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首页> 外文期刊>BMC Genomics >Functional annotation signatures of disease susceptibility loci improve SNP association analysis
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Functional annotation signatures of disease susceptibility loci improve SNP association analysis

机译:疾病易感基因座的功能注释特征改善SNP关联分析

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Background Genetic association studies are conducted to discover genetic loci that contribute to an inherited trait, identify the variants behind these associations and ascertain their functional role in determining the phenotype. To date, functional annotations of the genetic variants have rarely played more than an indirect role in assessing evidence for association. Here, we demonstrate how these data can be systematically integrated into an association study’s analysis plan. Results We developed a Bayesian statistical model for the prior probability of phenotype–genotype association that incorporates data from past association studies and publicly available functional annotation data regarding the susceptibility variants under study. The model takes the form of a binary regression of association status on a set of annotation variables whose coefficients were estimated through an analysis of associated SNPs in the GWAS Catalog (GC). The functional predictors examined included measures that have been demonstrated to correlate with the association status of SNPs in the GC and some whose utility in this regard is speculative: summaries of the UCSC Human Genome Browser ENCODE super–track data, dbSNP function class, sequence conservation summaries, proximity to genomic variants in the Database of Genomic Variants and known regulatory elements in the Open Regulatory Annotation database, PolyPhen–2 probabilities and RegulomeDB categories. Because we expected that only a fraction of the annotations would contribute to predicting association, we employed a penalized likelihood method to reduce the impact of non–informative predictors and evaluated the model’s ability to predict GC SNPs not used to construct the model. We show that the functional data alone are predictive of a SNP’s presence in the GC. Further, using data from a genome–wide study of ovarian cancer, we demonstrate that their use as prior data when testing for association is practical at the genome–wide scale and improves power to detect associations. Conclusions We show how diverse functional annotations can be efficiently combined to create ‘functional signatures’ that predict the a priori odds of a variant’s association to a trait and how these signatures can be integrated into a standard genome–wide–scale association analysis, resulting in improved power to detect truly associated variants.
机译:进行背景遗传关联研究以发现有助于遗传特征的遗传基因座,鉴定这些关联背后的变体,并确定其在决定表型中的功能。迄今为止,遗传变异的功能注释很少在评估关联证据方面起间接作用。在这里,我们演示了如何将这些数据系统地集成到关联研究的分析计划中。结果我们针对表型-基因型关联的先验概率开发了贝叶斯统计模型,该模型将过去关联研究的数据以及有关研究中的易感性变异的公开可用功能注释数据纳入其中。该模型采用一组注释变量的关联状态的二进制回归的形式,这些注释变量的系数是通过对GWAS目录(GC)中相关SNP的分析来估计的。检验的功能预测因子包括已证明与GC中SNP的关联状态相关的措施,以及一些在此方面具有推测作用的措施:UCSC人类基因组浏览器ENCODE的摘要超级跟踪数据,dbSNP功能类别,序列保守性摘要,接近基因组变体数据库中的基因组变体以及开放式法规注释数据库,PolyPhen–2概率和RegulomeDB类别中的已知法规元素。因为我们期望注释中只有一小部分会有助于预测关联,所以我们采用了一种惩罚似然法来减少非信息性预测因子的影响,并评估了该模型预测未用于构建模型的GC SNP的能力。我们证明,仅功能数据即可预测SNP在GC中的存在。此外,使用来自全基因组卵巢癌研究的数据,我们证明了在进行关联测试时将其用作先前数据在整个基因组范围内都是可行的,并提高了检测关联的能力。结论我们展示了如何有效地组合各种功能注释以创建“功能签名”,以预测变体与性状关联的先验几率,以及如何将这些签名整合到标准的基因组范围的关联分析中,从而提高了检测真正相关变体的能力。

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