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Application of Bayesian network structure learning to identify causal variant SNPs from resequencing data

机译:贝叶斯网络结构学习在重新排序数据中识别因果变异SNP的应用

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Using single-nucleotide polymorphism (SNP) genotypes from the 1000 Genomes Project pilot3 data provided for Genetic Analysis Workshop 17 (GAW17), we applied Bayesian network structure learning (BNSL) to identify potential causal SNPs associated with the Affected phenotype. We focus on the setting in which target genes that harbor causal variants have already been chosen for resequencing; the goal was to detect true causal SNPs from among the measured variants in these genes. Examining all available SNPs in the known causal genes, BNSL produced a Bayesian network from which subsets of SNPs connected to the Affected outcome were identified and measured for statistical significance using the hypergeometric distribution. The exploratory phase of analysis for pooled replicates sometimes identified a set of involved SNPs that contained more true causal SNPs than expected by chance in the Asian population. Analyses of single replicates gave inconsistent results. No nominally significant results were found in analyses of African or European populations. Overall, the method was not able to identify sets of involved SNPs that included a higher proportion of true causal SNPs than expected by chance alone. We conclude that this method, as currently applied, is not effective for identifying causal SNPs that follow the simulation model for the GAW17 data set, which includes many rare causal SNPs .
机译:使用遗传分析研讨会17(GAW17)提供的1000个基因组计划pilot3数据中的单核苷酸多态性(SNP)基因型,我们应用贝叶斯网络结构学习(BNSL)来确定与受影响表型相关的潜在因果SNP。我们专注于已经选择了具有因果变异的靶基因进行重测序的设置。目的是从这些基因的变异中检测出真正的因果SNP。检查了已知因果基因中所有可用的SNP,BNSL产生了一个贝叶斯网络,从该网络中识别出与受影响结果相关的SNP子集,并使用超几何分布对其进行统计显着性测量。对合并重复样本进行分析的探索阶段有时会确定一组涉及的SNP,其中包含的真实因果SNP数量要比亚洲人群偶然预期的多。单个重复样品的分析结果不一致。在对非洲或欧洲人口的分析中未发现名义上显着的结果。总体而言,该方法无法识别涉及的SNP组,其真实因果SNP的比例要比仅凭偶然预期的比例高。我们得出的结论是,该方法(目前应用)对于识别遵循GAW17数据集(包括许多罕见的因果SNP)模拟模型的因果SNP无效。

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