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A Novel Statistic for Global Association Testing Based on Penalized Regression

机译:基于惩罚回归的全球关联测试新统计

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摘要

Natural genetic structures like genes may contain multiple variants that work as a group to determine a biologic outcome. The effect of rare variants, mutations occurring in less than 5% of samples, is hypothesized to be explained best as groups collectively associated with a biologic function. Therefore, it is important to develop powerful association tests to identify a true association between an outcome of interest and a group of variants, in particular a group with many rare variants. In this article we first delineate a novel penalized regression-based global test for the association between sets of variants and a disease phenotype. Next, we use Genetic Analysis Workshop 18 (GAW18) data to assess the power of the new global association test to capture a relationship between an aggregated group of variants and a simulated hypertension status. Rare variant only, common variant only, and combined variant groups are studied. The power values are compared to those obtained from eight well-regarded global tests (Score, Sum, SSU, SSUw, UminP, aSPU, aSPUw, and sequence kernel association test (SKAT)) that do not use penalized regression and a set of tests using either the SSU or score statistics and least absolute shrinkage and selection operator penalty (LASSO) logistic regression. Association testing of rare variants with our method was the top performer when there was low linkage disequilibrium (LD) between and within causal variants. This was similarly true when simultaneously testing rare and common variants in low LD scenarios. Finally, our method was able to provide meaningful variant-specific association information.
机译:诸如基因之类的自然遗传结构可能包含多个变异体,这些变异体可以共同确定生物学结果。假设稀有变体(少于5%的样品中发生突变)的影响被最好地解释为与生物学功能共同相关的群体。因此,重要的是要开发强大的关联测试,以识别感兴趣的结果和一组变体之间的真实关联,尤其是一组具有许多罕见变体的组之间。在本文中,我们首先描述了一种新的基于惩罚回归的全局检验,用于检验变体集与疾病表型之间的关联。接下来,我们使用遗传分析研讨会18(GAW18)的数据来评估新的全局关联测试的功能,以捕获一组汇总的变体与模拟高血压状态之间的关系。仅研究稀有变体,仅常见变体和组合变体组。将功效值与从八项备受赞誉的全局测试(得分,总和,SSU,SSUw,UminP,aSPU,aSPUw和序列内核关联测试(SKAT))获得的功率值进行比较,这些测试不使用惩罚回归和一组测试使用SSU或得分统计信息,以及最小绝对收缩和选择算子罚分(LASSO)Logistic回归。当因果变体之间和内部的连锁不平衡(LD)较低时,用我们的方法进行的罕见变体的关联测试表现最佳。在低LD场景中同时测试稀有和常见变体时,情况也是如此。最终,我们的方法能够提供有意义的特定于变体的关联信息。

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