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Bayesian variable selection using partially observed categorical prior information in fine‐mapping association studies

机译:贝叶斯变量选择使用部分观察到的细映射协会研究中的分类事先信息

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摘要

Abstract Several methods have been proposed to allow functional genomic information to inform prior distributions in Bayesian fine‐mapping case–control association studies. None of these methods allow the inclusion of partially observed functional genomic information. We use functional significance (FS) scores that combine information across multiple bioinformatics sources to inform our effect size prior distributions. These scores are not available for all single‐nucleotide polymorphisms (SNPs) but by partitioning SNPs into naturally occurring FS score groups, we show how missing FS scores can easily be accommodated via finite mixtures of elicited priors. Most current approaches adopt a formal Bayesian variable selection approach and either limit the number of causal SNPs allowed or use approximations to avoid the need to explore the vast parameter space. We focus instead on achieving differential shrinkage of the effect sizes through prior scale mixtures of normals and use marginal posterior probability intervals to select candidate causal SNPs. We show via a simulation study how this approach can improve localisation of the causal SNPs compared to existing mutli‐SNP fine‐mapping methods. We also apply our approach to fine‐mapping a region around the CASP8 gene using the iCOGS consortium breast cancer SNP data.
机译:摘要已经提出了几种方法来允许功能基因组信息介绍贝叶斯精细绘图案例控制协会研究的现有分布。这些方法中没有一个允许包含部分观察到的功能基因组信息。我们使用功能意义(FS)分数,将信息与多种生物信息学源的源相结合,以通知我们的效果大小以前的分布。这些评分不适用于所有单核苷酸多态性(SNP),而是通过将SNP分配到天然存在的FS分数组中,我们展示了如何通过引发的前沿的有限混合物容易地容易地容纳FS分数。大多数电流方法采用正式的贝叶斯变量选择方法,并限制允许的因果SNP的数量或使用近似以避免探索庞大的参数空间。我们专注于通过现有规模的法线混合物实现效果大小的差异收缩,并使用边缘后概率间隔来选择候选因果SNP。我们通过模拟研究表明这种方法如何改善与现有的Mutli-SNP精细映射方法相比如何改善因果SNP的定位。我们还使用ICOGS联盟联盟乳腺癌SNP数据来应用我们的方法来对Casp8基因周围的一个区域进行微观映射。

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