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Detecting functional rare variants by collapsing and incorporating functional annotation in Genetic Analysis Workshop 17 mini-exome data

机译:通过折叠并将功能注释合并到遗传分析研讨会17小型外显子数据中来检测功能稀有变异

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摘要

Association studies using tag SNPs have been successful in detecting disease-associated common variants. However, common variants, with rare exceptions, explain only at most 5–10% of the heritability resulting from genetic factors, which leads to the common disease/rare variants assumption. Indeed, recent studies using sequencing technologies have demonstrated that common diseases can be due to rare variants that could not be systematically studied earlier. Unfortunately, methods for common variants are not optimal if applied to rare variants. To identify rare variants that affect disease risk, several investigators have designed new approaches based on the idea of collapsing different rare variants inside the same genomic block (e.g., the same gene or pathway) to enrich the signal. Here, we consider three different collapsing methods in the multimarker regression model and compared their performance on the Genetic Analysis Workshop 17 data using the consistency of results across different simulations and the cross-validation prediction error rate. The comparison shows that the proportion collapsing method seems to outperform the other two methods and can find both truly associated rare and common variants. Moreover, we explore one way of incorporating the functional annotations for the variants in the data that collapses nonsynonymous and synonymous variants separately to allow for different penalties on them. The incorporation of functional annotations led to higher sensitivity and specificity levels when the detection results were compared with the answer sheet. The initial analysis was performed without knowledge of the simulating model.
机译:使用标签SNP的关联研究已成功检测出与疾病相关的常见变异。但是,除了极少数例外,常见变体最多只能解释遗传因素导致的遗传力的5-10%,这导致了常见疾病/罕见变体的假设。的确,最近使用测序技术的研究表明,常见疾病可能是由于罕见的变体导致的,无法早期进行系统的研究。不幸的是,如果将常见变体的方法应用于稀有变体,则不是最佳方法。为了识别影响疾病风险的稀有变异体,一些研究人员基于将不同的稀有变异体折叠在同一基因组区块(例如相同的基因或途径)中以丰富信号的想法,设计了新的方法。在这里,我们考虑了多标记回归模型中的三种不同的崩溃方法,并使用了不同模拟结果的一致性和交叉验证预测的错误率,在遗传分析工作室17数据上比较了它们的性能。比较表明,比例崩溃方法似乎优于其他两种方法,并且可以找到真正相关的稀有和常见变体。此外,我们探索了一种在数据中合并变体的功能注释的方法,该方法可分别折叠非同义和同义变体,以允许对其施加不同的惩罚。当将检测结果与答题纸进行比较时,功能注释的并入导致更高的灵敏度和特异性。最初的分析是在不了解模拟模型的情况下进行的。

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