Suppl 1 Genetic Analysis Workshop 18Vanessa Olmo


We have extended our recently developed 2-step approach for gene-based analysis to the family design and to the analysis of rare variants. The goal of this approach is to study the joint effect of multiple single-nucleotide polymorphisms that belong to a gene. First, the information in a gene is summarized by 2 variables, namely the empirical Bayes estimate capturing common variation and the number of rare variants. By using random effects for the common variants, our approach acknowledges the w  ...[more]

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