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Inferring disease risk genes from sequencing data in multiplex pedigrees through sharing of rare variants

机译:推断疾病风险基因通过分享罕见的变种来从多路复用队列中测序数据

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We previously demonstrated how sharing of rare variants (RVs) in distant affected relatives can be used to identify variants causing a complex and heterogeneous disease. This approach tested whether single RVs were shared by all sequenced affected family members. However, as with other study designs, joint analysis of several RVs (e.g., within genes) is sometimes required to obtain sufficient statistical power. Further, phenocopies can lead to false negatives for some causal RVs if complete sharing among affected is required. Here, we extend our methodology (Rare Variant Sharing, RVS) to address these issues. Specifically, we introduce gene-based analyses, a partial sharing test based on RV sharing probabilities for subsets of affected relatives and a haplotype-based RV definition. RVS also has the desirable feature of not requiring external estimates of variant frequency or control samples, provides functionality to assess and address violations of key assumptions, and is available as open source software for genome-wide analysis. Simulations including phenocopies, based on the families of an oral cleft study, revealed the partial and complete sharing versions of RVS achieved similar statistical power compared with alternative methods (RareIBD and the Gene-Based Segregation Test), and had superior power compared with the pedigree Variant Annotation, Analysis, and Search Tool (pVAAST) linkage statistic. In studies of multiplex cleft families, analysis of rare single nucleotide variants in the exome of 151 affected relatives from 54 families revealed no significant excess sharing in any one gene, but highlighted different patterns of sharing revealed by the complete and partial sharing tests.
机译:我们之前证明了如何使用远处受影响的亲属的罕见变体(RVS)来鉴定导致复杂和异质疾病的变体。这种方法测试了所有测序是否共享单个RV的受影响的家庭成员。然而,与其他研究设计一样,有时需要对几个RVS(例如,基因内)的联合分析以获得足够的统计功率。此外,如果需要在受影响的完全共享,苯上可以导致某些因果RV的假否定。在这里,我们扩展了我们的方法(罕见的变体共享,RV)来解决这些问题。具体而言,我们引入基于基于基于基于基于基于RV共享概率的基于基于基于基于基于基于的分析以及基于单倍型的RV定义。 RV还具有所需的特性,不需要变体频率或控制样本的外部估计,提供了评估和解决违反关键假设的功能,并且可作为用于基因组范围的开源软件。基于口腔裂缝研究的家庭的仿真包括斑点,揭示了RV的部分和完整共享版本与替代方法(稀土和基于基因的分离试验)相比达到了类似的统计功率,并且与血统相比具有卓越的功率变体注释,分析和搜索工具(PVAAST)联动统计。在多重裂隙家庭的研究中,来自54个家族的151个受影响的亲属的稀有单核苷酸变体的分析显示,任何一个基因都没有显着过量分享,但突出了完整和部分共享测试所揭示的不同共享模式。

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