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Enriching the analysis of genomewide association studies with hierarchical modeling

机译:通过分层建模丰富了全基因组关联研究的分析

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Genomewide association Studies (GWAs) initially investigate hundreds of thousands of single-nucleotide polymorphisms (SNPs), and the most promising SNPs are further evaluated with additional subjects, for replication or a joint analysis. Deciding which SNPs merit follow-up is one of the most crucial aspects of these studies. We present here an approach for selecting the most-promising SNPs that incorporates into a hierarchical model both conventional results and other existing information about the SNPs. The model is developed for general use, its potential value is shown by application, and toots are provided for undertaking hierarchical modeling. By quantitatively harnessing all available information in GWAs, hierarchical modeling may more clearly distinguish true causal variants from noise.
机译:全基因组关联研究(GWA)最初调查了成千上万的单核苷酸多态性(SNP),最有希望的SNP与其他受试者进行了进一步评估,以进行复制或联合分析。确定哪些SNP值得随访是这些研究最关键的方面之一。我们在这里提出了一种选择最有前途的SNP的方法,该方法将常规结果和有关SNP的其他现有信息都纳入了层次模型中。该模型是为一般用途而开发的,其潜在价值由应用程序显示,并且提供了嘟嘟声以进行分层建模。通过定量利用GWA中的所有可用信息,分层建模可以更清楚地将真实的因果变量与噪声区分开。

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