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Old lessons learned anew: family-based methods for detecting genes responsible for quantitative and qualitative traits in the Genetic Analysis Workshop 17 mini-exome sequence data

机译:重新吸取的旧经验教训:遗传分析研讨会中基于家庭的方法来检测负责定量和定性性状的基因17微型外显子序列数据

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Family-based study designs are again becoming popular as new next-generation sequencing technologies make whole-exome and whole-genome sequencing projects economically and temporally feasible. Here we evaluate the statistical properties of linkage analyses and family-based tests of association for the Genetic Analysis Workshop 17 mini-exome sequence data. Based on our results, the linkage methods using relative pairs or nuclear families had low power, with the best results coming from variance components linkage analysis in nuclear families and Elston-Stewart model-based linkage analysis in extended pedigrees. For family-based tests of association, both ASSOC and ROMP performed well for genes with large effects, but ROMP had the advantage of not requiring parental genotypes in the analysis. For the linkage analyses we conclude that genome-wide significance levels appear to control type I error well but that “suggestive” significance levels do not. Methods that make use of the extended pedigrees are well powered to detect major loci segregating in the families even when there is substantial genetic heterogeneity and the trait is mainly polygenic. However, large numbers of such pedigrees will be necessary to detect all major loci. The family-based tests of association found the same major loci as the linkage analyses and detected low-frequency loci with moderate effect sizes, but control of type I error was not as stringent.
机译:随着新的下一代测序技术使全外显子组和全基因组测序项目在经济和时间上可行,基于家庭的研究设计再次受到欢迎。在这里,我们评估了遗传分析研讨会17小型外显子组序列数据的连锁分析和基于家庭的关联测试的统计属性。根据我们的结果,使用相对对或核族的连锁方法的功效较低,最好的结果来自核族的方差成分连锁分析和扩展谱系中基于Elston-Stewart模型的连锁分析。对于基于家庭的关联测试,ASSOC和ROMP在具有较大影响的基因上均表现良好,但ROMP的优点是在分析中不需要亲本基因型。对于连锁分析,我们得出的结论是,全基因组重要性水平似乎可以很好地控制I型错误,但“建议性”重要性水平却不能。即使存在明显的遗传异质性且该性状主要是多基因的,利用扩展谱系的方法也能很好地检测家庭中的主要基因座分离。但是,要检测所有主要基因座,将需要大量此类谱系。基于家庭的联想测试发现与连锁分析相同的主要基因座,并检测到了具有中等效应大小的低频基因座,但对I型错误的控制并不那么严格。

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