Computing Empirical P-Values for Estimating Gene-Gene Interactions in Genome-Wide Association Studies: A Parallel Computing Approach

Valentina Giansanti, D. D'Agostino, C. Maj, S. Beretta, I. Merelli
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Abstract

In complex phenotypes (e.g., psychiatric diseases) single locus tests, commonly performed with genome-wide association studies, have proven to be limited in discovering strong gene associations. A growing body of evidence suggests that epistatic non-linear effects may be responsible for complex phenotypes arising from the interaction of different biological factors. A major issue in epistasis analysis is the computational burden due to the huge number of statistical tests to be performed when considering all the potential genotype combinations. In this work, we developed a computational efficient approach to compute empirical p-values concerning the presence of epistasis at a genome-wide scale in bipolar disorder, which is a typical example of complex phenotype with a relevant but unexplained genetic background. By running our approach we were able to identify 13 epistasis interactions between variants located in genes potentially involved in biological processes associated with the analyzed phenotype.
计算经验p值估计基因-基因相互作用在全基因组关联研究:并行计算方法
在复杂表型(例如,精神疾病)中,单位点测试通常与全基因组关联研究一起进行,已被证明在发现强烈的基因关联方面是有限的。越来越多的证据表明,上位非线性效应可能是由不同生物因素相互作用产生的复杂表型的原因。上位性分析的一个主要问题是计算负担,因为在考虑所有潜在的基因型组合时要进行大量的统计检验。在这项工作中,我们开发了一种计算高效的方法来计算双相情感障碍全基因组范围内上位性存在的经验p值,双相情感障碍是具有相关但无法解释的遗传背景的复杂表型的典型例子。通过运行我们的方法,我们能够确定13个上位相互作用,这些变异位于可能参与与分析表型相关的生物过程的基因中。
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