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A statistical framework to guide sequencing choices in pedigrees

机译:指导谱系中测序选择的统计框架

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The use of large pedigrees is an effective design for identifying rare functional variants affecting heritable traits. Cost-effective studies using sequence data can be achieved via pedigree-based genotype imputation in which some subjects are sequenced and missing genotypes are inferred on the remaining subjects. Because of high cost, it is important to carefully prioritize subjects for sequencing. Here, we introduce a statistical framework that enables systematic comparison among subject-selection choices for sequencing. We introduce a metric "local coverage," which allows the use of inferred inheritance vectors to measure genotype-imputation ability specifically in a region of interest, such as one with prior evidence of linkage. In the absence of linkage information, we can instead use a "genome-wide coverage" metric computed with the pedigree structure. These metrics enable the development of a method that identifies efficient selection choices for sequencing. As implemented in GIGI-Pick, this method also flexibly allows initial manual selection of subjects and optimizes selections within the constraint that only some subjects might be available for sequencing. In the present study, we used simulations to compare GIGI-Pick with PRIMUS, ExomePicks, and common ad hoc methods of selecting subjects. In genotype imputation of both common and rare alleles, GIGI-Pick substantially outperformed all other methods considered and had the added advantage of incorporating prior linkage information. We also used a real pedigree to demonstrate the utility of our approach in identifying causal mutations. Our work enables prioritization of subjects for sequencing to facilitate dissection of the genetic basis of heritable traits.
机译:大谱系的使用是一种有效的设计,可用于识别影响遗传性状的罕见功能变异。通过基于谱系的基因型估算可以实现使用序列数据进行的具有成本效益的研究,在该基因型估算中,对一些受试者进行了测序,并在其余受试者上推断出缺失的基因型。由于成本高昂,因此必须仔细确定受试者的测序优先顺序,这一点很重要。在这里,我们介绍了一种统计框架,该框架可对主题选择序列之间的系统比较。我们引入了度量“局部覆盖”,它允许使用推断的继承载体来特定地在感兴趣的区域(例如具有先验链接的证据)中测量基因型输入能力。在没有链接信息的情况下,我们可以改为使用通过谱系结构计算的“全基因组覆盖”度量。这些指标使能够开发一种方法,该方法可以识别用于测序的有效选择。正如在GIGI-Pick中实现的那样,该方法还可以灵活地允许初始手动选择主题,并在仅某些主题可用于测序的约束内优化选择。在本研究中,我们使用模拟将GIGI-Pick与PRIMUS,ExomePicks和常见的选择对象的特殊方法进行了比较。在普通和稀有等位基因的基因型估算中,GIGI-Pick的性能大大超过了所有其他已考虑的方法,并且具有合并先前连锁信息的附加优势。我们还使用真实的血统书来证明我们的方法在确定因果突变中的效用。我们的工作可以对受试者进行优先排序,以方便剖析可遗传性状的遗传基础。

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