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Pseudosibship methods in the case-parents design

机译:案例父母设计中的假同胞关系方法

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Recent evidence suggests that complex traits are likely determined by multiple loci, each of which contributes a weak to moderate individual effect. Although extensive literature exists on multilocus analysis of unrelated subjects, there are relatively fewer strategies for jointly analyzing multiple loci using family data. Here we address this issue by evaluating two pseudosibship methods: the 1:1 matching, which matches each affected offspring to the pseudosibling formed by the alleles not transmitted to the affected offspring, and the exhaustive matching, which matches each affected offspring to the pseudosiblings formed by all the other possible combinations of parental alleles. We prove that the two matching strategies use exactly and approximately the same amount of information from data under additive and multiplicative genetic models, respectively. Using numerical calculations under a variety of models and testing assumptions, we show that compared with the exhaustive matching, the 1:1 matching has comparable asymptotic power in detecting multiplicative/additive effects in single-locus analysis and main effects in multilocus analysis, and it allows association testing of multiple linked loci. These results pave the way for many existing multilocus analysis methods developed for the case-control (or matched case-control) design to be applied to case-parents data with minor modifications. As an example, with the 1:1 matching, we applied an L 1 regularized regression to a Crohn's disease dataset. Using the multiple loci selected in our approach, we obtained an order-of-magnitude decrease in p-value and an 18.9% increase in prediction accuracy when compared with using the most significant individual locus.
机译:最近的证据表明,复杂的性状可能是由多个基因座决定的,每个基因座的作用都弱到中等。尽管已有大量文献对不相关主题进行多位点分析,但使用家庭数据共同分析多个基因座的策略相对较少。在这里,我们通过评估两种假同胞方法来解决这个问题:1:1匹配,将每个受影响的后代与未传播给受影响后代的等位基因形成的假同胞相匹配;以及穷举匹配,将每个受影响的后代与所形成的假同胞相匹配亲本等位基因的所有其他可能组合。我们证明了两种匹配策略分别使用了相加和乘法遗传模型下的数据,它们使用的信息量大致相同。通过在各种模型和测试假设下的数值计算,我们表明,与穷举匹配相比,1:1匹配在单位置分析中检测乘性/加性效应和多位置分析中的主要效应方面具有可比的渐近能力,并且允许对多个链接基因座进行关联测试。这些结果为为案例控制(或匹配的案例控制)设计开发的许多现有的多基因座分析方法铺平了道路,这些方法可应用于经过细微修改的案例父母数据。例如,通过1:1匹配,我们对克罗恩氏病数据集应用了L 1正则化回归。与使用最重要的单个基因座相比,使用在我们的方法中选择的多个基因座,我们获得了p值一个数量级的降低,并且预测准确性提高了18.9%。

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