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首页> 外文期刊>Genetic epidemiology. >A Note on the Efficiencies of Sampling Strategies in Two-Stage Bayesian Regional Fine Mapping of a Quantitative Trait
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A Note on the Efficiencies of Sampling Strategies in Two-Stage Bayesian Regional Fine Mapping of a Quantitative Trait

机译:关于定量特征的两阶段贝叶斯区域精细测绘中抽样策略效率的注记

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摘要

In focused studies designed to follow up associations detected in a genome-wide association study (GWAS), investigators can proceed to fine-map a genomic region by targeted sequencing or dense genotyping of all variants in the region, aiming to identify a functional sequence variant. For the analysis of a quantitative trait, we consider a Bayesian approach to fine-mapping study design that incorporates stratification according to a promising GWAS tag SNP in the same region. Improved cost-efficiency can be achieved when the fine-mapping phase incorporates a two-stage design, with identification of a smaller set of more promising variants in a subsample taken in stage 1, followed by their evaluation in an independent stage 2 subsample. To avoid the potential negative impact of genetic model misspecification on inference we incorporate genetic model selection based on posterior probabilities for each competing model. Our simulation study shows that, compared to simple random sampling that ignores genetic information from GWAS, tag-SNP-based stratified sample allocation methods reduce the number of variants continuing to stage 2 and are more likely to promote the functional sequence variant into confirmation studies.
机译:在旨在跟踪在全基因组关联研究(GWAS)中检测到的关联的重点研究中,研究人员可以通过对该区域中所有变体的定向测序或密集型基因分型来继续精细定位基因组区域,以鉴定功能性序列变体。对于定量特征的分析,我们考虑了贝叶斯精细映射研究设计方法,该方法根据同一地区有希望的GWAS标签SNP纳入了分层。当精细映射阶段采用两阶段设计时,可以在阶段1的子样本中识别出一组较小的更有希望的变体,然后在独立的阶段2子样本中进行评估,从而可以提高成本效率。为了避免遗传模型错误指定对推理的潜在负面影响,我们将基于每种竞争模型的后验概率的遗传模型选择纳入其中。我们的模拟研究表明,与忽略GWAS遗传信息的简单随机抽样相比,基于标签SNP的分层样本分配方法减少了进入第2阶段的变体数量,并且更有可能将功能序列变体引入确认研究。

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